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Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets

Published online by Cambridge University Press:  22 November 2024

Lucas Rodriguez Forti
Affiliation:
Departamento de Biociências, Universidade Federal Rural do Semi-Árido, Av. Francisco Mota, 572 – Bairro Costa e Silva, 59625-900, Mossoró Rio Grande do Norte, Brazil Programa de Pós-Graduação em Ecologia: Teoria, Aplicações e Valores, Instituto de Biologia, Universidade Federal da Bahia, Rua Barão de Jeremoabo, 668 – Campus de Ondina CEP: 40170-115 Salvador Bahia, Brazil
Ana Marta P. R. da Silva Passetti
Affiliation:
Programa de Pós-Graduação em Ecologia: Teoria, Aplicações e Valores, Instituto de Biologia, Universidade Federal da Bahia, Rua Barão de Jeremoabo, 668 – Campus de Ondina CEP: 40170-115 Salvador Bahia, Brazil
Talita Oliveira
Affiliation:
Undergraduate program in Ecology, Universidade Federal Rural do Semi-Árido, Av. Francisco Mota, 572 – Bairro Costa e Silva, 59625-900, Mossoró Rio Grande do Norte, Brazil
Juan Lima
Affiliation:
Programa de Pós-Graduação em Ecologia e Conservação, Universidade Federal Rural do Semi-Árido, Av. Francisco Mota, 572 – Bairro Costa e Silva, 59625-900, Mossoró Rio Grande do Norte, Brazil
Arthur Queiros
Affiliation:
Undergraduate program in Ecology, Universidade Federal Rural do Semi-Árido, Av. Francisco Mota, 572 – Bairro Costa e Silva, 59625-900, Mossoró Rio Grande do Norte, Brazil
Maria Alice Dantas Ferreira Lopes
Affiliation:
Undergraduate program in Veterinary Medicine, Universidade Federal Rural do Semi-Árido, Av. Francisco Mota, 572 – Bairro Costa e Silva, 59625-900, Mossoró Rio Grande do Norte, Brazil
Judit K. Szabo*
Affiliation:
Research Institute for the Environment and Livelihoods, Charles Darwin University, Casuarina, Northern Territory 0909, Australia
*
Corresponding author: Judit K. Szabo; Email: [email protected]
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Abstract

The Atlantic Forest is one of the most threatened biomes globally. Data from monitoring programs are necessary to evaluate the conservation status of species, prioritise conservation actions and to evaluate the effectiveness of these actions. Birds are particularly well represented in citizen-collected datasets that are used worldwide in ecological and conservation studies. Here, we analyse presence-only data from three online citizen science datasets of Atlantic Forest endemic bird species to evaluate whether the representation of these species was correlated with their global threat status, range and estimated abundance. We conclude that even though species are over- and under-represented with regard to their presumed abundance, data collected by citizen scientists can be used to infer species distribution and, to a lesser degree, species abundance. This pattern holds true for species across global threat status.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press

Impact statement

Given the high rates of biodiversity loss globally, knowledge gaps need to be filled urgently in order to inform and prioritise conservation actions. Research and conservation are particularly important in tropical and megadiverse biomes, such as the Atlantic Forest. Given the lack of resources available for scientific research, professional scientists are struggling to conduct studies in these fragile biomes, particularly on long-term and at large scales. However, in the past two decades, nonprofessional scientists have been participating in the research process. Furthermore, data collected by these actors have been used in large-scale studies. Therefore, citizen science is becoming an important player in biodiversity knowledge production. Nevertheless, spatial, temporal and other biases resulting from unstructured sampling need to be understood and accounted for in order to make the collected data useful for decision-making. In this study, we evaluate how the estimated abundance, global threat status and spatial distribution of species affect the number of observations citizen scientists collect. We use endemic Brazilian Atlantic Forest bird species occurrence data from three online citizen science platforms. We found that threatened species were less frequently observed by citizen scientists than non-threatened species. Species with larger distribution ranges had more observations than species with more restricted ranges in all global threat status categories. In conclusion, citizen science data can be used to predict species distribution ranges, reducing knowledge gaps for Brazilian Atlantic Forest birds. Therefore, considering data contributed by citizen science can shorten the path to conservation actions.

Introduction

Studies of the biodiversity of the Brazilian Atlantic Forest biome have resulted in important datasets of morphological traits and species abundance (Hasui et al., Reference Hasui, Metzger, Pimentel, Silveira, Bovo, Martensen, Uezu, Regolin, Bispo de Oliveira, Gatto, Duca, Andretti, Banks-Leite, Luz, Mariz, Alexandrino, de Barros, Martello, Pereira, da Silva, Ferraz, Naka, Dos Anjos, Efe, Pizo, Pichorim, Goncalves, Chaves Cordeiro, Dias, Muylaert, Rodrigues, da Costa, Cavarzere, Tonetti, Silva, Jenkins, Galetti and Ribeiro2018; Rodrigues et al., Reference Rodrigues, Hasui, Camara Assis, Castro Pena, Muylaert, Tonetti, Martello, Regolin, Vernaschi Vieira da Costa, Pichorim, Carrano, Lopes, Ferreira de Vasconcelos, Suertegaray Fontana, Langeloh Roos, Gonçalves, Banks-Leite, Cavarzere, Amorim Efe, Alves, Uezu, Metzger, de Tarso Zuquim de Antas, Paschoaletto Micchi de Barros Ferraz, Corsini Calsavara, Bispo, Araujo, Duca, Piratelli, Naka, Antunes Dias, Gatto, Villegas Vallejos, dos Reis Menezes, Bugoni, Rajão, Zocche, Willrich, Silveira da Silva, Tonelli Manica, Guaraldo, Althmann, Pereira Serafini, Francisco, Lugarini, Machado, Marques-Santos, Bobato, Arantes de Souza, Donatelli, Ferreira, Morante-Filho, Dantas Paes-Macarrão, Macarrão, Robalinho Lima, Jacoboski, Candia-Gallardo, Bejarano Alegre, Jahn, de Camargo Barbosa, Cestari, Nilton da Silva, Stefanini Da Silveira, Vara Crestani, Peterle Petronetto, Bovo, Durão Viana, Araujo, Hartuiq dos Santos, Araújo do Amaral, Ferreira, Vieira-Filho, Costa Ribeiro, Missagia, Bosenbecker, Bronzato Medolago, Rodriguez Espínola, Faxina, Campodonio Nunes, Prates, Tomasio Apolinario da Luz, Moreno, Mariz, Faria, Meyer, Doná, Alexandrino, Fischer, Girardi, Borba Giese, Santos Shibuya, Azevedo Faria, Bittencourt de Farias, de Lima Favaro, Ferneda Freitas, Chaves, Guedes Las-Casas, Rosa, Massaccesi De La Torre, Menezes Bochio, Bonetti, Kohler, Santos Toledo-Lima, Piletti Plucenio, Menezes, Denóbile Torres, Carvalho Provinciato, Réus Viana, Roper, Persegona, Barcik, Martins-Silva, Gava Just, Tavares-Damasceno, de Almeida Ferreira, Rodrigues Rosoni, Teixeira Falcon, Schaedler, Brioschi Mathias, Deconto, da Cruz Rodrigues, Afonso P. Meyer, Repenning, Melo, Santos de Carvalho, Rodrigues, Conti Nunes, Ogrzewalska, Lopes Gonçalves, Vecchi, Bettio, Noronha da Matta Baptista, Arantes, Ruiz, Bisetto de Andrade, Lima Ribeiro, Galetti Junior, Macario, de Oliveira Fratoni, Meurer, Saint-Clair, Spilere Romagna, Alves Lacerda, Serpa Cerboncini, Brioschi Lyra, Lau, Costa Rodrigues, Rodrigues Faria, Laps, Althoff, de Jesus, Namba, Vieira Braga, Molin, França Câmara, Rodrigues Enedino, Wischhoff, de Oliveira, Leandro-Silva, Araújo-Lima, de Oliveira Lunardi, Farias de Gusmão, de Souza Correia, Gaspar, Batista Fonseca, Fonseca Pires Neto, Medeiros Morato de Aquino, Betagni de Camargo, Azevedo Cezila, Marques Costa, Montanheiro Paolino, Zukeran Kanda, Monteiro, Oshima, Alves-Eigenheer, Pizo, Silveira, Galetti and Ribeiro2019). Nevertheless, there is still a large Wallacean deficit with regard to the biodiversity of the biome (Colli‐Silva et al., Reference Colli‐Silva, Reginato, Cabral, Forzza and Vasconcelos2020; Marques and Grelle, Reference Marques and Grelle2021). Species endemism is exceptionally high in the Atlantic Forest (Costa et al., Reference Costa, Leite, da Fonseca and da Fonseca2000; da Silva et al., Reference da Silva, de Sousa and Casteleti2004; Cruz and Feio, Reference Cruz, Feio, Nascimento and Oliveira2007) and given the long history of deforestation (Dean, Reference Dean2002) and the effects of climate change (Vale et al., Reference Vale, Tourinho, Lorini, Rajão and Figueiredo2018), this biome has been classified as one of the most threatened biodiversity hotspots on the planet and its exuberant flora and fauna are a constant source of concern for conservation biologists. In spite of ongoing restoration efforts (Romanelli et al., Reference Romanelli, Meli, Bispo Santos, Nogueira Jacob, Rodrigues Souza, Vieira Rodrigues, Peruchi Trevisan, Huang, Almeida, Silva, Lopes Assad, Cadotte and Ribeiro Rodrigues2022), many endemic species still face a high risk of extinction (de Lima et al., Reference de Lima, Oliveira, Pitta, de Gasper, Vibrans, Chave, Ter Steege and Prado2020). Large data gaps plague up-to-date estimations of population size, dynamics and distribution of most species, making threat status assessments and conservation action prioritisation inaccurate. Threatened species tend to be rare and have a more restricted distribution than species evaluated as Least Concern on the global Red List by the International Union for Conservation of Nature (https://www.iucnredlist.org/). Species facing a higher risk of extinction often require broader actions and more intensive monitoring than less threatened taxa (Green and Young, Reference Green and Young1993; Martikainen and Kouki, Reference Martikainen and Kouki2003).

Birds in particular are highly threatened in the Atlantic Forest – five to seven bird species have likely been driven to extinction in the wild in this biome and a further nine are Critically Endangered (Develey and Phalan, Reference Develey and Phalan2021). Fortunately, this group is also popular among observers, as besides paid scientists, 30–40,000 Brazilian birdwatchers are known to generate information for bird conservation (Develey, Reference Develey2021).

Unlike “traditional” science, which is conducted by highly trained and paid personnel, community (or citizen) science data are contributed by volunteer members of the public (Louv and Fitzpatrick, Reference Louv and Fitzpatrick2012). These initiatives have become instrumental in generating monitoring data globally and at multiple scales (Chandler et al., Reference Chandler, See, Copas, Bonde, López, Danielsen, Legind, Masinde, Miller-Rushing, Newman and Rosemartin2017). In addition, observations often originate from private properties and other areas, which are not always accessible to professional researchers (Callaghan et al., Reference Callaghan, Poore, Hofmann, Roberts and Pereira2021). Crowdsourcing through digital citizen science platforms has increased the rate of global biodiversity information production (Kelling et al., Reference Kelling, Johnston, Bonn, Fink, Ruiz-Gutierrez, Bonney, Fernandez, Hochachka, Julliard, Kraemer and Guralnick2019). The number of occurrence records collected by volunteers within global databases, such as the Global Biodiversity Information Facility (GBIF; https://www.gbif.org/), has massively increased over time (Boakes et al., Reference EHl, McGowan, Fuller, Chang-qing, Clark, O’Connor and Mace2010; Petersen et al., Reference Petersen, Speed, Grøtan and Austrheim2021). Birds, in particular, have received the most interest from citizen scientists all around the world, and consequently, this group has the highest representation within GBIF (Troudet et al., Reference Troudet, Grandcolas, Blin, Vignes-Lebbe and Legendre2017).

Currently, over 60% of all GBIF species occurrence data from Brazil are birds recorded through eBird (ebird.org). eBird accepts lists, photos or sound recordings of birds that observers see or hear while walking transects or through incidental observations. Observers also record geographic coordinates and the time and the day of the observation. The eBird database is curated by taxon specialists and the platform provides scientists and the interested public with real-time data on bird distributions and abundance. Other platforms have also become popular in Brazil and produce data on the distribution of birds in the country. For instance, WikiAves is a Brazilian website for birdwatchers, with the objective of supporting, disseminating and promoting birdwatching activities through photos and sound recordings, while helping with the identification of species and encouraging communication between observers. WikiAves accepts photos and sound recordings of bird species that occur in Brazil, but does not require exact coordinates of the observations, only the name of the municipality where the bird was recorded. Among other topics, this database has been used to study species distribution and migration (Cunha et al., Reference Cunha, Esteves Lopes and Selezneva2022; Atwood, Reference Atwood2023), behaviour (Tubelis and Sazima, Reference Tubelis and Sazima2020; de Souza et al., Reference de Souza, Lima‑Santos, Entiauspe‑Neto, dos Santos, de Moura and Hingst‑Zaher2022; Tubelis et al., Reference Tubelis, Araújo and Gomes2022), diet (Schneider et al., Reference Schneider, de Oliveira Santos, Moreira-Lima and Hingst-Zaher2023), and species interactions (Bosenbecker et al., Reference Bosenbecker, Amaral Anselmo, Andreoli, Shimizu, Oliveira and Maruyama2023). A third platform with a high number of bird observations (270,888) in Brazil is iNaturalist. This generalist platform accepts photos and sound recordings of any organism and has been an important source of biodiversity data (Seregin et al., Reference Seregin, Bochkov, Shner, Garin, Pospelov, Prokhorov, Golyakov, Mayorov, Svirin, Khimin, Gorbunova, Kashirina, Kuryakova, Bolshakov, Ebel, Khapugin, Mallaliev, Mirvoda, Lednev, Nesterkova, Zelenova, Nesterova, Zelenkova, Vinogradov, Biryukova, Verkhozina, Zyrianov, Gerasimov, Murtazaliev, Basov, Marchenkova, Vladimirov, Safina, Dudov, Degtyarev, Tretyakova, Chimitov, Sklyar, Kandaurova, Bogdanovich, Dubynin, Chernyagina, Lebedev, Knyazev, Mitjushina, Filippova, Dudova, Kuzmin, Svetasheva, Zakharov, Travkin, Magazov, Teploukhov, Efremov, Deineko, Stepanov, Popov, Kuzmenckin, Strus, Zarubo, Romanov, Ebel, Tishin, Arkhipov, Korotkov, Kutueva, Gostev, Krivosheev, Gamova, Belova, Kosterin, Prokopenko, Sultanov, Kobuzeva, Dorofeev, Yakovlev, Danilevsky, Zolotukhina, Yumagulov, Glazunov, Bakutov, Danilin, Pavlov, Pushay, Tikhonova, Samodurov, Epikhin, Silaeva, Pyak, Fedorova, Samarin, Shilov, Borodulina, Kropocheva, Kosenkov, Bury, Mitroshenkova, Karpenko, Osmanov, Kozlova, Gavrilova, Senator, Khomutovskiy, Borovichev, Filippov, Ponomarenko, Shumikhina, Lyskov, Belyakov, Kozhin, Poryadin and Leostrin2020; Mesaglio and Callaghan, Reference Mesaglio and Callaghan2021; Forti and Szabo, Reference Forti and Szabo2023). In this platform, artificial intelligence suggests identification for the submitted images and other users, including taxon experts, also contribute with their knowledge. Providing exact geographic coordinates makes it possible to use iNaturalist observations in a wide range of scientific studies, enabling spatial analyses and inferring relationships between organisms and their habitats, climate and other characteristics (Forti et al., Reference Forti, Hepp, de Souza, Protazio and Szabo2022a, Reference Forti, Retuci Pontes, Augusto-Alves, Martins, Hepp and Szabo2022b).

The increasing number of occurrence records collected by citizen scientists reflects a combination of increased public awareness and participation in citizen science initiatives and new technologies for recording and submitting observations (Chandler et al., Reference Chandler, See, Copas, Bonde, López, Danielsen, Legind, Masinde, Miller-Rushing, Newman and Rosemartin2017; Mihoub et al. Reference Mihoub, Henle, Titeux, Brotons, Brummitt and Schmeller2017). At the same time, the mobilisation of other data sources, such as museum collections and the published literature has also increased the number of occurrence records in GBIF (Boakes et al. Reference EHl, McGowan, Fuller, Chang-qing, Clark, O’Connor and Mace2010). The combination of these data sources has allowed robust studies in the area of biogeography and macroecology (Liu et al., Reference Liu, Smith, Raina, Stanforth, Ng’Iru, Ireri, Martins, Gordon and Martin2022; Moles and Xirocostas, Reference Moles and Xirocostas2022; Martinez et al., Reference Martinez, Kirwan and Schweizer2023).

In ecological studies, the number of observed individuals is often used as a proxy for species abundance. However, observations submitted by volunteers are often biased spatially – more frequent in areas of high human population density (Di Cecco et al., Reference Di Cecco, Barve, Belitz, Stucky, Guralnick and Hurlbert2021; Forti and Szabo, Reference Forti and Szabo2023), temporally – observers prefer months and days when they are free and when climatic conditions are favourable (Bowler et al., Reference Bowler, Callaghan, Bhandari, Henle, Barth, Koppitz, Klenke, Winter, Jansen, Bruelheide and Bonn2022) and by taxonomy – depending on species characteristics, such as body colour, size, and shape (Callaghan et al., Reference Callaghan, Poore, Mesaglio, Moles, Nakagawa, Roberts, Rowley, Vergés, Wilshire and Cornwell2021; Marcenò et al., Reference Marcenò, Padullés Cubino, Chytrý, Genduso, Salemi, La Rosa, Gristina, Agrillo, Bonari, Giusso del Galdo, Ilardi, Landucci and Guarino2021). Also, the behaviour and habitat preference of some species make recording them more difficult, demanding higher observer skills or more experience, and this can result in the underrepresentation of some species of conservation concern in citizen science datasets and numbers of observations that do not directly reflect true abundance (Szabo et al., Reference Szabo, Fuller and Possingham2012). In spite of these issues, unstructured data from eBird, WikiAves and iNaturalist have been used to support conservation decision-making (Schubert et al., Reference Schubert, Tonelli Manica and Guaraldo2019; Spear et al., Reference Spear, van Wilgen, Rebelo and Botha2023). In this context, understanding factors that affect the number of observations submitted by citizen scientists is important during data analysis and interpretation.

In this work, we study the relationship between the distribution (extent of occurrence) and estimated abundance and biomass of species with the number of observations made by citizen scientists. We focus on endemic birds of the Brazilian Atlantic Forest using data from three major citizen science platforms. We also evaluate the relationship between species distribution and the number of observations in relation to the global threat category. While these relationships may seem intuitive, the behaviour of observers can vary between regions and the composition of different observer profiles can change the patterns of the data collected by them (Tulloch and Szabo, Reference Tulloch and Szabo2012). Nevertheless, our hypothesis is that the number of bird observations in the datasets is a function of the threat status of the species, which, in turn, is affected by species rarity and trends, reflected by the extent of geographic distribution and the abundance of the species (IUCN, 2022). We also describe under-, and overrepresented species and list potential actions to fill knowledge gaps, particularly species occurrence and population trends, of Brazilian Atlantic Forest bird species. In addition, we suggest future directions for the use of citizen science data in biodiversity conservation in this highly threatened biome.

Results

We identified a total of 1,204,210 observations of endemic birds from the Atlantic Forest that have been submitted by citizen scientists to the three platforms. After removing duplicate observations and restricting the dataset to 2000–2022, 838,880 observations remained, representing approximately 70% of the raw data.

We found positive correlations between the range of species distribution, their extent of occurrence and their estimated abundance (see raw data in Supplementary Table 1). The size of the distribution range and threat status of the species affected the number of observations submitted by citizen scientists (Figure 1). The first mixed model (AIC = 3835.317; r2 = 0.50; REML = 255.6) had a positive value for the estimated coefficient (estimate = 0.21073; t-value = 5.312; p < 0.01) for the number of observations due to the range of species distributions, even considering the effects of family and threat status as random factors. These two random factors retained a large proportion of the variation in the residuals, and the value for threat status (SDthreat = 0.3027) was higher than the value for family (SDfamily = 0.1473) with SDresidual = 0.4054. Nevertheless, the interaction between range and threat status was not significant in their effect on the number of observations (Supplementary Table 2). A larger distribution range seemed to result in more observations within threat categories (Figure 2). Based on the interaction term, IUCN status did not significantly influence the slope of the range size, hence the positive relationship held true across threat categories. In the second mixed model, estimated total biomass also had a significant effect on the number of observations made by citizen scientists (REML = 87.9, estimated coefficient = 0.209, and p = 0.004). However, based on a visual analysis of the residuals and the results of the third mixed effect model for estimated total biomass controlled only by IUCN status, it had a worse fit than the previous model (REML = 106.8, estimated coefficient = 0.1379, r2 = 0.329, and p = 0.018), with different patterns for different threat categories. The effect was negative for Critically Endangered and Least Concern species and positive for the rest, i.e., higher estimated biomass led to more observations (Figure 3).

Figure 1. Number of observations of bird species endemic to the Atlantic Forest in Brazil in three citizen science platforms according to the distribution range of species (A) (both variables in log10 scale); and (B) the global threat status of the species (IUCN 2023).

Figure 2. Number of observations of birds in the Atlantic Forest carried out by citizen scientists in relation to the distribution range of the species (both variables in log10 scale). Regression lines were calculated based on the global threat categories (IUCN): LC: Least Concern, NT: Near Threatened, VU: Vulnerable, EN: Endangered and CR: Critically Endangered. Species illustrated at the bottom of the graph are under-represented, such as the critically endangered Merulaxis stresemanni and Antilophia bokermanni, the Vulnerable Sclerurus cearensis and the Least Concern Phaethornis malaris. The species illustrated at the top of the graph, Brotgeris tirica and Thalurania glaucopis are overrepresented in the database. Images were provided by the following iNaturalist observers: @Anderson Sandro, @Luiz Alberto Santos, @Nereston Camargo, @Tomaz Melo, @Douglas Clarkee and @manequinho.

Figure 3. Number of observations of birds in the Atlantic Forest carried out by citizen scientists in relation to the estimated total biomass (both variables in log10 scale). Regression lines were calculated based on the global threat categories (IUCN): LC: Least Concern, NT: Near Threatened, VU: Vulnerable, EN: Endangered, and CR: Critically Endangered.

Some Least Concern species, such as the Golden-green Woodpecker (Piculus chrysochloros; r = – 1,878) and the Great-billed Hermit (Phaethornis malaris; r = – 1,674; Supplementary Table 1) deviated from the model prediction by having negative residuals and were under-represented in the citizen science data. Certain threatened species also had lower than predicted representation, including the Endangered Boa Nova Tapaculo (Scytalopus gonzagai; r = – 1,284); and the Critically Endangered Araripe Manakin (Antilophia bokermanni; r = – 0.998). On the other hand, common Least Concern species, such as the Plain Parakeet (Brotogeris tirica) and the Ruby-crowned Tanager (Tachyphonus coronatus) were overrepresented, both with r = 0.892. Some threatened species were also overrepresented in the dataset, such as the Critically Endangered Orange-bellied Antwren (Terenura sicki; r = 0.352), the Endangered Vinaceous-breasted Amazon (Amazona vinacea; r = 0.464) and the Vulnerable Fork-tailed Tody-tyrant (Hemitriccus furcatus; r = 0.475). Feeding habits and behaviour of the species did not explain model deviations and did not directly affect the number of observations per species in the datasets (Figure 4).

Figure 4. Number of observations made by citizen scientists of birds with different feeding behaviour (top left) and vertical strata (top right) and the distribution of model residuals for different categories of feeding behaviour (bottom left) and vertical strata (bottom right) for Atlantic Forest endemic birds. The number of observations and the residuals are shown at a logarithmic scale.

Discussion

Our results suggest that threatened species are less frequently observed by citizen scientists in the Brazilian Atlantic Forest than nonthreatened species. Specifically, the more threatened a species is, the fewer observations the database contains. Based on our model, this pattern is due to range size and potentially, to a lesser extent, population size. This pattern suggests that citizen science can provide useful data for assessing the population status of birds in the Atlantic Forest, mainly with regard to the distribution range of the species. Therefore, citizen science data can reflect changes in the spatial distribution of bird species in the Atlantic Forest.

In fact, 67% of threatened and Near Threatened species of the total 216 Atlantic Forest bird species reported in the three citizen science datasets show declining population trends, while only 5% have unknown trends (BirdLife International, 2023). Given that citizen scientists can have a preference for rare or threatened species as shown in data from Australia (Tulloch and Szabo, Reference Tulloch and Szabo2012), it is not always possible to use the number of observations as an approximation of the size or distribution of bird populations. Furthermore, dull-coloured and shy species can be underreported by casual observers (Szabo et al., Reference Szabo, Fuller and Possingham2012).

Another caution we must take when interpreting citizen science data is related to oversampling in urban areas – either due to increasing spatial sampling bias over time or environmental change pooled with constant spatial sampling bias. This bias can lead to an overestimation of declines in species that are negatively affected by urban cover (Bowler et al., Reference Bowler, Callaghan, Bhandari, Henle, Barth, Koppitz, Klenke, Winter, Jansen, Bruelheide and Bonn2022). This effect may also explain the worse performance of the alternative model that incorporated total biomass based on species abundance estimates. Many factors could affect the number of observations, and these effects can be stronger than the abundance of the species.

Studies assessing observer behaviour have also shown a taxonomic bias in the representativeness of species in citizen science datasets (Tulloch and Szabo, Reference Tulloch and Szabo2012; Callaghan et al., Reference Callaghan, Poore, Hofmann, Roberts and Pereira2021). In fact, body size has been an important predictor of detectability, with larger animals seen more often than smaller ones (Callaghan et al., Reference Callaghan, Poore, Mesaglio, Moles, Nakagawa, Roberts, Rowley, Vergés, Wilshire and Cornwell2021). However, some threatened species had a relatively high representation in our dataset regardless of their body sizes and these species are known to be charismatic and the object of organised initiatives (Martinez and Prestes, Reference Martinez and Prestes2021). One example is the Vinaceous-breasted Amazon (Zulian et al., Reference Zulian, Miller and Ferraz2021), which has been reintroduced into the wild in some areas and has been a coveted target for observers. Local and focal citizen science projects have also been successful, particularly those involving iconic species, such as the Toco Toucan (Ramphastos toco; Schaaf et al., Reference Schaaf, Haag, Gonzalez Baffa-Trasci, Yapura, Chocobar, Caldano and Ruggera2024).

In general, habitat loss in the Atlantic Forest makes continued sampling by citizen scientists even more important. Within 20 to 30 years, unstructured databases are estimated to gain more importance as their use in population trend calculations will increase (Szabo et al., Reference Szabo, Vesk, Baxter and Possingham2010). Gathering information from different data sources can help to separate species dynamics from spatial biases in sampling (Dorazio, Reference Dorazio2014; Fithian et al., Reference Fithian, Elith, Hastie and Keith2015; Pacifici et al. Reference Pacifici, Visconti, Butchart, Watson, Cassola and Rondinini2017). This information can support the simultaneous modelling of presence-only data and standardised or presence-absence data in integrated distribution models (Dorazio, Reference Dorazio2014; Fithian et al., Reference Fithian, Elith, Hastie and Keith2015; Pacifici et al. Reference Pacifici, Visconti, Butchart, Watson, Cassola and Rondinini2017). With protection, habitat recovery and restoration, ongoing monitoring is more important than ever (Develey and Phalan, Reference Develey and Phalan2021). Up-to-date population sizes and ranges can inform us whether these actions are sufficient, or whether other measures, such as predator control, translocations, or ex situ management need to be applied (Develey and Phalan, Reference Develey and Phalan2021). Bird observation has improved the attitude of the Brazilian public towards biodiversity, promoting bird conservation and increasing knowledge about the birds of Brazil (Develey, Reference Develey2021).

Barriers to participating in citizen science have decreased over the past decade due to new outreach projects and smartphone apps, leading to greater inclusion of people with less experience, and this has apparently been happening at the national scale in Brazil (Forti and Szabo, Reference Forti and Szabo2023). Recently joined participants may differ in their recording behaviour and be less likely to visit remote places to record species compared to observers who have been active for decades, but even so, data contributed by people of different profiles are important to detect trends and monitor changes in species distribution. High public engagement in citizen science is crucial and initiatives involved in adaptive sampling that addresses spatial and temporal gaps, as well as taxonomic bias need to be supported (Callaghan et al., Reference Callaghan, Thompson, Woods, Poore, Bowler, Samonte, Rowley, Roslan, Kingsford, Cornwell and Major2023). Educational projects using a citizen science approach can be particularly important in collecting data in undersampled regions (Forti, Reference Forti2023).

As databases grow, we continue to learn about biases and errors in citizen science data, including identification errors (Gorleri and Areta, Reference Gorleri and Areta2022; Gorleri et al., Reference Gorleri, Jordan, Roesler, Monteleone and Areta2023). Nevertheless, the resulting large databases have created enormous opportunities for ecologists to address questions about biodiversity patterns at large spatial scales (Theobald et al. Reference Theobald, Ettinger, Burgess, DeBey, Schmidt, Froehlich, Wagner, HilleRisLambers, Tewksbury, Harsch and Parrish2015). Developments in statistical modelling also enable us to explain many of the biases and sources of heterogeneity in unstructured data (Isaac et al. Reference Isaac, van Strien, August, de Zeeuw and Roy2014). The lack of standardised long-term monitoring for most taxa also increases the value of these datasets when assessing species turnover in ecological communities over time.

When planning citizen science initiatives, sample representativeness should be maximised (Callaghan et al., Reference Callaghan, Thompson, Woods, Poore, Bowler, Samonte, Rowley, Roslan, Kingsford, Cornwell and Major2023). Local residents (as opposed to visitors) should be encouraged to survey the birds, as repeated surveys add value to monitoring also this type of volunteer is known to visit “less exciting” locations and record common species (Tulloch and Szabo, Reference Tulloch and Szabo2012). Citizen science data can also be better integrated with structured surveys conducted by professional scientists, in the sense that monitoring through standardised surveys should focus on the gaps left by volunteers (Tulloch et al., Reference Tulloch, Mustin, Possingham, Szabo and Wilson2013).

Conclusions

As the observation patterns identified for Atlantic Forest endemic birds might not be representative of all taxonomic groups in this biome, further studies should focus on the contribution of citizen science to observations of other taxa at a large scale. Our results suggest that citizen science initiatives contribute to our knowledge about endangered species in the biome in a meaningful way and this approach is expected to become even more relevant in the future for decision-making involving rare and/or threatened species.

Methods

Study Area: Our study was conducted in the Atlantic Forest, which is the second largest tropical forest in South America behind the Amazon. The Atlantic Forest extends along the entire Brazilian coast and contains large human population centres, such as São Paulo, Rio de Janeiro and Salvador (Marques and Grelle, Reference Marques and Grelle2021). A complex topography covers a wide range of elevations from sea level to almost 3000 m a.s.l. and different substrates contribute to an intricate vertical stratification, creating microhabitats for a highly diverse biota (Morellato et al., Reference Morellato and Haddad2000; Ramalho, Reference Ramalho2004). The vegetation of this biome is a complex of evergreen, deciduous and semi-deciduous forests, along with mangroves, dunes and high-altitude fields (Ribeiro et al., Reference Ribeiro, Martensen, Metzger, Tabarelli, Scarano, Fortin, Zachos and Habel2011). These characteristics resulted in centres of endemism for multiple taxa and made the Atlantic Forest highly biodiverse (da Silva and Casteleti, Reference da Silva, Casteleti, Galindo-Leal and de Gusmao Câmara2003; Cardoso da Silva et al., Reference Cardoso da Silva, Cardoso de Sousa and Castelletti2004). Given the large extension of the Atlantic Forest, many areas are still poorly studied (Marques and Grelle, Reference Marques and Grelle2021). Starting with the Portuguese colonisation of Brazil, almost 500 years ago, anthropogenic pressures reduced the extent of native vegetation in the Atlantic Forest to 7.6% of its original extent (Marques and Grelle, Reference Marques and Grelle2021). Deforestation rates were historically driven by clearing for sugar cane and coffee plantations (Dean, Reference Dean2002). Although habitat destruction has slowed down, climate change and the fragmentation of forest remnants still represent a major threat to the biodiversity of this biome (SOS Mata Atlântica/INPE, 2018; de Lima et al., Reference de Lima, Oliveira, Pitta, de Gasper, Vibrans, Chave, Ter Steege and Prado2020). In spite of many recent reforestation initiatives (https://pactomataatlantica.org.br/), endemic bird species are still declining (Develey and Phalan, Reference Develey and Phalan2021). The extent of protected areas is also relatively low, only covering 2% of the original area with native vegetation (Tabarelli et al., Reference Tabarelli, Pinto, Silva, Hirota and Bedê2005).

Proceedings: To evaluate the representativeness of citizen science data, we extracted metadata from the three most important citizen science platforms in Brazil for 216 endemic birds of the Atlantic Forest (Vale et al., Reference Vale, Tourinho, Lorini, Rajão and Figueiredo2018). For species taxonomy, we followed BirdLife International (2023). The list of species and their status are detailed in Supplementary Table 1. We obtained data through formal requests to the Application Programming Interface (API) of eBird (https://ebird.org/home) and iNaturalist (https://www.inaturalist.org/), and compiled metadata using the Instant Data Scraper application (https://webrobots.io/instantdata/) from WikiAves (https://www.wikiaves.com.br/index.php). From iNaturalist, we only considered “research grade” observations, i.e., records validated at the species level with a consensus from at least 2/3 of the identifiers. We manually obtained population trends from BirdLife International’s Data Zone (2023). In the case of birds, BirdLife International is also the official assessor of IUCN Red List status. We obtained the IUCN global threat classification of species through the rredlist package (Chamberlain, Reference Chamberlain2020) in R version 4.2.1 (R Core Development Team, 2022). We included species from the following categories: Extinct (EX) for species, where there is no reasonable doubt that the last individual has died; extinct in the wild (EW), for species considered extinct in their natural habitat; Critically Endangered (CR), Endangered (EN), and Vulnerable (VU), following quantitative criteria designed to reflect varying degrees of threat of extinction (taxa in any of these three categories are collectively referred to as “threatened” henceforth); Near Threatened (NT), which is applied to species that currently do not meet the criteria for threatened, but are close to it or are likely to become threatened if ongoing conservation actions are reduced, interrupted or ceased; and Least Concern, for species that do not qualify (and are not close to qualifying) as threatened or Near Threatened. The category Least Concern indicates that, in terms of extinction risk, these species are of lower concern than species in other threat categories and does not imply that these species are not of conservation concern. None of the birds of the Atlantic Forest were classified by IUCN as Data Deficient or Not Evaluated. Five quantitative criteria are used to determine the threat category of a particular species, based on biological indicators of threatened populations, such as rapid population decline or reduced population size. These five criteria are as follows:

  1. A. Population size reduction (past, present and/or projected);

  2. B. Size of geographic distribution and fragmentation, few locations conditioned to threat, decline or fluctuations;

  3. C. Small population size with decline and fragmentation, fluctuations or few subpopulations;

  4. D. Population size too small or distribution too narrow;

  5. E. Quantitative Extinction Risk Analysis (e.g., Population Feasibility Analysis)

We obtained minimum and maximum abundance estimates and the extent of occurrence (EOO) of each species from BirdLife International (https://www.birdlife.org/datazone). As another metric, we obtained the size of the distribution range, which indicates the total area of the mapped range for the species from AVONET (Tobias et al., Reference Tobias, Sheard, Pigot, Devenish, Yang, Sayol, Neate-Clegg, Alioravainen, Weeks, Barber, Walkden, MacGregor, Jones, Vincent, Phillips, Marples, Montaño-Centellas, Leandro-Silva, Claramunt, Darski, Freeman, Bregman, Cooney, Hughes, Capp, Varley, Friedman, Korntheuer, Corrales-Vargas, Trisos, Weeks, Hanz, Töpfer, Bravo, Remeš, Nowak, Carneiro, Moncada, Matysioková, Baldassarre, Martínez-Salinas, Wolfe, Chapman, Daly, Sorensen, Neu, Ford, Mayhew, Silveira, Kelly, Annorbah, Pollock, Grabowska-Zhang, McEntee, Gonzalez, Meneses, Muñoz, Powell, Jamie, Matthews, Johnson, Brito, Zyskowski, Crates, Harvey, Jurado Zevallos, Hosner, Bradfer‐Lawrence, Maley, Gary Stiles, Lima, Provost, Chibesa, Mashao, Howard, Mlamba, Chua, Li, Gómez, García, Päckert, Fuchs, Ali, Derryberry, Carlson, Urriza, Brzeski, Prawiradilaga, Rayner, Miller, Bowie, Lafontaine, Scofield, Lou, Somarathna, Lepage, Illif, Neuschulz, Templin, Dehling, Cooper, Pauwels, Analuddin, Fjeldså, Seddon, Sweet, DeClerck, Naka, Brawn, Aleixo, Böhning-Gaese, Rahbek, Fritz, Thomas and Schleuning2022). These numbers were calculated based on BirdLife International maps, considering areas, where a particular species was coded as present and distinguishing native and reintroduced ranges and areas, where the species was resident or visitor. We also collated data on body mass, feeding behaviour and life history traits (arboreal, aerial, etc.) for each of the species based on Tobias et al. (Reference Tobias, Sheard, Pigot, Devenish, Yang, Sayol, Neate-Clegg, Alioravainen, Weeks, Barber, Walkden, MacGregor, Jones, Vincent, Phillips, Marples, Montaño-Centellas, Leandro-Silva, Claramunt, Darski, Freeman, Bregman, Cooney, Hughes, Capp, Varley, Friedman, Korntheuer, Corrales-Vargas, Trisos, Weeks, Hanz, Töpfer, Bravo, Remeš, Nowak, Carneiro, Moncada, Matysioková, Baldassarre, Martínez-Salinas, Wolfe, Chapman, Daly, Sorensen, Neu, Ford, Mayhew, Silveira, Kelly, Annorbah, Pollock, Grabowska-Zhang, McEntee, Gonzalez, Meneses, Muñoz, Powell, Jamie, Matthews, Johnson, Brito, Zyskowski, Crates, Harvey, Jurado Zevallos, Hosner, Bradfer‐Lawrence, Maley, Gary Stiles, Lima, Provost, Chibesa, Mashao, Howard, Mlamba, Chua, Li, Gómez, García, Päckert, Fuchs, Ali, Derryberry, Carlson, Urriza, Brzeski, Prawiradilaga, Rayner, Miller, Bowie, Lafontaine, Scofield, Lou, Somarathna, Lepage, Illif, Neuschulz, Templin, Dehling, Cooper, Pauwels, Analuddin, Fjeldså, Seddon, Sweet, DeClerck, Naka, Brawn, Aleixo, Böhning-Gaese, Rahbek, Fritz, Thomas and Schleuning2022).

The area of occurrence (AOO) represents the geographical range of a species, which is calculated using a minimum convex polygon based on observation locations (Gaston, Reference Gaston1991). This metric is essential to evaluate a taxon based on Criterion B and can be used in Criterion A, which is used to assess changes in the distribution of a species (IUCN, 2022).

Data analysis: Statistical analyses and graphical visualisations were produced using R version 4.2.1 (R Core Development Team, 2022). We checked the heterogeneity of the dataset (abundance pattern based on the number of observations by each species) by applying Benford’s Law (Szabo et al., Reference Szabo, Forti and Callaghan2023) and found it to have marginal conformity with regard to the distribution of digits, which means that the data are of satisfactory quality (Forti et al., Reference Forti, Passetti, Oliveira, Lima, Queiros, Lopes and Szabo2024). We produced graphs using the ggplot2 package (Wickham, Reference Wickham2016).

We excluded one species, the Alagoas Curassow (Mitu mitu), from all analyses. Until its recent reintroduction in 2019 (Francisco et al., Reference Francisco, Costa, Azeredo, Simpson, da Costa Dias, Fonseca, Pinto and Silveira2021), this species had the previous (unconfirmed) sighting in the wild in the late 1980s and is still considered EW by BirdLife International (2023). While our citizen-collected dataset contained two observations, there are no population size or range estimates provided by BirdLife International (2023).

As IUCN status is calculated over three generations or 20 years, we limited our database to observations made between January 1, 2000 and December 31, 2022. We also eliminated duplicate observations of the same species that occurred at the same geographic location on the same day using the function distinct from the dplyr package (Wickham et al., Reference Wickham, François, Henry and Müller2022). To obtain a more realistic estimate of species abundance, we calculated the median from the minimum and maximum values obtained from the Data Zone interface of BirdLife International (2023). We calculated total biomass by multiplying the median estimate of species abundance by the body mass of the species (Tobias et al., Reference Tobias, Sheard, Pigot, Devenish, Yang, Sayol, Neate-Clegg, Alioravainen, Weeks, Barber, Walkden, MacGregor, Jones, Vincent, Phillips, Marples, Montaño-Centellas, Leandro-Silva, Claramunt, Darski, Freeman, Bregman, Cooney, Hughes, Capp, Varley, Friedman, Korntheuer, Corrales-Vargas, Trisos, Weeks, Hanz, Töpfer, Bravo, Remeš, Nowak, Carneiro, Moncada, Matysioková, Baldassarre, Martínez-Salinas, Wolfe, Chapman, Daly, Sorensen, Neu, Ford, Mayhew, Silveira, Kelly, Annorbah, Pollock, Grabowska-Zhang, McEntee, Gonzalez, Meneses, Muñoz, Powell, Jamie, Matthews, Johnson, Brito, Zyskowski, Crates, Harvey, Jurado Zevallos, Hosner, Bradfer‐Lawrence, Maley, Gary Stiles, Lima, Provost, Chibesa, Mashao, Howard, Mlamba, Chua, Li, Gómez, García, Päckert, Fuchs, Ali, Derryberry, Carlson, Urriza, Brzeski, Prawiradilaga, Rayner, Miller, Bowie, Lafontaine, Scofield, Lou, Somarathna, Lepage, Illif, Neuschulz, Templin, Dehling, Cooper, Pauwels, Analuddin, Fjeldså, Seddon, Sweet, DeClerck, Naka, Brawn, Aleixo, Böhning-Gaese, Rahbek, Fritz, Thomas and Schleuning2022).

We used three generalised mixed models through the lme4 (Bates et al., Reference Bates, Maechler, Bolker and Walker2015) and lmerTest (Kuznetsova et al., Reference Kuznetsova, Brockhoff and Christensen2017) packages to assess the effect of species abundance, biomass and EOO, and distribution on the number of observations submitted by citizen scientists. First, we checked the correlation between fixed factors before fitting the models to avoid collinearity and log10 transformed all numerical variables to eliminate discrepancies in the dataset. Since the data were not normally distributed, we used the cor.test function through Spearman’s method to correlate the logarithm of the median abundance with the logarithm of the EOO and the distribution of the species. As the logarithm of the distribution range was highly correlated with species abundance and the EOO (Supplementary Table 3), we included it as a fixed factor in the first model, assigning the logarithm of the number of observations as the dependent variable and family and IUCN status as random factors. We used these two variables as random factors because both were correlated with the distribution range and estimated total biomass (Supplementary Table 4). In the second mixed model, we fit base 10 logarithm of the total estimated biomass of the species as a fixed factor and the same condition as in the first model for the random factors and the dependent variable. Then, we fit a third mixed model to isolate the effects of biomass on the number of observations controlled by IUCN status, using IUCN status as a random factor. No singular fit problems were identified for these models. We assessed the normality of the residuals visually using the qqnorm and qqline functions. After fitting the models, we obtained the residual maximum likelihood value (REML) and annotated the estimates of each fixed effect, as well as their significance value. We calculated variation around the estimates using a 95% confidence interval through the confit.merMod function. We checked indices of model performance and singularity using the model_performance and check_singularity functions of the performance package (Lüdecke et al., Reference Lüdecke, Ben-Shachar, Patil, Waggoner and Makowski2021). We saved residuals from the first mixed model to identify species that were under and overrepresented in the database. These residuals and the logarithm of the number of observations were also used to test possible effects of feeding behaviour and life history by graph visualisation. Finally, we fit a generalised linear model using the lm function to test the effect of the logarithm of the distribution range of species interacting with IUCN threat status. This procedure also allowed us to understand the effect of the logarithm of the distribution range of species on the logarithm of the number of observations within each threat status group. For the R script with the codes for all statistical models described above see Supplementary Material 5.

Open peer review

To view the open peer review materials for this article, please visit http://doi.org/10.1017/ext.2024.22.

Supplementary material

The supplementary material for this article can be found at http://doi.org/10.1017/ext.2024.22.

Data availability statement

The raw data for this study are available at https://zenodo.org/record/7775610#.ZCHnGnbMLb0.

Acknowledgements

We thank all citizen scientists who contributed observations of birds in citizen science platforms that help biodiversity research of the Atlantic Forest and the observers who allowed us to use their photographs in the figures. We are grateful to two anonymous reviewers and the editor for their comments on earlier versions of this manuscript.

Author contribution

LRF conceived and designed the experiment, collected the data, performed data management, analysed the data, wrote the first draft of the manuscript, and approved the text; AMPRSP analysed the data, discussed the project, revised the manuscript and approved the text; TO, JL, AQ, MADFL collected the data, performed data management, discussed the project, revised the manuscript and approved the text; JKS discussed the project, collected the data, performed data management, wrote, edited and revised the manuscript and approved the text.

Financial support

This research received no specific grant from any funding agency, commercial or not-for-profit sectors.

Competing interest

None.

Ethics statements (if appropriate)

This work did not require ethics approval.

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Figure 0

Figure 1. Number of observations of bird species endemic to the Atlantic Forest in Brazil in three citizen science platforms according to the distribution range of species (A) (both variables in log10 scale); and (B) the global threat status of the species (IUCN 2023).

Figure 1

Figure 2. Number of observations of birds in the Atlantic Forest carried out by citizen scientists in relation to the distribution range of the species (both variables in log10 scale). Regression lines were calculated based on the global threat categories (IUCN): LC: Least Concern, NT: Near Threatened, VU: Vulnerable, EN: Endangered and CR: Critically Endangered. Species illustrated at the bottom of the graph are under-represented, such as the critically endangered Merulaxis stresemanni and Antilophia bokermanni, the Vulnerable Sclerurus cearensis and the Least Concern Phaethornis malaris. The species illustrated at the top of the graph, Brotgeris tirica and Thalurania glaucopis are overrepresented in the database. Images were provided by the following iNaturalist observers: @Anderson Sandro, @Luiz Alberto Santos, @Nereston Camargo, @Tomaz Melo, @Douglas Clarkee and @manequinho.

Figure 2

Figure 3. Number of observations of birds in the Atlantic Forest carried out by citizen scientists in relation to the estimated total biomass (both variables in log10 scale). Regression lines were calculated based on the global threat categories (IUCN): LC: Least Concern, NT: Near Threatened, VU: Vulnerable, EN: Endangered, and CR: Critically Endangered.

Figure 3

Figure 4. Number of observations made by citizen scientists of birds with different feeding behaviour (top left) and vertical strata (top right) and the distribution of model residuals for different categories of feeding behaviour (bottom left) and vertical strata (bottom right) for Atlantic Forest endemic birds. The number of observations and the residuals are shown at a logarithmic scale.

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Author comment: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R0/PR1

Comments

Dear Prof Brook and Dr Alroy,

We would like to submit our manuscript “Global threat status, rarity and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets” for consideration in Extinction. This study was conducted with the help of undergraduate and graduate students at a Brazilian university and uses citizen-science data. We believe that it would fit under the main topic of diversity loss of the journal.

We declare that this work is not under consideration by any other journal and it is original work of the authors. Also, as none of the authors have received any funding to conduct this research, nor we have any funding to publish, we are submitting this work under the following statement on the journal webpage: “Any APCs not covered by one of the above options will be waived in full for all articles submitted before 31 December 2023.”

Sincerely,

Judit Szabo, PhD

On behalf of all authors.

Recommendation: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R0/PR2

Comments

Dear Dr. Szabo,

Thank you for submitting your manuscript for consideration by Cambridge Prisms - Extinction. Both reviewers were very positive about your study, but had a number of suggestions to improve the clarity of the manuscript. However, these suggestions constitute a minor revision in my opinion. I look forward to receiving a revised version that addresses their suggestions along with a detailed cover letter explaining how you addressed them.

Best wishes,

Kate Lyons

Decision: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R0/PR3

Comments

No accompanying comment.

Author comment: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R1/PR4

Comments

Dear Dr Lyons,

Thank you for giving us the chance to review our manuscript. Please see the revised manuscript and our response to the reviewers’ comments below (in italics).

Handling Editor: Lyons, Kate

Comments to the Author:

Dear Dr. Szabo,

Thank you for submitting your manuscript for consideration by Cambridge Prisms - Extinction. Both reviewers were very positive about your study, but had a number of suggestions to improve the clarity of the manuscript. However, these suggestions constitute a minor revision in my opinion. I look forward to receiving a revised version that addresses their suggestions along with a detailed cover letter explaining how you addressed them.

Best wishes,

Kate Lyons

Reviewer(s)' Comments to Author:

Reviewer: 1

Comments to the Author

Dear Dr Lucas Forti and co-authors,

You have produced an interesting and important work on citizen science data of bird species endemic from the Brazilian Atlantic Forest. This highly threatened biome requires information like that to better know and propose conservation actions regarding its biodiversity.

In general, the manuscript is well written and organised. The methods and analyses were well done. Results are interesting and the Discussion deals with several important points.

I made some comments and suggestions trying to improve its quality.

Thank you. We addressed all of your concerns and recommendations.

Impact statement.

You have not talked about estimated abundance here (lines 14 to 20).

We have rephrased this sentence to include estimated abundance.

Abstract

OK

Introduction

Line 50. This paragraph is too long.

We have divided the paragraph as recommended, starting a new paragraph where the reviewer suggested.

Line 60. Maybe start a new paragraph here with eBird...

Done

Line 60-86. Here you presented major objectives and characteristics of the 3 platforms. OK, but you presented numbers for iNaturalist but not for the others. Try to make equal.

We have included more information for the other platforms as well.

Line 71: not only behavior, but breeding, migration, diet....data from eBird and iNaturalist also can help with this. Some rewriting might help.

We have extended this section. Lines 79-82: “Among other topics, this database has been used to study species distribution and migration (Atwood 2023; Cunha, Lopes, and Selezneva 2022), behaviour (de Souza et al. 2022; Tubelis et al. 2022; Tubelis and Sazima 2020), diet (Schneider et al. 2023), and species interactions (Bosenbecker et al. 2023).”

Line 79. I suggest starting a new paragraph as you presented the 3 platforms, and now is dealing in a general way.

We have started a new paragraph here

I suggest the addition of two 2021 papers in the Introduction (and later in the Discussion):

Frontiers in Ecology and Evolution 9,624587

Perspectives in Ecology and Conservation 19(2), pp. 171-178

There is now a new paragraph in the introduction in lines 51-55: “Birds in particular are highly threatened in the Atlantic Forest – five to seven bird species have likely been driven to extinction in the wild in this biome and a further nine are Critically Endangered (Develey and Phalan 2021). Fortunately, this group is also popular for observation, as besides paid scientists, 30-40,000 Brazilian birdwatchers are known to generate information for bird conservation (Develey 2021).”

We also cite the two suggested references in the discussion (lines 214-220): “With habitat protection and recovery and restoration, ongoing monitoring is more important than ever (Develey and Phalan 2021). Up-to-date population size and range can inform us whether these actions are sufficient, or other measures, such as predator control, translocations, or ex-situ management need to be applied (Develey and Phalan 2021). Bird observation has improved the attitude of the Brazilian public towards biodiversity, promoting bird conservation and increasing knowledge about Brazil’s birds (Develey 2021).”

And in lines 273-275: “In spite of many recent reforestation initiatives (https://pactomataatlantica.org.br/), endemic bird species are still declining (Develey and Phalan, 2021). The extent of protected areas is also relatively low, only covering 2% of the original area with native vegetation (Tabarelli et al. 2005).”

Study Area

This section is missing. I suggest you add a section explaining major aspects of the Atlantic Forest in Brazil: extension, terrain, climates, the major causes of threat to biodiversity. Major aspects of its avifauna, total species richness, number of endemic species, predominance of forest birds, threatened species. Brazilians might know this, but overseas readers maybe not.

We have now added a section in lines 257-276: “Study Area: Our study was conducted in the Atlantic Forest, which is the second largest tropical forest in South America behind the Amazon. The Atlantic Forst extends along the entire Brazilian coast and contains large human population centers, such as São Paulo, Rio de Janeiro and Salvador (Marques and Grelle 2021). A complex topography covers a wide range of elevations from 0 m to almost 3000 m a.s.l. and different substrates contribute to an intricate vertical stratification, creating microhabitats for a highly diverse biota (Morellato and Haddad 2000; Ramalho 2004). Its vegetation is a complex of evergreen, deciduous and semi-deciduous forests, and also contains mangroves, dunes and high-altitude fields (Ribeiro et al. 2011). These characteristics resulted in centers of endemism for multiple taxa and made the Atlantic Forest highly biodiverse (da Silva and Casteleti 2003; da Silva, de Sousa, and Castelletti 2004). Given its large extension, many areas are still poorly studied (Marques and Grelle 2021). Starting with the Portuguese colonization of Brazil, almost 500 years ago, anthropogenic pressures reduced the extent of native vegetation in the Atlantic Forest to 7.6% of its original extent (Marques and Grelle 2021). Deforestation rates were historically driven by clearing for sugar cane and coffee plantations (Dean 2002). Although habitat destruction has slowed down, climate change and the fragmentation of forest remnants still represent a major threat to the biodiversity of this biome (de Lima et al. 2020; SOS Mata Atlântica/INPE 2018). In spite of many recent reforestation initiatives (https://pactomataatlantica.org.br/), endemic bird species are still declining (Develey and Phalan, 2021). The extent of protected areas is also relatively low, only covering 2% of the original area with native vegetation (Tabarelli et al. 2005).”

Results and Discussion (Main Text)

The results are interesting.

Figure 1. Its caption should not start with “A)”. I suggest you start with "Number of observations.....platforms according to A) the distribution.....; and B) the global...

Changed as suggested.

Figure 2. It is difficult to distinguish the blue and green dots, and the two pinkish ones.. Its caption: species names should be in italics.

Changed as suggested.

Figure 3. This type of information is not in your objectives (biomass). You have to incorporate it.

Done. See lines 113-116: “We study the relationship between the distribution (extent of occurrence) and estimated abundance and biomass of species with the number of observations made by citizen scientists, compiled from three major citizen science platforms containing data on birds in Brazil.”

Figure 4. Similar. Extent of occurrence and body mass (=total biomass ?; fig 3) are not in the objectives.

Done. See lines 113-116: “We study the relationship between the distribution (extent of occurrence) and estimated abundance and biomass of species with the number of observations made by citizen scientists, compiled from three major citizen science platforms containing data on birds in Brazil.”

Figure 5. Similar with Feeding behavior and Life History (vertical strata or similar would be better). Life history includes feeding behavior.

Done. “The number of observations made by citizen scientists of birds with different feeding behaviour (top left) and vertical strata (top right) and the distribution of model residuals for different categories of feeding behaviour (bottom left) and vertical strata (bottom right) for Atlantic Forest endemic birds. The number of observations and the residuals are shown at a logarithmic scale”

Discussion

The authors started dealing with aspects of the Atlantic Forest (well), and then discussed about the importance of citizen science platforms worlwide, mentoning advantages, bias, limitiations. I consider that it is of good value.

References

Tobias et al. 2022 was cited some times but it is not in the References section.

We have now included this reference.

Some of the references are nor properly formatted: Ex. line 371, TAXON. It is better to check again.

We have checked the formatting.

I wish success.

Thank you.

Reviewer: 2

Comments to the Author

This manuscript evaluates the utility of citizen science datasets for assessing the distribution and abundance of Atlantic Forest bird species. Given the increasing availability and use of citizen science data this is an important area of investigation. The paper is overall well written but additional information on the methods is needed.

Thank you. We have added information to the methods and tested some statements.

Line 131 – was this not tested statistically?

We have now included a statistical test. Lines 134-145: “We found positive correlations between the range of species distribution, their extent of occurrence and their estimated abundance (see raw data in Supplementary Table 1). The size of the distribution range and threat status of the species affected the number of observations made by citizen scientists (Figure 1). The main model (AIC = 3835.317; r2 = 0.50; REML = 255.6) had a positive value for the estimated coefficient (estimate = 0.21073; t-value = 5.312; p = 3.32*10-07) for the number of observations due to the range of species distributions, even when controlling for family and threat status. These two random factors retained a large proportion of the variation in the residuals, and the value for threat status (SDthreat = 0.3027) was higher than the value for family (SDfamily = 0.1473) with SDresidual = 0.4054. In spite of this, we did not identify significant interaction between range and threat status in their effect on the number of observations (Table 1). Visually, higher distribution range led to more observations within threat categories (Figure 2), however this relation was only significant for Vulnerable species (Table 1).”

See also Table 1. “Results of a generalized linear model (r2 = 0.5288) predicting the number of observations of 214 endemic Atlantic Forest birds (logarithmic value) with interaction between the logarithm of the distribution range and threat status of species, SE – standard error, iuncEN, LC, NT, VU are global threat categories based on IUCN (2022). * indicates significance at 0.05 and *** at 0.001 levels”

Line 161 – “somehow” please rephrase.

We have deleted this word.

Line 192 – the term “attendance-only” needs explanation. I presume it is unstructured recording.

We have rephrased: “For example, a promising new approach involves simultaneous modelling of presence-only data alongside standardized count or presence/absence data in so-called integrated distribution models (Dorazio 2014, Fithian et al. 2015, Pacifici et al. 2017).”

Line 227 – delete “Anyway”.

We have deleted this word.

Line 268 – “…calculated based on BirdLife…”

Corrected.

Methods – the structure of the statistical models that were fit are not completely clear making assessment of their suitability challenging. Please can the model structure or code be provided here or in the Supplementary Materials so that model suitability can be assessed.

We have provided the code and extended the description of the methods.

Recommendation: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R1/PR5

Comments

Dear Dr. Szabo,

Thank you for submitting your revised manuscript to Cambridge Prisms: Extinction. One of the previous reviewers has read the new version and has some concerns about the mixed effects models discussed in the text. There appear to be two separate issues. The first is that some analyses that are described as mixed effects models are actually linear models based on the submitted code. The second concerns the models fitted with an interaction. Some additional sensitivity analyses would be useful to evaluate the robustness of that model.

I’d like to see a revised manuscript that clarifies the issues with the descriptions of the analyses in the methods and what is presented in the figures and also explores the robustness of the model with the interaction.

Best wishes,

Kate Lyons

Decision: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R1/PR6

Comments

No accompanying comment.

Author comment: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R2/PR7

Comments

Re:

EXT-23-0023.R1 entitled “Global threat status, rarity and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets” submitted to Cambridge Prisms: Extinction

Dear Dr Lyons,

Thank you for giving us the chance to revise our manuscript. We have now rerun the models as requested. The updated model is included in Appendix 3. We also addressed the other points raised by the reviewers and also made minor edits throughout the entire manuscript to improve its language. Please see our detailed comments to the reviewers’ comments below.

Reviewer: 1

Comments to the Author

The changes to the manuscript provide much improvement and overall, it reads well and highlights many important points and considerations. The specific points below however still need to be addressed, particularly the issues with the statistical analysis.

Line 29 – I am not sure about the use of independently here. The figures show an interaction although this may not be statistically significant, I think independent is a strong conclusion based on the limitations of the model. It could be said that the pattern holds for all groups instead.

R.: Corrected. See lines 28-29, we changed the text to: “Species with larger distribution ranges had more observations than species with more restricted ranges in all global threat status categories.”

Line 138 – p value can just be given as < 0.01

R.: Done.

Line 144 – “Visually, higher distribution range led to more observations within threat categories (Figure 2), however this relation was only significant for Vulnerable species (Table 1)”. I am not sure of this interpretation. To me table 1 shows a significant positive slope estimate for the effects of range size on number of observations. It also indicates the VU species have a significantly higher y intercept than CR species (CR is the intercept level as R assigns the first alphabetically, other results would need post-hoc contrasts). The interaction term shows that IUCN category does not significantly influence the range size slope, hence the positive relationship holds across threat categories.

R.: Thank you for calling our attention to it. We have now adjusted the sentence in line 143-147:

“A larger distribution range seemed to result in more observations within threat categories (Figure 2), however this relation was only significant for the general dataset and for Vulnerable species (Table 1). Based on the interaction term, IUCN status did not significantly influence the slope of the range size, hence the positive relationship held true across threat categories.”

Line 343 – was the correlation between IUCN status and the other variables checked as range size etc contribute to IUCN assessment?

R.: We assigned IUCN status as a random factor in the distribution range model, because we found significative differences of range size and biomass among IUCN status and also families. The results of a linear model testing the effects of these variables on distribution range are now available in Supplementary Table 3.

Line 367 – In the code I cannot see a model with explanatory variables of biomass and IUCN category that allows an interaction in the way depicted in Figure 3. The methods discuss mixed effects models but Figures 2 and 3 and Table 1 show results for models where the slope (as well as the intercept) differs between IUCN categories. The mixed effects models only fit a random intercept (1|iucn) and not a random slope random intercept model (range|iucn). I can see that mod4 allows the slope to differ by IUCN categories (I presume this is what is reported in Table 1). This is however a linear model not a linear mixed effects model.

R.: We now included a new mixed effect model for estimated total biomass controlled only by IUCN status as requested to represent what is present in the figure 3. See lines 149 to 154: “However, based on a visual analysis of the residuals and the results of another mixed effect model for estimated total biomass controlled only by IUCN status, it had a worse fit than the previous model (REML = 106.8, estimated coefficient = 0.1379, r2 = 0.329, and p = 0.018), with different patterns for different threat categories. The effect was negative for Critically Endangered and Least Concern species and positive for the rest, i.e., higher estimated biomass led to more observations (Figure 3).”

We also tried to fit a random slope random intercept model (range|iucn) as requested by the reviewer, however, this model resulted in singular fit.

I also have concerns about the models fitted with the interaction. IUCN category would be expected to correlate with biomass and range size. Figures 2 and 3 show that the range on the x axes and the number of points differ between the IUCN categories. Particularly for LC in Figure 2 it is unclear how well the model represents the data. To test the robustness of the results I would suggest running separate models for each IUCN category. Given the complications it is not clear to me if sharing information between IUCN categories is useful here. At least some discussions of the limitations here would be needed.

R.: In this revised version we include results of the effect of IUCN status, as well as the effect of families on range size and estimated total biomass to explain the use of these variables as random factors. See the lines 350 to 352: “We used these two variables as random factors, because both were correlated with the distribution range and estimated total biomass (Supplementary Table 3).” All IUCN categories showed significative differences and details of the results are shown in Supplementary Table 3. These analyses provide better support for Figures 2 and 3.

Recommendation: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R2/PR8

Comments

Dear Dr. Szabo,

Thank you for submitting your revised manuscript for consideration by Cambridge Prisms - Extinction. I appreciate the efforts you have made to improve your manuscript in response to the reviewer comments. However, the reviewer still has concerns about the statistical methods and modeling that need to be addressed. I look forward to seeing a revised version along with a detailed cover letter that explains how you addressed the reviewer’s remaining concerns.

Best wishes,

Kate Lyons

Decision: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R2/PR9

Comments

No accompanying comment.

Author comment: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R3/PR10

Comments

Dear Editor, Please see our revised manuscript and the response to reviewers attached. We appreciate the effort you and the reviewers have put into these revisions.

Recommendation: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R3/PR11

Comments

Dear Dr. Szabo,

Thank you for your efforts in responding to the reviewer comments. I am pleased to recommend your manuscript for publication in Cambridge Prisms-Extinction.

Best wishes,

Kate Lyons

Decision: Global threat status, rarity, and species distribution affect prevalence of Atlantic Forest endemic birds in citizen-collected datasets — R3/PR12

Comments

No accompanying comment.