Negative symptoms are a fundamental aspect of schizophrenia, closely linked to poor quality of life and ineffective response to treatment.Reference Galderisi, Mucci, Buchanan and Arango1–Reference McCutcheon, Pillinger, Efthimiou, Maslej, Mulsant and Young12 Despite their significance, they are still an unmet need in schizophrenia care, burdening patients, families and healthcare systems.Reference Galderisi, Mucci, Dollfus, Nordentoft, Falkai and Kaiser2,Reference Galderisi, Kaiser, Bitter, Nordentoft, Mucci and Sabé13–Reference Siskind and Yung17 Negative symptoms can be either primary or secondary manifestations of the disease; in the latter scenario, they can be subsequent to positive and depressive symptoms, or extrapyramidal side effects.Reference Galderisi, Mucci, Dollfus, Nordentoft, Falkai and Kaiser2,Reference Giordano, Caporusso, Pezzella and Galderisi6 The conceptualisation of negative symptoms proposed in the early 1900s included two aspects: the reduction of emotional expression and the loss of motivation.Reference Dollfus and Lyne18 Indeed, Eugen Bleuler reported that people with schizophrenia had expressionless faces, were apathetic and lacked the desire to act on their own initiative or at the request of another.Reference Bleuer19 Emil Kraepelin described the presence of emotional apathy and a decline in volitional control in the same population.Reference Kraepelin and Barclay20 Contemporary understanding, stemming from the Measurement and Treatment Research to Improve Cognition in Schizophrenia (MATRICS) initiative developed by the National Institute of Mental Health (NIMH), posits five domains: blunted affect, alogia, avolition, asociality and anhedonia.Reference Kirkpatrick, Fenton, Carpenter and Marder21 Second-generation rating scales, such as the Brief Negative Symptom Scale (BNSS)Reference Kirkpatrick, Strauss, Nguyen, Fischer, Daniel and Cienfuegos22 and the Clinical Assessment Interview for Negative Symptoms (CAINS),Reference Kring, Gur, Blanchard, Horan and Reise23 were developed according to the NIMH-MATRICS consensus statementReference Kirkpatrick, Fenton, Carpenter and Marder21 to provide an accurate assessment of negative symptoms in their quantitative (frequency, duration and intensity) and qualitative aspects (such as differentiation between anticipatory and consummatory aspects of anhedonia or differentiation between behavioural and experiential aspects).Reference Kirkpatrick, Strauss, Nguyen, Fischer, Daniel and Cienfuegos22,Reference Kring, Gur, Blanchard, Horan and Reise23
The evidence base for the two- and five-factor models
The negative symptom structure has been widely investigated and exploratory factor analytic studies supported a two-factor model comprising a motivation and pleasure dimension (MAP, including avolition, asociality and anhedonia) and an expressive deficit dimension (EXP, including blunted affect and alogia).Reference Marder and Galderisi4,Reference Blanchard and Cohen24–Reference Peralta, Gil-Berrozpe, Sánchez-Torres and Cuesta26 This model is consistent with the observation that different behavioural features, neurophysiological bases as well as clinical and social outcomes are associated with the two dimensions.Reference Galderisi, Mucci, Dollfus, Nordentoft, Falkai and Kaiser2,Reference Giordano, Caporusso, Pezzella and Galderisi6,Reference First, Gaebel, Maj, Stein, Kogan and Saunders27–Reference Dumas36
However, evidence from recent multicentre studies utilising confirmatory factor analysis (CFA) has questioned the adequacy of this two-factor model.Reference Ahmed, Kirkpatrick, Galderisi, Mucci, Rossi and Bertolino37–Reference Li, Liu, Zhang, Wang, Hu and Chu43 These studies suggested that a five-factor model or a hierarchical model better fit the data, irrespective of assessment scale, sample nationality/language or stage of illness.Reference Ahmed, Kirkpatrick, Galderisi, Mucci, Rossi and Bertolino37,Reference Chang, Strauss, Ahmed, Wong, Chan and Lee38,Reference Strauss, Nuñez, Ahmed, Barchard, Granholm and Kirkpatrick40,Reference Ahmed, Kirkpatrick, Granholm, Rowland, Barker and Gold42,Reference Li, Liu, Zhang, Wang, Hu and Chu43 These findings indicate that conceptualising negative symptoms in relation to the MAP and EXP dimensions may not capture the complexity of the construct, and support a more complex view of negative symptoms, aligned with the five NIMH-MATRICS consensus domains.Reference Chang, Strauss, Ahmed, Wong, Chan and Lee38,Reference Strauss, Ahmed, Young and Kirkpatrick39,Reference Kring and Barch44–Reference Strauss and Cohen46
Latent structure of negative symptoms
To address the latent structure of negative symptoms has very strong pragmatic implications. For instance, exploratory factor analysis studies supporting the two-factor model have influenced researchers and pharmaceutical companies, resulting in the drafting of clinical and pharmacological research protocols.Reference Watson, Levin-Aspenson, Waszczuk, Conway, Dalgleish and Dretsch30,Reference Kring and Barch44,Reference Messinger, Trémeau, Antonius, Mendelsohn, Prudent and Stanford45,Reference Marder and Kirkpatrick47 However, the two-factor model may prevent the identification of pathophysiological mechanisms or therapeutic effects that are unique to one of the five domains. Further studies are required, as there is some preliminary evidence showing distinct pathophysiological correlates of individual negative symptom domains.Reference Shaffer, Peterson, McMahon, Bizzell, Calhoun and van Erp48
A recent network approach to psychopathology conceptualises disorders as systems of interconnected symptoms.Reference Borsboom49,Reference Epskamp and Isvoranu50 Preliminary studies have used this approach to investigate the structure of negative symptoms across different diagnoses and in terms of treatment response.Reference Strauss, Esfahlani, Galderisi, Mucci, Rossi and Bucci51–Reference Strauss, Zamani Esfahlani, Sayama, Kirkpatrick, Opler and Saoud53 However, the longitudinal stability of this structure remains largely unexamined, especially with second-generation assessment tools aligned with the current conceptualisation.Reference Esfahlani, Sayama, Visser and Strauss54–Reference Griffiths, Leighton, Mallikarjun, Blake, Everard and Jones57
To address this gap, the primary aim of the present study was to delve deeper into the structure of negative symptoms over time, utilising network analysis. This study seeks to investigate the temporal stability of the negative symptom network over a 4-year period in a representative sample of individuals diagnosed with schizophrenia. By doing so, we aimed to enhance our understanding of the interplay and evolution of negative symptoms, ultimately contributing to the development of more targeted and effective treatment strategies.
Method
Participants
This observational prospective study was carried out as part of the Italian Network for Research on Psychoses.Reference Galderisi, Rossi, Rocca, Bertolino, Mucci and Bucci58–Reference Mucci, Galderisi, Gibertoni, Rossi, Rocca and Bertolino61
Participants in the study were community-dwelling individuals with schizophrenia who had been stabilised on antipsychotic medications for at least 3 months before enrolment and were seen consecutively at the out-patient clinics of 24 Italian university psychiatric clinics and/or mental health departments.
Participants were recruited between 1 March 2012 and 30 September 2013. All patients recruited by participating centres at baseline were asked to participate in the follow-up study carried out 4 years after the baseline assessment.
Inclusion criteria were a diagnosis of schizophrenia according to DSM-IV, confirmed with the Structured Clinical Interview for DSM-IV, Patient Version (SCID-I/P), and an age between 18 and 65 years. Given that the SCID includes both mandatory questions that correspond to DSM-IV operational criteria and a diagnostic algorithm, the diagnosis of schizophrenia is assigned when the following criteria are met: ‘The disturbance is not attributable to the physiological effects of a substance (e.g., a drug of abuse, a medication) or another medical condition’.Reference First, Spitzer, Gibbon and Williams62 In doing so physicians, as good clinical practice requires, are supported in the differential diagnoses by investigations (electrocardiograms, blood and urine samples, computed tomography/magnetic resonance imaging, electroencephalograms) as needed.
Exclusion criteria were: (a) history of head injury with loss of consciousness in the 4 years between baseline and follow-up; (b) progressive cognitive decline possibly caused by dementia or other neurological illness diagnosed in the past 4 years; (c) history of alcohol and/or substance misuse in the past 6 months; (d) current pregnancy or nursing; (e) inability to give informed consent; and (f) treatment modifications and/or hospital admission due to symptom exacerbation in the previous 3 months.
The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2008. All procedures involving human subjects/patients were approved by the Ethics Committee ‘Comitato Etico Università degli Studi della Campania ‘Luigi Vanvitelli’ – Azienda Ospedaliera Universitaria ‘Luigi Vanvitelli’ – AORN ‘Ospedali dei Colli’’ on 9 February 2012 (Protocol number 73, baseline study) and on 9 October 2015 (Protocol number 1382, follow-up study). After receiving a comprehensive explanation of the study procedures and goals, each participant gave written informed consent to participate.
Clinical assessment
Evaluation of negative symptoms was conducted using the Italian version of the Brief Negative Symptom Scale (BNSS).Reference Kirkpatrick, Strauss, Nguyen, Fischer, Daniel and Cienfuegos22,Reference Mucci, Galderisi, Merlotti, Rossi, Rocca and Bucci63 The scale consists of 13 items organised into six subscales (five negative symptom subscales: anhedonia, asociality, avolition, blunted affect and alogia; and a control subscale: lack of distress). All the items are rated on a 7-point (0–6) scale, thus ranging from absent (0) to moderate (3) to extremely severe (6) symptoms. According to the current conceptualisation of negative symptoms and similar research, BNSS item 4 (‘lack of normal distress’) was left out of the statistical analysis as it is not a negative symptom.Reference Galderisi, Mucci, Buchanan and Arango1,Reference Strauss, Nuñez, Ahmed, Barchard, Granholm and Kirkpatrick40
The assessment of positive symptoms and disorganisation was conducted using the Positive and Negative Syndrome Scale (PANSS).Reference Kay, Fiszbein and Opler64 In accordance with Wallwork and colleaguesReference Wallwork RS, Fortgang, Hashimoto, Weinberger and Dickinson65 the positive dimension was determined through the sum of the scores on the following PANSS items: delusions (P1), hallucinatory behaviour (P3), grandiosity (P5) and unusual thought (G9). The disorganisation dimension was determined by adding the scores on the following PANSS items: conceptual disorganisation (P2), difficulty in abstract thinking (N5) and poor attention (G11). Depressive symptoms were assessed using the Calgary Depression Scale for Schizophrenia (CDSS).Reference Addington, Shah, Liu and Addington66 Last, the St. Hans Rating Scale (SHRS) was used to evaluate extrapyramidal symptoms.Reference Gerlach, Korsgaard, Clemmesen, Lauersen, Magelund and Noring67 These clinical evaluations were conducted both at baseline and at the 4-year follow-up visit.
Statistical analysis
Network analysis was carried out on BNSS items at baseline and follow-up. Starting from a network built on partial correlations, where the association between each pair of nodes was controlled for the influence of all the other nodes, an adaptive least absolute shrinkage and selection operator (LASSO) network was obtained by assigning penalties to partial correlations between variables to make small correlations shrink to 0. A tuning parameter of 0.5 was used to control for the sparsity of the network. Because the study variables were not normally distributed, a non-paranormal transformation was applied to the data. The network graphical representation, in which variables are shown as nodes and their correlations are depicted as edges, was based on the Fruchterman–Reingold algorithm, which places strongly associated nodes at the centre of the graph and weakly associated ones at the periphery. To further facilitate readability, only correlations of 0.05 or more were included in the network diagram. The centrality indices of betweenness, closeness and strength were used to quantify the importance of each node in the adaptive LASSO network. The betweenness of a node equals the number of times that it lies on the shortest path length between any two other nodes. Closeness indicates how easy it is to reach all other nodes from the node of interest and is computed as the inverse of the weighted sum of distances of a given node from all other nodes in the network. Nodes with high betweenness are those that facilitate connections in the network, whereas nodes with high closeness affect the other nodes more quickly or are more affected by the other nodes. Last, the node strength is the sum of the correlations of one node to all other nodes. For each index, higher values reflect higher centrality in the network, but high strength may also derive from very strong correlations between peripheral nodes belonging to the same domain. Centrality plots were created to represent these indices. The robustness of the network solution was assessed by estimating the accuracy of edge weights and the stability of centrality indices using bootstrap analysis.Reference Epskamp, Borsboom and Fried68
We used R, version 3.3.3 for Windows (R Foundation for Statistical Computing) to perform the network analysis; specifically, the package ‘qgraph’ was used to obtain the network and centrality indices, and ‘bootnet’ to evaluate the network stability. We investigated whether the BNSS network structure differed between baseline and follow-up by means of the network comparison test using the R package ‘NetworkComparisonTest’.Reference van Borkulo, van Bork, Boschloo, Kossakowski, Tio and Schoevers69
The network structure invariance test investigates differences in the overall structure of the network. The difference between network structures is measured as the deviation in absolute weighted sum scores of the connections.Reference Borsboom, Haslbeck and Robinaugh70 This permutation-based test randomly reclassifies individuals from the networks repeatedly and then computes the differences between the subnetworks. The resulting distribution under the null hypothesis, assuming that networks are equal, is used to test the observed difference of the subnetworks.Reference van Borkulo, van Bork, Boschloo, Kossakowski, Tio and Schoevers69,Reference Kossakowski, Epskamp, Kieffer, van Borkulo, Rhemtulla and Borsboom71 We used the option for dependent samples of the network comparison test to test temporal stability. The global strength invariance test was used to investigate whether the overall level of connectivity was equal across networks. When this test was significant, post hoc analyses were carried out to determine which specific edges differed between networks using Bonferroni–Holm correction for multiple comparisons. Overall connectivity was computed as the weighted absolute sum of all edges in the network.Reference Opsahl, Agneessens and Skvoretz72,Reference Fried, Eidhof, Palic, Costantini, Huisman-van Dijk and Bockting73 The significance level of the network comparison tests was set at P < 0.05. Community detection analysis was conducted using the function cluster_spinglass of the R package ‘igraph’. The spinglass algorithm was chosen because it handles networks with negative weights, which were present in our data. To account for potential variability in the results based on the initial seed, the analysis was performed 10 000 times, thereby allowing calculation of the frequency of different community structures identified at baseline and follow-up. This rigorous approach allowed for a more comprehensive understanding of the stability of the network community structures and provided a robust estimate of the reproducibility of the findings across multiple iterations.
Results
Out of 921 individuals enrolled at baseline, 618 provided follow-up data and 612 with complete baseline and follow-up BNSS data were included in the analyses (422 men (69%) and 190 women (31%); mean age at follow-up 45.1 years (s.d. = 11.5)). The detail demographic characteristics of the sample and the ongoing treatment are given in Supplementary Table 1, available at https://doi.org/10.1192/bjo.2023.541.
The clinical characteristics are shown in Table 1: 59.5% of participants showed mild to moderate severity of negative symptoms (BNSS total score <36), 77.6% absent to mild positive symptom severity (PANSS positive dimension score <12); 59.2% PANSS disorganisation dimension score <9; 63.5% showed low levels of depression (CDSS total score <4); and 93.3% no or mild Parkinsonism (SHRS Parkinsonism score <1).
BNSS, the Brief Negative Symptom Scale; PANSS, Positive and Negative Syndrome Scale; CDSS, Calgary Depression Scale for Schizophrenia; SHRS, St. Hans Rating Scale for extrapyramidal symptoms.
The means and standard deviations of BNSS items are reported in Table 2.
BNSS items: 1, intensity of pleasure during activities; 2, frequency of pleasurable activities; 3, intensity of expected pleasure from future activities; 5, asociality behaviour; 6, asociality internal experience; 7, avolition behaviour; 8, avolition internal experience; 9, facial expression; 10, vocal expression; 11, expressive gestures; 12, quantity of speech; 13, spontaneous elaboration.
a. All item scores decreased significantly (P < 0.001) from baseline to follow-up.
Figure 1 shows the baseline and follow-up networks of BNSS symptoms. Bootstrap analysis revealed that the edge weights were accurate (had small confidence intervals) at baseline and follow-up. In addition, the edge weights were relatively stable until 50% of nodes were removed (Supplementary Figs S1 and S2).
The result of the network invariance test indicated that the network structure was unchanged over time (network invariance test score 0.13, P = 0.169), whereas the global strength decreased significantly over time (6.28 at baseline and 5.79 at follow-up; global strength invariance test score 0.48, P = 0.016), suggesting that the level of connectivity was reduced at follow-up and at least one edge changed over time. Specifically, we found that six edges changed significantly over time (bnss5–bnss10, P = 0.021; bnss7–bnss12, P = 0.013; bnss10–bnss12, P = 0.004; bnss3–bnss13, P = 0.001; bnss6–bnss13, P = 0.013; bnss7–bnss13, P = 0.003).
The community analysis provided support for four or five domains of the BNSS: anhedonia, asociality, avolition, blunted affect and alogia. Specifically, although anhedonia, blunted affect and alogia communities remained stable at baseline and follow-up, the asociality and avolition items were located in two separate communities in 33.6% of the iterations at baseline and in 63.9% of the iterations at follow-up. Conversely, these items were grouped together into a single domain in 66.1% of the iterations at baseline and 36.1% at follow-up (Supplementary Figs S3 and S4).
Discussion
The current study used network analysis, a complex and innovative mathematical technique, to investigate the structure of negative symptoms and its stability over time in a sample of people with schizophrenia evaluated at baseline and at 4-year follow-up.
Our findings indicated that the 12 items of the BNSS (with the item ‘lack of normal distress’ being excluded from the analysis, according to the current conceptualisation of negative symptoms and similar research),Reference Galderisi, Mucci, Dollfus, Nordentoft, Falkai and Kaiser2,Reference Strauss, Nuñez, Ahmed, Barchard, Granholm and Kirkpatrick40 through strong intra-domain connections, were structured in distinct domains. This network structure was unchanged between baseline and follow-up, whereas its global strength decreased significantly, thus suggesting that the influence of certain items on others diminished over the 4-year period, although the underlying structure of connections remained constant. Furthermore, performing a community analysis, we found that anhedonia, blunted affect and alogia communities remained stable at the two time points, whereas avolition and asociality were located in the same domain at baseline, but they constituted two different domains at follow-up. Therefore, overall, our results indicated a four- or five-factor model of negative symptoms at baseline and a five-factor model at follow-up.
The five-factor versus the hierarchical model
Our results, despite minor variations, are in line with those presented by Strauss and colleagues.Reference Strauss, Esfahlani, Galderisi, Mucci, Rossi and Bucci51 Although Strauss et al included the BNSS item ‘lack of normal distress’ in their analyses, we chose to exclude this item since it is unclear whether this aspect belongs to the current negative symptom construct or whether it is part of other psychopathological constructs.Reference Galderisi, Mucci, Dollfus, Nordentoft, Falkai and Kaiser2
Overall, our results partially support the five-domain solution identified in 2005 by the NIMH-MATRICS consensus statement.Reference Strauss, Esfahlani, Galderisi, Mucci, Rossi and Bucci51 These results concur with those of recent confirmatory factor analysis (CFA) studies, despite modest variations in sample sizes and statistical analyses used.Reference Ahmed, Kirkpatrick, Galderisi, Mucci, Rossi and Bertolino37–Reference Li, Liu, Zhang, Wang, Hu and Chu43 These previous investigations showed that the five-factor (five individual negative symptoms: avolition, anhedonia, asociality, blunted affect and alogia) and also the hierarchical model (MAP and EXP as second-order dimensions; five factors as first-order dimensions) offered a great fit, whereas one- and two-factor models performed poorly. Interestingly, the good fit for the hierarchical model should not be interpreted as further support for the two-factor model but rather as a confirmation of the five-factor model, since in the hierarchical model, MAP and EXP are considered second-order dimensions. Therefore, the model of negative symptoms that best accounts for the latent structure of these symptoms is the five-domain one, since all negative symptom ratings in the hierarchical model are directly influenced by primary dimensions.Reference Strauss, Nuñez, Ahmed, Barchard, Granholm and Kirkpatrick40
The results of this network analysis are to a large extent consistent with a four- or five-domain conceptualisation of negative symptoms.
The longitudinal network structure stability
The network analysis adds to previous CFA findings on interconnections between negative symptoms. It is of great importance to underline that our negative symptom network structure, in line with previous findings,Reference Strauss, Esfahlani, Galderisi, Mucci, Rossi and Bucci51 indicated not only that items within the five domains cluster together, but also that they have minimal interactions with one another, suggesting a stronger reciprocal influence of the items within each domain and a lower association between items of different domains.
Furthermore, the results of our study indicate that the negative symptom structure derived from a second-generation, culturally unbiased and largely validated instrument such as the BNSS is longitudinally stable.
Despite the latest efforts to describe the latent structure of negative symptoms, much less attention has been focused on invariance of their longitudinal structure. The distinction between stable and unstable symptom clusters may aid in the improvement of diagnostic limits, the prediction of outcome and the identification of specific symptoms that might be prognostically significant. As regards negative symptom stability over time, various studies have investigated their long-term course, reporting controversial findings (e.g. relative stability over time but also reversibility or fluctuation in symptoms over time).Reference Austin, Mors, Budtz-Jørgensen, Secher, Hjorthøj and Bertelsen74–Reference Thara, Henrietta, Joseph, Rajkumar and Eaton77 However, these studies used the PANSS or the Scale for the Assessment of Negative Symptoms (SANS) and, although they investigated the course of negative symptoms over time, they did not evaluate the stability of the negative symptom structure. To our knowledge, only two studies were carried out with the aim of investigating negative symptom structure stability over time, using a network analysisReference Levine and Leucht55 or a CFA.Reference Kagan, Cogo-Moreira, Barbosa, Cavalcante, Shinji and Noto56 In the study of Levine & Leucht,Reference Levine and Leucht55 negative symptoms were assessed using the SANS in people with chronic schizophrenia and predominant negative symptoms. The authors used a network analysis and found preliminary evidence for a negative symptom severity network consisting of four dimensions (affect, poor responsiveness, lack of interest and apathy/inattentiveness), with these results being replicable at baseline and follow-up (60 days).Reference Levine and Leucht55 These results are heavily influenced by the inadequate assessment instrument, which includes cognitive deficits among negative symptoms, does not distinguish anhedonia and asociality and is based only on behaviour, with poor evaluation of anhedonia and avolition. An antipsychotic-naive first-episode schizophrenia sample was used in the study by Kagan and colleagues to explore the longitudinal invariance of the negative symptom dimension using CFA on PANSS scores at baseline and at 10-week follow-up.Reference Kagan, Cogo-Moreira, Barbosa, Cavalcante, Shinji and Noto56 In their study design, the authors examined the longitudinal invariance of the unidimensional and bidimensional models of negative symptoms and found that the unidimensional one had a good fit at baseline and acceptable fit at 10-week follow-up.Reference Kagan, Cogo-Moreira, Barbosa, Cavalcante, Shinji and Noto56 However, comparisons between these two studies and our research are not possible in terms of methodology,Reference Kagan, Cogo-Moreira, Barbosa, Cavalcante, Shinji and Noto56 assessment instruments usedReference Levine and Leucht55,Reference Kagan, Cogo-Moreira, Barbosa, Cavalcante, Shinji and Noto56 and population included (individuals with chronic schizophrenia and individuals with first-episode psychosis).Reference Kagan, Cogo-Moreira, Barbosa, Cavalcante, Shinji and Noto56
Implications
Overall, the findings of the present study could have implications for clinical practice. First, considering the results of the previous exploratory factor analyses, DSM-5 based the description of negative symptoms on the two dimensions ‘MAP’ and ‘EXP’, with consequent risk of inaccurate diagnoses that do not capture the complexity of the construct of negative symptoms.Reference First, Gaebel, Maj, Stein, Kogan and Saunders27 Considering current findings, future versions of the DSM might take each of the five domains into account separately. Second, the analysis of the nodes’ centrality and the density of intra- and interdomain relationships may provide valuable information from a therapeutic perspective. An effective treatment targeting densely connected networks could in fact be more effective in inducing a global improvement in negative symptoms, compared with an effective treatment targeting weakly connected domains.Reference Strauss, Nuñez, Ahmed, Barchard, Granholm and Kirkpatrick40 The findings of the study by Strauss and colleaguesReference Strauss, Zamani Esfahlani, Sayama, Kirkpatrick, Opler and Saoud53 demonstrated that roluperidoneReference Davidson, Saoud, Staner, Noel, Werner and Luthringer78 improved negative symptoms by reducing the level of centrality of avolition, thus supporting the idea that a global improvement of negative symptoms requires decoupling the influence of motivational processes from other domains of negative symptoms.Reference Strauss, Zamani Esfahlani, Sayama, Kirkpatrick, Opler and Saoud53 Last, correct characterisation of the negative symptom structure and its longitudinal evaluation can allow the identification of pathophysiological mechanisms of the different domains and improving the design of pharmacological/rehabilitative treatment trials, which would be precluded from studying the correlates of the two factors on which the attention of research has been concentrated in recent years.
Our study emphasises the multidimensional nature of negative symptoms. This research underscores the need for continued exploration in this area, to refine psychopathological classifications and develop effective treatment strategies for schizophrenia.
Limitations
Certain limitations of this study should be taken into account. For instance, participants were predominantly male, which may limit the generalisability of our results. However, we have to note that a higher severity of negative symptoms has been previously reported in males with schizophrenia compared with females.Reference Giordano, Bucci, Mucci, Pezzella and Galderisi79 In addition, positive symptoms, extrapyramidal side-effects and depression are possible sources of secondary negative symptoms, as reported in the introductory section. Therefore, these factors might account for some influences on the presented results. However, our sample comprised clinically stable individuals with schizophrenia, with absent to mild positive and disorganisation symptom severity (PANSS positive dimension mean score <12; PANSS disorganisation dimension mean score <9), low mean level of depression (CDSS total score <4) and Parkinsonism (SHRS Parkinsonism score <1), far below the threshold of clinical significance, thus limiting possible sources of secondary negative symptoms.
Supplementary material
Supplementary material is available online at https://doi.org/10.1192/bjo.2023.541.
Data availability
The data that support the findings of this study are available from the corresponding author, G.M.G., on reasonable request.
Acknowledgements
The following members of the Italian Network for Research on Psychoses participated in this study: Giuseppe Piegari, Eleonora Merlotti, Francesco Brando (University of Campania ‘Luigi Vanvitelli’, Naples); Marco Papalino, Vitalba Calia, Raffaella Romano (University of Bari); Stefano Barlati, Giacomo Deste, Paolo Valsecchi (University of Brescia); Federica Pinna, Alice Lai, Silvia Lostia Di Santa Sofia (University of Cagliari); Maria Salvina Signorelli, Laura Fusar Poli, Teresa Surace (University of Catania); Giovanni Martinotti, Chiara Montemitro, Silvia Fatricelli (University of Chieti); Mario Altamura, Eleonora Angelini, Antonella Elia (University of Foggia); Pietro Calcagno, Martino Belvedere Murri, Simone Cattedra (University of Genoa); Francesca Pacitti, Rodolfo Rossi, Valentina Socci, Laura Giusti, Anna Salza, Silvia Mammarella (University of L'Aquila); Andrea de Bartolomeis (University of Naples Federico II); Angela Favaro, Enrico Collantoni, Paolo Meneguzzo (University of Padua); Matteo Tonna, Paolo Ossola, Maria Lidia Gerra (University of Parma); Carla Gramaglia, Valeria Binda, Eleonora Gambaro (University of Eastern Piedmont, Novara); Claudia Carmassi, Barbara Carpita, Ivan Mirko Cremone (University of Pisa); Giulio Corrivetti, Giammarco Cascino, Gianfranco del Buono (Department of Mental Health, Salerno); Roberto Brugnoli, Anna Comparelli, Valentina Corigliano, Antonio Buzzanca, Nicoletta Gerardi, Marianna Frascarelli (Sapienza University of Rome); Andrea Fagiolini, Arianna Goracci, Simone Bolognesi (University of Siena); Alberto Siracusano, Giorgio Di Lorenzo, Michele Ribolsi (Tor Vergata University of Rome); Cristiana Montemagni, Cecilia Riccardi, Elisa Del Favero (University of Turin).
Author contributions
All authors contributed to the conceptualisation and investigation of the study. F.S. and P.R. were responsible for the methodology, data curation and formal analysis. G.M.G. and E.C. wrote the first draft of the manuscript and all authors commented on previous versions of the manuscript. All authors reviewed and approved the final manuscript.
Funding
This study was funded by the Italian Ministry of Education, the Italian Society of Psychopathology (SOPSI) and the Italian Society of Biological Psychiatry (SIPB). These organisations had no role in the study design; in the collection, analysis and interpretation of data; in the writing of the report; or in the decision to submit the paper for publication.
Declaration of interest
The authors declare no conflict of interest. S.G. and G.M.G. are members of the BJPsych Open editorial board and did not take part in the review or decision-making process of this paper.
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