Hostname: page-component-586b7cd67f-tf8b9 Total loading time: 0 Render date: 2024-11-23T14:56:03.990Z Has data issue: false hasContentIssue false

Woolly apple aphid Eriosoma lanigerum Hausmann ecology and its relationship with climatic variables and natural enemies in Mediterranean areas

Published online by Cambridge University Press:  22 October 2014

Jaume Lordan*
Affiliation:
IRTA – Fruitcentre, Parc Científic i Tecnològic Agroalimentari de Lleida. Parc de Gardeny, edifici Fruitcentre, 25003 Lleida, Spain
Simó Alegre
Affiliation:
IRTA – Fruitcentre, Parc Científic i Tecnològic Agroalimentari de Lleida. Parc de Gardeny, edifici Fruitcentre, 25003 Lleida, Spain
Ferran Gatius
Affiliation:
IRTA – Fruitcentre, Parc Científic i Tecnològic Agroalimentari de Lleida. Parc de Gardeny, edifici Fruitcentre, 25003 Lleida, Spain
M. José Sarasúa
Affiliation:
IRTA – Fruitcentre, Parc Científic i Tecnològic Agroalimentari de Lleida. Parc de Gardeny, edifici Fruitcentre, 25003 Lleida, Spain
Georgina Alins
Affiliation:
IRTA – Fruitcentre, Parc Científic i Tecnològic Agroalimentari de Lleida. Parc de Gardeny, edifici Fruitcentre, 25003 Lleida, Spain
*
*Author for correspondence E-mail:[email protected]; [email protected]
Rights & Permissions [Opens in a new window]

Abstract

A multilateral approach that includes both biotic and climatic data was developed to detect the main variables that affect the ecology and population dynamics of woolly apple aphid Eriosoma lanigerum (Hausmann). Crawlers migrated up and down the trunk mainly from spring to autumn and horizontal migration through the canopy was observed from May to August. Winter temperatures did not kill the canopy colonies, and both canopy and root colonies are the source of reinfestations in Mediterranean areas. Thus, control measures should simultaneously address roots and canopy. European earwigs Forficula auricularia (Linnaeus) were found to reduce the survival of overwintering canopy colonies up to June, and this can allow their later control by the parasitoid Aphelinus mali (Haldeman) from summer to fall. Preliminary models to predict canopy infestations were developed.

Type
Research Papers
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/3.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
Copyright © Cambridge University Press 2014

Introduction

Woolly apple aphid (WAA), Eriosoma lanigerum (Hausmann) (Hemiptera: Aphididae), is a worldwide pest of apple Malus domestica (Borkhausen). It is a native of North America, where the American elm Ulmus americana (Linnaeus) (Urticales: Ulmaceae) is the primary host and apple the secondary one; in the absence of the primary host it develops on apple throughout the year.

The biology of WAA has been widely studied in the USA (Hoyt & Madsen, Reference Hoyt and Madsen1960; Walker, Reference Walker1985; Walker et al., Reference Walker, Hoyt, Carroll and Tangren1988; Brown & Schmitt, Reference Brown and Schmitt1994; Beers et al., Reference Beers, Cockfield and Fazio2007,  Reference Beers, Cockfield and Gontijo2010), New Zealand (Alspach & Bus, Reference Alspach and Bus1999; Sandanayaka & Bus, Reference Sandanayaka and Bus2005), Australia (Asante et al., Reference Asante, Danthanarayana and Cairns1993; Asante, Reference Asante1994, Reference Asante1999) and South Africa (Pringle & Heunis, Reference Pringle and Heunis2001, Reference Pringle and Heunis2008; Heunis & Pringle, Reference Heunis and Pringle2006; Damavandian & Pringle, Reference Damavandian and Pringle2007;). However, little information is available in Europe (Theobald, Reference Theobald1921; Evenhuis, Reference Evenhuis1958), especially in Mediterranean areas.

This aphid colonizes roots and sites on the trunk and branches that have been previously injured, and can also colonize undamaged current year shoots (Childs, Reference Childs1929; Weber & Brown, Reference Weber and Brown1988; Brown et al., Reference Brown, Glen and Wisniewski1991; Asante et al., Reference Asante, Danthanarayana and Cairns1993; Asante, Reference Asante1994; Pringle & Heunis, Reference Pringle and Heunis2001; Beers et al., Reference Beers, Cockfield and Gontijo2010). WAA is distributed irregularly across the orchard, gathering on given trees or along isolated rows (Asante et al., Reference Asante, Danthanarayana and Cairns1993). The principal dispersion method between trees involves first instar nymphs (crawlers), which are transported by orchard management practices, migration or wind (Schoene & Underhill, Reference Schoene and Underhill1935; Nel, Reference Nel1983; Walker, Reference Walker1985).

Several studies have linked canopy infestations with the upward movement of crawlers from the roots, suggesting that the root colonies are the constant source of canopy infestations (Theobald, Reference Theobald1921; Nel, Reference Nel1983; Heunis & Pringle, Reference Heunis and Pringle2006). This can be especially important in areas where canopy colonies are highly affected by low winter temperatures (Walker, Reference Walker1985), but the role that these cold temperatures may have on canopy colonies in Mediterranean areas has not been checked.

The increase in WAA outbreaks appears to be associated with changes in pesticide programs and the disruption of biological control (Gontijo et al., Reference Gontijo, Cockfield and Beers2012). Information on the efficacy of WAA parasitoid Aphelinus mali (Haldeman) (Hymenoptera: Aphelinidae) to control arboreal populations is contradictory. Therefore, while in warmer regions, such as Brazil, no chemical control is necessary due to high parasitism rates (Monteiro et al., Reference Monteiro, Souza and Belli2004), under cool climatic conditions A. mali is not effective in preventing economic damage (Asante & Danthanarayana, Reference Asante and Danthanarayana1992; Heunis & Pringle, Reference Heunis and Pringle2006). Predators such as ladybird beetles (Coleoptera: Coccinellidae), lacewings (Neuroptera: Chrysopidae), hoverflies (Diptera: Syrphidae), earwigs (Dermaptera: Forficulidae) and spiders (Araneae) are reported to be WAA predators; of these, earwigs are cited as the most important (Mueller et al., Reference Mueller, Blommers and Mols1988; Asante, Reference Asante1995, Reference Asante1997; Short & Bergh, Reference Short and Bergh2004; Nicholas et al., Reference Nicholas, Spooner-Hart and Vickers2005; Gontijo et al., Reference Gontijo, Cockfield and Beers2012). However, very few data are available on the efficacy of earwigs to control WAA in the Mediterranean area.

Aims of this study were to know the ecology of WAA in Mediterranean areas, the winter survival of the canopy colonies and the role that natural enemies may play in such areas in order to improve WAA control. A multilateral approach that includes both biotic and climatic data was developed to detect the main variables that affect WAA ecology and population dynamics.

Materials and methods

Study orchards

Trials were performed in three apple orchards located in Catalonia (NE Spain): les Borges Blanques (BB) (41°30′23.06″N; 0°51′05.93″E), Mollerussa (MO) (41°36′51.13″N; 0°52′22.75″E) and Ivars d'Urgell (IU) (41°41′06.19″N; 0°58′06.09″E). The climate is semi-arid Mediterranean, with a mean annual rainfall of 350 mm. All the orchards had major infestations of WAA and were under organic management. The orchards were treated with pesticides as follows: Azadirachtin, maximum twice a year around the end of March–April to control rosy apple aphid (Dysaphis plantaginea (Passerini), Hemiptera: Aphididae), before WAA aerial infestations (AIs) initiate their development; granulosis virus in April and May against codling moth (Cydia pomonella (L.), Lepidoptera: Tortricidae); and lime sulfur from April to May to control apple scab (Venturia inaequalis Cooke). In addition, to control codling moth, Spinosad was applied twice to IU in June and July 2012.

BB was an IRTA (Institute of Research and Technology, Food and Agriculture) experimental orchard of ‘Fuji Kiku 8’ apple grafted onto M9, planted in 2003, and trained to a central leader with a spacing of 4×1.4 m. MO was a commercial orchard of ‘Golden Smoothee’ apple grafted onto M9, planted in 1985, and trained to a double-axis system with a spacing of 4×1.2 m. IU was a commercial orchard of ‘Golden Smoothee’ apple grafted onto M9, planted in 1993, and trained to a central leader with a spacing of 4×1.1 m. BB and MO were drip-irrigated, whereas IU was flood-irrigated.

Hourly climatic variables such as maximum temperature (Tmax, °C), minimum temperature (Tmin, °C), number of hours above or below several temperature thresholds (h>20 °C,  25 °C, <10 °C and <7 °C), minimum relative humidity (rh min%), solar radiation (Sun, W m−2), rainfall (Rain, mm) and wind speed (Wind, m s−1), were obtained from the closest automatic weather station of the Meteorological Service of Catalonia (Meteocat, Departament de Territori i Sostenibilitat, Generalitat de Catalunya). For BB, data were obtained from the Castelldans station 8.5 km away, for IU from the Castellnou de Seana station 3 km away and for MO from the Mollerussa station 0.5 km away.

Crawler movement

To assess crawler movement from root and aerial colonies, 50 trees with WAA infestations were selected in each orchard. BB was sampled for 3 years (2010–2012), whereas MO and IU were sampled for two (2011–2012).

Upward (from root colonies) (Up) and downward (from aerial parts) (Down) crawler movement was evaluated weekly in 20 trees over the whole year. Of these trees, 10 were consistently included in the evaluation, whereas the other 10 rotated every week, being repeated every 4 weeks in order to minimize interference with WAA phenology.

For each tree, two 2.5-cm-wide adhesive tapes (Tesa Tape S.A.; Argentona, Spain) placed 3 cm apart were wrapped around the trunk above the graft union. A thin bead (1.5-cm-wide) of insect trapping medium (Tree Tanglefoot; the Tanglefoot Company, Grand Rapids, MI) was centered along each tape. Aphids moving up from the root colonies were trapped on the lower tape, while those moving down from the canopy were trapped on the higher one. Tapes were replaced weekly throughout the year, and WAA number on each tape was visually estimated by a qualitative index of six categories. This index was developed through a geometrical scale (a n =a·rn −1) where r=3, a=4 and n is from 2 to 7 (table 1). The use of this scale allowed us to adopt the same index category regardless of trunk diameter. For data analysis, categories were transformed to the mean aphid number of each interval (table 1).

Table 1 Interval and mean number of aphids for each category according to the qualitative index.

In addition, the numbers of A. mali and the most abundant predators, such as spiders, earwigs and velvet mites (Trombidiformes: Trombidiidae), trapped on each tape were recorded as an indicator of presence. Given that earwigs are considered the most important predator of WAA and we were unsure whether the tapes would trap them, their number was also assessed by means of shelters. For this purpose, we set up 10 earwig shelters on the second scaffold limb of 10 different trees randomly selected within the infested ones in each orchard. According to Lordan et al. (Reference Lordan, Alegre, Blanco, Sarasúa and Alins2014), the shelters were prepared by rolling a piece of corrugated cardboard into a cylinder (12 cm height×9 cm diameter), which was protected from rain and adverse conditions by a PVC tube (15 cm height×9.5 cm diameter). Similar shelters have been used in studies of European earwigs elsewhere (Phillips, Reference Phillips1981; Helsen et al., Reference Helsen, Vaal and Blommers1998; Solomon et al., Reference Solomon, Fitzgerald and Jolly1999; Burnip et al., Reference Burnip, Daly, Hackett and Suckling2002; Gobin et al., Reference Gobin, Marien, Davis and Leirs2006; Logan et al., Reference Logan, Maher, Connolly and Pettigrew2007; He et al., Reference He, Wang and Xu2008; Moerkens et al., Reference Moerkens, Leirs, Peusens and Gobin2009). Every week throughout the year, we counted the number of earwigs per shelter. After counts, the insects were released at the base of the assessed tree.

Horizontal movement between trees through the canopy (C) was assessed fortnightly from May to December 2012. In each orchard, 10 of the trees used to assess the crawler movement were included. Five of these were permanently taped, while the other five were those taped every 4 weeks. One glue tape (described above) per tree was wrapped around a branch that was in contact with branches of a neighbor tree; these branches were randomly selected for every assessment. The tapes were removed 1 week later and aphids were individually counted under a stereomicroscope.

WAA AI and parasitism

This study was carried out from May through December for 2 years (2011–2012). To assess the canopy infestation, 20 trees per orchard were used. Ten trees with permanent trunk tapes used to evaluate crawler movement (section above) were included, together with another 10 WAA-infested trees that had never been trunk-taped. For each tree, five shoots were randomly selected. Every 2 weeks, the total length of the shoot and the length occupied by WAA were measured to calculate the percentage of the AI. The percentage of infested shoots (IS) was evaluated at the same time. Also, the percentage of the length of each colony parasitized by A. mali (parasitism) was assessed visually using a qualitative scale (<10, 10–50, 51–90% and >90%). The mean value for each category was used to represent and analyze parasitism. In each orchard, the same 20 WAA-infested trees were used during the 2 years of evaluation.

Winter survival of WAA aerial colonies

This study was carried out in the BB orchard in 2012. At the beginning of February, the coldest month in our area, 75 shoots that had similar levels of WAA infestations the previous summer were selected. Of these, 25 were covered with a cloth bag to exclude natural enemies and WAA recolonization, 25 were glue-taped (trapping medium) at the base to prevent WAA recolonization, and the other 25 were used as controls. The glue was checked regularly to ensure its effectiveness. At the end of June, when aerial colonies reach their maximum development, AI was evaluated. The air temperature inside and outside the cloth bag was recorded by data loggers (Testo 177-T4; Testo AG; Lenzkirch, Germany) over 3 weeks in February. For this purpose, five control shoots and five shoots covered by a cloth bag were randomly selected, and a temperature sensor was placed on each one.

Data analysis

The annual cumulative number of aphids captured moving up and down was analyzed per year within orchards by one-way ANOVA; data were log-transformed and ANOVA assumptions (normality and homoscedasticity) were confirmed before analysis. Tukey-HSD tests were used to compare means. The number of aphids captured on trees that were permanently taped and trees that were included in the evaluation every 4 weeks was log-transformed and analyzed by a non-parametric Wilcoxon test. To evaluate AI at the end of the winter survival trial, data were tested for significance by a non-parametric Kruskal–Wallis test, and the Steel–Dwass method was used to separate treatments. These non-parametric tests were used because the ANOVA assumptions were violated. Temperature inside and outside the shoot bags was analyzed by one-way ANOVA. Data were analyzed using the JMP statistical software package (Version 9; SAS Institute Inc., Cary, North Carolina).

Multivariate projection methods were applied to simultaneously analyze biotic and abiotic variables. For this purpose, we used the following variables for each orchard and year: the weekly number of aphids captured on the bands (Up, Down and C), the accumulated number of aphids captured each week (Up ac and Down ac), the AI, IS, the mean values of the classes of parasitism, the number of earwigs and A. mali individuals captured on the bands (EarwC and MaliC, respectively), and the number of earwigs present in shelters (EarwP). For every week that crawler movement and AI were evaluated, a mean value of each climatic variable was calculated, with the exception of rainfall, for which accumulated rain was used. All the variables were analyzed in the same matrix.

We performed a PCA and a regression model by PLS for one-dependent variable (PLS-1) and two dependent variables (PLS-2). Regression procedures by means of PLS-1 methods were carried out to predict the Up and Up ac variables, whereas the AI and IS variables were studied together by means of a PLS-2 technique. According to their contribution to explain the overall variance in the PCA and to the easiness to obtain them, the X-variables used to construct the PLS-1 were: MaliC, Parasitism, Tmax, Tmin, Wind, Sun, Up, EarwP, rh min%, Rain, h <7 °C and h <10 °C. To construct the PLS-2, the X-variables used were: AI, IS, Parasitism, Up ac, Tmax, Tmin, Wind, Sun, EarwP, rh min%, h <7 °C and h <10 °C. Before analysis, all the data were centered and standardized by dividing each variable by its standard deviation. Both the PCA and PLS models were validated using the full cross-validation method. All these multivariate models were performed using The Unscrambler software (Version 7.6; Camo Process AS, Oslo, Norway).

Results and discussion

Within-tree WAA crawler movement in Mediterranean areas

For all the orchards and years, no differences were observed between trees that were taped every 4 weeks and those taped continuously (data not shown). Therefore, data were pooled for the analysis.

Crawler movement was recorded almost year-round in all the orchards, although with very low number of crawler catches from fall to early spring (fig 1). Peak captures were observed from May to June, and in some years and orchards there seemed to be two annual peaks (fig 1), probably due to fluctuation of the maximum temperatures in summer. These relations are addressed more in detail in the multilateral approach analysis. The up:down ratio of accumulated crawlers was highly variable even in the same orchard (fig 1 and table 2). We observed ratios from 1:1 (IU both years) to 11:1 (BB 2012) (fig 1 and table 2).

Fig 1. Number of woolly apple aphid crawlers captured per tree per week (mean±SEM) throughout the year. Note that crawlers through the canopy are referred to the secondary axis and are present only in 2012.

Table 2. Number (mean±SEM) of annual cumulative woolly apple aphid crawlers per orchard on the lower (Up) and upper (Down) bands.

Column values followed by different letters or asterisk indicate significant differences within orchards, as determined by the Tukey-HSD test (P<0.05).

Although it is difficult to extrapolate the results of three orchards to the whole area, some common aspects can be highlighted. For example, the captures on the trunk tapes, which show the pattern of upward and downward crawler movement, occurred consistently from mid-April to November with a plateau around May–June, while the movement across the canopy was higher from May to August (fig 1). The maximum number of aphids captured per tree over 1 week (1800 upward captures) occurred in BB in 2011 (fig 1B). Analogous results, using similar sampling methods, were found by Beers et al. (Reference Beers, Cockfield and Gontijo2010) in Washington, where crawler movement started in May but diminished considerably after July, and the migration pattern resembled a peak rather than a plateau, with a maximum of 1500 upward crawlers per tree per week. In California, with a similar Mediterranean climate, Hoyt & Madsen (Reference Hoyt and Madsen1960) observed year-round crawler movement and, despite increasing in May and June, the highest level was observed in July and August, declining from September onwards. A year-round migration pattern with peaks in late spring and from late summer to autumn was also reported by Asante (Reference Asante1994) in Australia and by Heunis & Pringle (Reference Heunis and Pringle2006) in South Africa, with the greatest movement occurring from October to December (equivalent to April–June in the Northern hemisphere).

Regarding the captures of crawlers moving through the canopy, the highest captures were from June onwards, following the same pattern as the captures of downward crawlers, and immediately after the peak of upward movement was recorded (fig 1). Asante et al. (Reference Asante, Danthanarayana and Cairns1993) observed that at low infestations the aphid is confined to the trunk and large branches, but disperses to establish colonies on twigs or new lateral growths during peak populations. Taking into account only the movement of crawlers, we could not find a consistent relationship between canopy and root colonies. The same observation was made by Beers et al. (Reference Beers, Cockfield and Gontijo2010) in Washington. Therefore, to detect the main driving variables that explain the dynamics of WAA, a multilateral approach that includes both biotic and climatic data would be more appropriate than trying to separate the contribution of each individual factor.

WAA winter survival and role of natural enemies

In our study, low winter temperatures did not kill aerial colonies of WAA. High AI rates were observed on shoots on which recolonization by crawlers and access of natural enemies were prevented by cloth bags (table 3). Shoot temperature was only 0.7 °C higher in bag-covered shoots than in control ones (F=23.8011; d.f.=1,10606; P<0.0001), and as no differences in AI were observed between shoots without bags (glue and control) and those with bags containing earwigs, bag protection against cold was discarded. Therefore, the effect of subterranean WAA populations on AI is expected to be less significant than in areas where aerial colonies are killed or reduced, for instance in central Washington, where Walker (Reference Walker1985) observed high mortality in winter, or in South Africa, where Heunis & Pringle (Reference Heunis and Pringle2006) stated that AIs originate every year from the roots.

Table 3. Aerial infestation (AI; percentage of shoot length occupied by woolly apple aphid, mean±SEM) at the end of June 2012 for the BB orchard in the winter survival trial.

Values followed by different letters indicate significant differences, as determined by the Kruskal–Wallis test and Steel–Dwass method (P<0.05).

Although no significant differences were observed among control, glue and bags with earwigs, there was a trend suggesting that the less isolated the shoots were, the less AI was found. This observation could be attributed to the difficulty encountered by predators to reach them. Earwigs had entered some of the bags used to assess winter survival (16 of the initial 25) through small holes, probably made by the earwigs themselves. AI was close to 60% on bag-isolated shoots (the remaining nine) and reached only 10% on shoots with earwigs (table 3). The glue at the base of some shoots prevented crawler recolonization, but it was not enough to impede the movement of earwigs. Thus, earwig exclusion on shoots with glue was also discarded. This observation in addition with the temporal coincidence with the maximum crawler movement (table 4), suggests that earwigs could be good candidates as biocontrol agents of WAA in Mediterranean areas. The capacity of earwigs to control WAA populations (Stap et al., Reference Stap, Mueller, Drukker, Van Der Blom, Mols and Blommers1987; Mueller et al., Reference Mueller, Blommers and Mols1988; Nicholas et al., Reference Nicholas, Spooner-Hart and Vickers2005; Helsen et al., Reference Helsen, Trapman, Polfliet and Simonse2007) and their promotion through the use of additional shelters in orchards (Solomon et al., Reference Solomon, Fitzgerald and Jolly1999; Gobin et al., Reference Gobin, Marien, Davis and Leirs2006; Logan et al., Reference Logan, Maher and Connolly2011) has been reported. Moreover, Noppert (Reference Noppert, Smits and Mols1987) and Phillips (Reference Phillips1981) even estimated that a minimum of seven earwigs per tree was necessary to control WAA in apple orchards from Northern Europe.

Individuals of the WAA parasitoid A. mali were detected on the tapes from March to December, but parasitism on the canopy was recorded mainly from July to December (table 4 and fig 2). These observations reinforce the importance of promoting earwigs early in the season to maintain low levels of AI until the levels of parasitism by A. mali take over from summer onwards.

Fig 2. Woolly apple aphid aerial infestation (AI) and parasitism (mean±SEM) for each orchard and year.

Table 4. Crawlers (up, down and canopy), A. mali and predators (earwigs, spiders and velvet mites) trapped on the glue tapes and the AI (mean monthly percentage of the total year data from all the orchards in 2011–2012).

Higher presence is shown by darker cells. Note that parasitism is represented by the mean recorded parasitism (%) for each month of all the years and of all three orchards.

Other WAA predators such as spiders and velvet mites were trapped from March to December (table 4), and due to this extended presence they could be considered candidates as predators of crawlers. Spiders have been reported as important predators of green apple aphid (Aphis pomi L., Hemiptera: Aphididae) and rosy apple aphid in orchards (Wyss et al., Reference Wyss, Niggli and Nentwig1995; Boreau de Roince et al., Reference Boreau de Roince, Lavigne, Mandrin, Rollard and Symondson2013), while velvet mites are barely mentioned as predators of aphids (Helyer et al., Reference Helyer, Cattlin and Brown2003; Marko et al., Reference Marko, Blommers, Bogya and Helsen2008; Sundic & Pajovic, Reference Sundic and Pajovic2012).

The presence of spiders along the season and the temporal succession of earwigs and A. mali, suggests that biological control of WAA can be enhanced in orchards if these natural enemies are promoted or at least not disrupted.

A multilateral approach to the role of biotic and climatic variables on the ecology of WAA

Data from April to September, when WAA population dynamics mainly occurred, were used to construct a PCA. Although the complexity of the data determined nine principal components (PCs) to explain 90% of the variance, the first two PCs were able to explained 57% (39% PC1 and 18% PC2) of the overall variance (fig 3). The most important variables for the definition of the first PC were minimum and maximum temperatures (Tmin, Tmax) and the number of hours above or below several temperature thresholds (h<10 °C, <7 °C, >20 °C, >25 °C) (fig 3), suggesting that these climatic variables may have an important contribution to the WAA ecology. By the use of the diagram of scores, we observed that the variables defined in the direction of maximum information of the data (first PC) were clearly related to the week number of the year (data not shown). The second PC was determined by weekly crawler movement, such as that through the canopy (C), and upward (Up) and downward (Down) displacement, and by the presence of earwigs either on the glue tapes (EarwC) or in the shelters (EarwP) (fig 3). Therefore, as mentioned before, earwigs may decrease WAA number of crawlers moving up, down and through the canopy. The percentage of IS and the percentage of the shoot length occupied by WAA (AI) were highly correlated, and both variables were important in the definition of the first and the second PCs (fig 3). Therefore, as both variables are highly correlated, IS can be used instead of AI to evaluate the level of WAA infestation, as it is much easier to obtain.

Fig 3. Variable loadings represented in the plane defined by the first two principal components. Variables are: the weekly number of aphids captured on the bands (Up, Down and Canopy (C)), the accumulated number of aphids captured each week (Up ac and Down ac), the percentage of aerial infestation (AI), the percentage of infested shoots (IS), the mean values of the classes of parasitism, the number of earwigs and A. mali individuals captured on the bands (EarwC and MaliC, respectively), and the number of earwigs present in shelters (EarwP), climatic variables such as maximum temperature (Tmax, °C), minimum temperature (Tmin, °C), number of hours above or below temperature thresholds (h>20 °C, >25 °C; h<10 °C and <7 °C), minimum relative humidity (rh min%), solar radiation (Sun, W m−2), rainfall (Rain, mm) and wind speed (Wind, m s−1).

The crawler movement through the canopy (C) did not have a close relationship with the AI or IS, nor with the crawler upward (Up) and downward (Down) movement (fig 3). These observations are consistent with the hypothesis mentioned above, that there is not a clear relationship between canopy and root colonies. Peak captures of crawlers moving through the canopy (C) were observed in the warmer months of the year (fig 1); however, with the multilateral approach we cannot confirm a clear correlation of canopy movement with the temperatures, and it may be more related to other variables not yet detected. The variables Up ac and Down ac had a high negative correlation with the number of hours below 10 °C (h<10) and 7 °C (h<7) (fig 3), suggesting that crawlers moving up and down the trunk will be more important when temperatures are higher than 10 °C. Hoyt & Madsen (Reference Hoyt and Madsen1960) also reported that temperatures below 10 °C inhibited crawler movement in laboratory conditions.

We found no clear relation between rainfall (Rain) and relative humidity (rh min %) with crawler movement (Up, Down, C) and canopy infestations (AI or IS) (fig 3). A negative influence of rainfall on crawler migration was observed by Hoyt & Madsen (Reference Hoyt and Madsen1960), Bhardwaj et al. (Reference Bhardwaj, Chander and Bhardwaj1995), and Heunis & Pringle (Reference Heunis and Pringle2006). The lack of correlation that we observed may be explained because in the conditions of our study, maximum crawler captures were observed during the driest weeks of the year, when rainfall was rare, more similar to the conditions in which Beers et al. (Reference Beers, Cockfield and Gontijo2010) performed their study in Washington.

The strong correlation observed between EarwP and EarwC suggests that glue tapes are a practical and efficient means by which to estimate the presence of earwigs in the orchard, without the need for special shelters. The number of A. mali trapped on the tapes (MaliC) appeared to be negatively correlated with rainfall (Rain) and not correlated with parasitism. Many A. mali were found on the tapes at the beginning of spring. This observation could be attributed to these insects emerging from overwintering mummies. The positive correlation found between parasitism and temperatures above 20 °C (fig 3), is consistent with the high rates of parasitism that we recorded from July onwards (fig 2) and with the observations made by Monteiro et al. (Reference Monteiro, Souza and Belli2004) in the warmer climate of Brazil.

Spiders and velvet mites were ruled out as main variables of the PCA as they had a null contribution to the overall explained variance. Wind and solar radiation (Sun) did not make an important contribution to the overall variance as well (fig 3), the study area was not especially windy, and the solar radiation was not limiting in any of the orchards. In contrast, Hoyt & Madsen (Reference Hoyt and Madsen1960) suggested the relevance of solar radiation on daily crawler migration, as they observed the greatest movement in late afternoon and very little during darkness; however, in our analysis this daily dynamic was not observed as we recorded weekly captures.

Regarding the PLS-1 to predict Up, the first two PLS factors explained 52% of the variance of the X-variables and only 26% of the information concerning the Up with a Root Mean Square Error of Prediction (RMSEP) value of 372.94 (data not shown) within a 0–2000 data rank. With these results, the model was considered not to be accurate enough to predict Up. On the other hand, in the PLS-1 method used to predict Up ac, 43% of the information contained in the X-variables explained 74% of the Y information (fig 4A). The latter model showed a coefficient of determination of 0.82 between predictions and reference values, and a RMSEP value of 2504.67 (data rank 0–20 000) to predict the Up ac between April and October. These values suggest that a reliable model can be constructed to predict the accumulated number of crawlers and that variables in addition to Up, such as MaliC, Parasitism, EarwP, Wind, Tmin, Tmax, Sun, rh min, Rain, h<10 and <7 have to be taken into account (fig 4). To reduce the unexplained variance (26%) additional variables not evaluated in this study that could have a direct effect on WAA or through an effect on natural enemies should also be included in the model.

Fig 4. Up ac PLS-1: X and Y loadings represented in the plane defined by the two first PLS factors (A) and predicted versus measured diagram for the regression model of Up ac on the 12 variables analyzed (B). Variables are: the weekly number of aphids captured on the upper band (Up), the accumulated number of aphids captured each week on the upper band (Up ac), the mean values of the classes of parasitism, the number of A. mali individuals captured on the bands (MaliC), the number of earwigs present in shelters (EarwP), climatic variables such as maximum temperature (Tmax, °C), minimum temperature (Tmin, °C), number of hours below temperature thresholds (h<10 °C and <7 °C), minimum relative humidity (rh min%), solar radiation (Sun, W m−2), rainfall (Rain, mm) and wind speed (Wind, m s−1).

In the PLS-2 procedure used to jointly analyze AI and IS, the first two PLS factors explained 51% of the variance of the X-variables and 61% of the Y information (fig 5A). The model obtained had a coefficient of determination of 0.78 between predictions and reference values and an RMSEP value of 2.82 (fig 5B) within a data rank of 0–20. These results were similar to those obtained from the PLS-1 to predict Up ac. The same considerations regarding the way to improve this model would also be suitable in this case. The contribution of earwigs appears again in both PLS-1 and PLS-2 models, with a negative correlation with the number of crawlers cumulated over the year and the canopy infestations (fig 4 and fig 5A).

Fig 5. AI and IS PLS-2: X and Y loadings represented in the plane defined by the two first PLS-factors (A) and predicted vs. measured diagram for the regression model of AI-IS on the 10 variables analyzed (B). Variables are: the accumulated number of aphids captured on the upper band each week (Up ac), the percentage of aerial infestation (AI), the percentage of infested shoots (IS), the mean values of the classes of parasitism, the number of earwigs present in shelters (EarwP), climatic variables such as maximum temperature (Tmax, °C), minimum temperature (Tmin, °C), number of hours below temperature thresholds (h<10 °C and <7 °C), minimum relative humidity (rh min%), solar radiation (Sun, W m−2), rainfall (Rain, mm) and wind speed (Wind, m s−1).

For WAA, only linear models based on temperature (Asante et al., Reference Asante, Danthanarayana and Heatwole1991) or on developmental times (Bodenheimer, Reference Bodenheimer1947; Evenhuis, Reference Evenhuis1958; Bonnemaison, Reference Bonnemaison1965) have been reported. To our knowledge, this is the first approach aimed at modeling canopy infestations and crawler movement of WAA.

Conclusions

The aim of this study was to provide knowledge to improve WAA management in Mediterranean areas. We conclude that both canopy and root colonies are the source of reinfestations in Mediterranean areas, as crawlers migrated upward and downward throughout the year and winter temperatures did not kill the aerial colonies. Therefore, measures of control must be addressed as well on roots as on the canopy.

Earwigs were found to reduce the survival of overwintering canopy colonies up to June. Predation of such colonies by earwigs in early spring is important to maintain them under low levels, allowing their later control by the parasitoid from summer to fall. Therefore, it is important to promote or at least not to disrupt neither earwigs nor A. mali in order to enhance natural control of WAA.

To improve the accuracy of the models in the prediction of canopy infestations, other variables that could affect WAA and/or natural enemies must be included. Further research is needed to determine an infestation threshold in spring to evaluate whether the natural control would be enough or if additional measures must be applied.

Acknowledgements

We thank Germans Coll SL and Fruit Nature SAT for allowing us to work on their orchards and Anna Geli for technical support. This work was funded by the European project Interreg IV-A RED BIO (EFA 10/08). We would also like to thank three anonymous reviewers for their constructive comments, which improved this manuscript.

References

Alspach, P.A. & Bus, V.G.M. (1999) Spatial variation of woolly apple aphid (Eriosoma lanigerum, Hausmann) in a genetically diverse apple planting. New Zealand Journal of Ecology 23, 3944.Google Scholar
Asante, S.K. (1994) Seasonal occurrence, development and reproductive biology of the different morphs of Eriosoma lanigerum (Hausmann) (Hemiptera: Aphididae) in the northern Tablelands of New South Wales. Journal of the Australian Entomological Society 33, 337344.Google Scholar
Asante, S.K. (1995) Functional responses of the European earwig and 2 species of coccinellids to densities of Eriosoma lanigerum (Hausmann) (Hemiptera: Aphididae). Journal of the Australian Entomological Society 34, 105109.Google Scholar
Asante, S.K. (1997) Natural enemies of the woolly apple aphid, Eriosoma lanigerum (Hausmann) (Hemiptera: Aphididae): a review of the world literature. Plant Protection Quarterly 12, 166172.Google Scholar
Asante, S.K. (1999) Seasonal abundance of woolly apple aphid, Eriosoma lanigerum (Hausmann) and its important natural enemies in Armidale, northern New South Wales. Plant Protection Quarterly 14, 1623.Google Scholar
Asante, S.K. & Danthanarayana, W. (1992) Development of Aphelinus mali an endoparasitoid of woolly apple aphid, Eriosoma lanigerum at different temperatures. Entomologia Experimentalis et Applicata 65, 3137.CrossRefGoogle Scholar
Asante, S.K., Danthanarayana, W. & Heatwole, H. (1991) Bionomics and population-growth statistics of apterous-virginoparae of woolly apple aphid (Eriosoma lanigerum) at constant temperatures. Entomologia Experimentalis et Applicata 60, 261270.Google Scholar
Asante, S.K., Danthanarayana, W. & Cairns, S.C. (1993) Spatial and temporal distribution of the Eriosoma lanigerum on apple. Environmental Entomology 22, 10601065.Google Scholar
Beers, E.H., Cockfield, S.D. & Fazio, G. (2007) Biology and management of woolly apple aphid, Eriosoma lanigerum (Hausmann), in Washington state. IOBC-WPRS Bulletin 30, 3742.Google Scholar
Beers, E.H., Cockfield, S.D. & Gontijo, L.M. (2010) Seasonal phenology of woolly apple aphid (Hemiptera: Aphididae) in Central Washington. Environmental Entomology 39, 286294.Google Scholar
Bhardwaj, S., Chander, R. & Bhardwaj, S.P. (1995) Movement of woolly apple aphid (Eriosoma lanigerum) (Homoptera, Pemphigidae) on apple (Malus pumila) plant in relation to weather parameters. Indian Journal of Agricultural Sciences 65, 217222.Google Scholar
Bodenheimer, F.S. (1947) Studies on the physical ecology of woolly apple aphis (Eriosoma lanigerum) and its parasite, Aphelinus mali, in Palestine. Rehoboth Agricultural Experiment Station Bulletin, Palestine 41, 20.Google Scholar
Bonnemaison, L. (1965) Observations ecologiques sur Aphelinus mali Haldeman parasite due puceron lanigere Eriosoma lanigerum Hausmann. Annales de la Societe Entomologique de France 1, 143176.Google Scholar
Boreau de Roince, C., Lavigne, C., Mandrin, J.F., Rollard, C. & Symondson, W.O.C. (2013) Early-season predation on aphids by winter-active spiders in apple orchards revealed by diagnostic PCR. Bulletin of Entomological Research 103, 148154.Google Scholar
Brown, M.W. & Schmitt, J.J. (1994) Population dynamics of woolly apple aphid (Homoptera, Aphididae) in West Virginia apple orchards. Environmental Entomology 23, 11821188.Google Scholar
Brown, M.W., Glen, D.M. & Wisniewski, M.E. (1991) Functional and anatomical disruption of apple roots by the woolly apple aphid (Homoptera: Aphididae). Journal of Economic Entomology 84, 18231826.Google Scholar
Burnip, G.M., Daly, J.M., Hackett, J.K. & Suckling, D.M. (2002) European earwig phenology and effect of understorey management on population estimation. New Zealand Plant Protection 55, 390395.Google Scholar
Childs, L. (1929) The relation of woolly apple aphid to perennial canker infection with other notes on disease. Agricultural Experiment Station Bulletin 243, 331.Google Scholar
Damavandian, M.R. & Pringle, K.L. (2007) The field biology of subterranean populations of the woolly apple aphid, Eriosoma lanigerum (Hausmann) (Hemiptera: Aphididae), in South African apple orchards. African Entomology 15, 287294.Google Scholar
Evenhuis, H.H. (1958) Ecological studies on the woolly apple aphid and its parasite in the Netherlands. Tijdschr. Pl. Ziekten. 64, 1103.Google Scholar
Gobin, B., Marien, A., Davis, S. & Leirs, H. (2006) Enhancing earwig populations in Belgian orchards. Communications in Agricultural and Applied Biological Sciences 71, 269273.Google Scholar
Gontijo, L.M., Cockfield, S.D. & Beers, E.H. (2012) Natural enemies of woolly apple aphid (Hemiptera: Aphididae) in Washington State. Environmental Entomology 41, 13641371.Google Scholar
He, X.Z., Wang, Q. & Xu, J. (2008) European earwig as a potential biological control agent of apple leaf-curling midge. New Zealand Plant Protection 61, 343349.Google Scholar
Helsen, H., Vaal, F. & Blommers, L. (1998) Phenology of the common earwig Forficula auricularia L. (Dermaptera: Forficulidae) in an apple orchard. International Journal of Pest Management 44, 7579.Google Scholar
Helsen, H., Trapman, M., Polfliet, M. & Simonse, J. (2007) Presence of the common earwig Forficula auricularia L. in apple orchards and its impact on the woolly apple aphid Eriosoma lanigerum (Haussmann). IOBC-WPRS Bulletin 30, 3135.Google Scholar
Helyer, N., Cattlin, N. & Brown, K. 2003. Color Handbook of Biological Control in Plant Protection Portland. Oregon, USA, Timber Press.Google Scholar
Heunis, J.M. & Pringle, K.L. (2006) Field biology of woolly apple aphid, Eriosoma lanigerum (Hausmann), and its natural enemy, Aphelinus mali (Haldeman), in apple orchards in the Western Cape Province. African Entomology 14, 7786.Google Scholar
Hoyt, S.C. & Madsen, H.F. (1960) Dispersal behaviour of the first instar nymphs of the woolly apple aphid. Hilgardia 30, 267299.Google Scholar
Logan, D.P., Maher, B.J., Connolly, P.G. & Pettigrew, M.J. (2007) Effect of cardboard shelter traps on predation of diaspidid scale insects by European earwigs, Forficula auricularia, in kiwifruit. New Zealand Plant Protection 60, 241248.CrossRefGoogle Scholar
Logan, D.P., Maher, B.J. & Connolly, P. (2011) Increased numbers of earwigs (Forficula auricularia) in kiwifruit orchards are associated with fewer broad-spectrum sprays. New Zealand Plant Protection 64, 4954.Google Scholar
Lordan, J., Alegre, S., Blanco, R., Sarasúa, M.-J. & Alins, G. (2014) Aggregation behavior in the European earwig: Response to impregnated shelters. Crop Protection 65, 7176.Google Scholar
Marko, V., Blommers, L.H.M., Bogya, S. & Helsen, H. (2008) Kaolin particle films suppress many apple pests, disrupt natural enemies and promote woolly apple aphid. Journal of Applied Entomology 132, 2635.CrossRefGoogle Scholar
Moerkens, R., Leirs, H., Peusens, G. & Gobin, B. (2009) Are populations of European earwigs, Forficula auricularia, density dependent? Entomologia Experimentalis et Applicata 130, 198206.Google Scholar
Monteiro, L.B., Souza, A. & Belli, E.L. (2004) Parasitism on Eriosoma lanigerum (Homoptera: Aphididae) by Aphelinus mali (Hymenoptera: Encyrtidae) on apple orchards, in Fraiburgo County, State of Santa Catarina, Brazil. Revista Brasileira de Fruticultura 26, 550551.Google Scholar
Mueller, T.F., Blommers, L.H.M. & Mols, P.J.M. (1988) Earwig (Forficula auricularia) predation on the woolly apple aphid, Eriosoma lanigerum . Entomologia Experimentalis et Applicata 47, 145152.Google Scholar
Nel, P.J. (1983) Decidious fruits and vines. Pests and diseases and their control. David Philip, Cape Town, 191.Google Scholar
Nicholas, A.H., Spooner-Hart, R.N. & Vickers, R.A. (2005) Abundance and natural control of the woolly aphid Eriosoma lanigerum in an Australian apple orchard IPM program. BioControl 50, 271291.Google Scholar
Noppert, F., Smits, J.D. & Mols, P.J.M. (1987) A laboratory evaluation of the European earwig Forficula auricularia L. as a predator of the woolly apple aphid Eriosoma lanigerum Hausm. Mededelingen van de Faculteit Landbouwwetenschappen Universiteit Gent 52, 413422.Google Scholar
Phillips, M.L. (1981) The ecology of the common earwig Forficula auricularia in apple orchards. PhD Thesis, Department of Agriculture and Horticulture Long Ashton Research Center, Bristol, UK.Google Scholar
Pringle, K.L. & Heunis, J.M. (2001) Woolly apple aphid in South Africa: biology, seasonal cycles, damage and control. Deciduous Fruit Grower 51, 2223, 36.Google Scholar
Pringle, K.L. & Heunis, J.M. (2008) The development of a sampling system for monitoring population levels of the woolly apple aphid, Eriosoma lanigerum (Hausmann), in apple orchards in the Western Cape Province of South Africa. African Entomology 16, 4146.Google Scholar
Sandanayaka, W.R.M. & Bus, V.G.M. (2005) Evidence of sexual reproduction of woolly apple aphid, Eriosoma lanigerum, in New Zealand. Journal of Insect Science 5, 17.Google Scholar
Schoene, W.J. & Underhill, G.W. (1935) Life history and migration of the apple woolly aphis. Technical Bulletin. Virginia Agricultural Experiment Station. Blacksburg. VA 57, 31.Google Scholar
Short, B.D. & Bergh, J.C. (2004) Feeding and egg distribution studies of Heringia calcarata (Diptera : Syrphidae), a specialized predator of woolly apple aphid (Homoptera: Eriosomatidae) in Virginia apple orchards. Journal of Economic Entomology 97, 813819.Google Scholar
Solomon, M., Fitzgerald, J. & Jolly, R. (1999) Artificial refuges and flowering plants to enhance predator populations in orchards. IOBC-WPRS Bulletin 22, 3137.Google Scholar
Stap, J.S., Mueller, T.F., Drukker, B., Van Der Blom, J., Mols, P.J.M. & Blommers, L.H.M. (1987) Field studies on the European earwig (Forficula auricularia L.) as a predator of the woolly apple aphid (Eriosoma lanigerum Hausm). Mededelingen van de Faculteit Landbouwwetenschappen Universiteit Gent 52, 423432.Google Scholar
Sundic, M. & Pajovic, I. (2012) Seasonal abundance and host preference by Allothrombium pulvinum Ewing (1917) (Acari: Trombidiidae) larvae on aphids (Homoptera: Aphididae) of Montenegro, with notes on rate of parasitism and new metric data. Agriculture and Forestry 56, 8594.Google Scholar
Theobald, F.V. (1921) The woolly aphid of the apple and elm. Journal of Pomology 2, 7392.Google Scholar
Walker, J.T.S. (1985) The influence of temperature and natural enemies on population development of woolly apple aphid, Eriosoma lanigerum (Hausmann). PhD Thesis, Pullman, WA.Google Scholar
Walker, J.T.S., Hoyt, S.C., Carroll, D.P. & Tangren, G.V. (1988) Influence of constant and alternating temperatures on woolly apple aphid (Homoptera: Eriosomatidae) and its parasitoid Aphelinus mali (Haldeman) (Hymenoptera: Aphelinidae). Melanderia 46, 3642.Google Scholar
Weber, D.C. & Brown, M.W. (1988) Impact of woolly apple aphid (Homoptera, Aphididae) on the growth of potted apple trees. Journal of Economic Entomology 81, 11701177.Google Scholar
Wyss, E., Niggli, U. & Nentwig, W. (1995) The impact of spiders on aphid populations in a strip managed apple orchard. Journal of Applied Entomology 119, 473478.Google Scholar
Figure 0

Table 1 Interval and mean number of aphids for each category according to the qualitative index.

Figure 1

Fig 1. Number of woolly apple aphid crawlers captured per tree per week (mean±SEM) throughout the year. Note that crawlers through the canopy are referred to the secondary axis and are present only in 2012.

Figure 2

Table 2. Number (mean±SEM) of annual cumulative woolly apple aphid crawlers per orchard on the lower (Up) and upper (Down) bands.

Figure 3

Table 3. Aerial infestation (AI; percentage of shoot length occupied by woolly apple aphid, mean±SEM) at the end of June 2012 for the BB orchard in the winter survival trial.

Figure 4

Fig 2. Woolly apple aphid aerial infestation (AI) and parasitism (mean±SEM) for each orchard and year.

Figure 5

Table 4. Crawlers (up, down and canopy), A. mali and predators (earwigs, spiders and velvet mites) trapped on the glue tapes and the AI (mean monthly percentage of the total year data from all the orchards in 2011–2012).

Figure 6

Fig 3. Variable loadings represented in the plane defined by the first two principal components. Variables are: the weekly number of aphids captured on the bands (Up, Down and Canopy (C)), the accumulated number of aphids captured each week (Up ac and Down ac), the percentage of aerial infestation (AI), the percentage of infested shoots (IS), the mean values of the classes of parasitism, the number of earwigs and A. mali individuals captured on the bands (EarwC and MaliC, respectively), and the number of earwigs present in shelters (EarwP), climatic variables such as maximum temperature (Tmax, °C), minimum temperature (Tmin, °C), number of hours above or below temperature thresholds (h>20 °C, >25 °C; h<10 °C and <7 °C), minimum relative humidity (rh min%), solar radiation (Sun, W m−2), rainfall (Rain, mm) and wind speed (Wind, m s−1).

Figure 7

Fig 4. Up ac PLS-1: X and Y loadings represented in the plane defined by the two first PLS factors (A) and predicted versus measured diagram for the regression model of Up ac on the 12 variables analyzed (B). Variables are: the weekly number of aphids captured on the upper band (Up), the accumulated number of aphids captured each week on the upper band (Up ac), the mean values of the classes of parasitism, the number of A. mali individuals captured on the bands (MaliC), the number of earwigs present in shelters (EarwP), climatic variables such as maximum temperature (Tmax, °C), minimum temperature (Tmin, °C), number of hours below temperature thresholds (h<10 °C and <7 °C), minimum relative humidity (rh min%), solar radiation (Sun, W m−2), rainfall (Rain, mm) and wind speed (Wind, m s−1).

Figure 8

Fig 5. AI and IS PLS-2: X and Y loadings represented in the plane defined by the two first PLS-factors (A) and predicted vs. measured diagram for the regression model of AI-IS on the 10 variables analyzed (B). Variables are: the accumulated number of aphids captured on the upper band each week (Up ac), the percentage of aerial infestation (AI), the percentage of infested shoots (IS), the mean values of the classes of parasitism, the number of earwigs present in shelters (EarwP), climatic variables such as maximum temperature (Tmax, °C), minimum temperature (Tmin, °C), number of hours below temperature thresholds (h<10 °C and <7 °C), minimum relative humidity (rh min%), solar radiation (Sun, W m−2), rainfall (Rain, mm) and wind speed (Wind, m s−1).