TY - JOUR
T1 - Clinical and psychological factors associated with resilience in patients with schizophrenia
T2 - data from the Italian network for research on psychoses using machine learning
AU - Italian Network for Research on Psychoses
AU - Antonucci, Linda A.
AU - Pergola, Giulio
AU - Rampino, Antonio
AU - Rocca, Paola
AU - Rossi, Alessandro
AU - Amore, Mario
AU - Aguglia, Eugenio
AU - Bellomo, Antonello
AU - Bianchini, Valeria
AU - Brasso, Claudio
AU - Bucci, Paola
AU - Carpiniello, Bernardo
AU - Dell'Osso, Liliana
AU - di Fabio, Fabio
AU - di Giannantonio, Massimo
AU - Fagiolini, Andrea
AU - Giordano, Giulia Maria
AU - Marcatilli, Matteo
AU - Marchesi, Carlo
AU - Meneguzzo, Paolo
AU - Monteleone, Palmiero
AU - Pompili, Maurizio
AU - Rossi, Rodolfo
AU - Siracusano, Alberto
AU - Vita, Antonio
AU - Zeppegno, Patrizia
AU - Galderisi, Silvana
AU - Bertolino, Alessandro
AU - Maj, Mario
AU - Andriola, Ileana
AU - Blasi, Giuseppe
AU - De Mastro, Laura
AU - D'Ambrosio, Enrico
AU - Massari, Francesco
AU - Raio, Alessandra
AU - Russo, Marianna
AU - Selvaggi, Pierluigi
AU - Tavella, Angelantonio
AU - Barlati, Stefano
AU - Deste, Giacomo
AU - Lisoni, Jacopo
AU - Pinna, Federica
AU - Paribello, Pasquale
AU - Marras, Luca
AU - Piegari, Giuseppe
AU - Brando, Francesco
AU - Giuliani, Luigi
AU - Pezzella, Pasquale
AU - Concerto, Carmen
AU - Gramaglia, Carla
N1 - Publisher Copyright:
© The Author(s), 2022. Published by Cambridge University Press.
PY - 2023/9/11
Y1 - 2023/9/11
N2 - Background. Resilience is defined as the ability to modify thoughts to cope with stressful events. Patients with schizophrenia (SCZ) having higher resilience (HR) levels show less severe symptoms and better real-life functioning. However, the clinical factors contributing to determine resilience levels in patients remain unclear. Thus, based on psychological, historical, clinical and environmental variables, we built a supervised machine learning algorithm to classify patients with HR or lower resilience (LR). Methods. SCZ from the Italian Network for Research on Psychoses (N = 598 in the Discovery sample, N = 298 in the Validation sample) underwent historical, clinical, psychological, environmental and resilience assessments. A Support Vector Machine algorithm (based on 85 variables extracted from the above-mentioned assessments) was built in the Discovery sample, and replicated in the Validation sample, to classify between HR and LR patients, within a nested, Leave-Site-Out Cross-Validation framework. We then investigated whether algorithm decision scores were associated with the cognitive and clinical characteristics of patients. Results. The algorithm classified patients as HR or LR with a Balanced Accuracy of 74.5% (p < 0.0001) in the Discovery sample, and 80.2% in the Validation sample. Higher self-esteem, larger social network and use of adaptive coping strategies were the variables most frequently chosen by the algorithm to generate decisions. Correlations between algorithm decision scores, socio-cognitive abilities, and symptom severity were significant (pFDR < 0.05). Conclusions. We identified an accurate, meaningful and generalizable clinical-psychological signature associated with resilience in SCZ. This study delivers relevant information regarding psychological and clinical factors that non-pharmacological interventions could target in schizophrenia.
AB - Background. Resilience is defined as the ability to modify thoughts to cope with stressful events. Patients with schizophrenia (SCZ) having higher resilience (HR) levels show less severe symptoms and better real-life functioning. However, the clinical factors contributing to determine resilience levels in patients remain unclear. Thus, based on psychological, historical, clinical and environmental variables, we built a supervised machine learning algorithm to classify patients with HR or lower resilience (LR). Methods. SCZ from the Italian Network for Research on Psychoses (N = 598 in the Discovery sample, N = 298 in the Validation sample) underwent historical, clinical, psychological, environmental and resilience assessments. A Support Vector Machine algorithm (based on 85 variables extracted from the above-mentioned assessments) was built in the Discovery sample, and replicated in the Validation sample, to classify between HR and LR patients, within a nested, Leave-Site-Out Cross-Validation framework. We then investigated whether algorithm decision scores were associated with the cognitive and clinical characteristics of patients. Results. The algorithm classified patients as HR or LR with a Balanced Accuracy of 74.5% (p < 0.0001) in the Discovery sample, and 80.2% in the Validation sample. Higher self-esteem, larger social network and use of adaptive coping strategies were the variables most frequently chosen by the algorithm to generate decisions. Correlations between algorithm decision scores, socio-cognitive abilities, and symptom severity were significant (pFDR < 0.05). Conclusions. We identified an accurate, meaningful and generalizable clinical-psychological signature associated with resilience in SCZ. This study delivers relevant information regarding psychological and clinical factors that non-pharmacological interventions could target in schizophrenia.
KW - Italian network for research on psychoses
KW - machine learning
KW - personalized interventions
KW - resilience
KW - schizophrenia
UR - https://www.scopus.com/pages/publications/85171663853
U2 - 10.1017/S003329172200294X
DO - 10.1017/S003329172200294X
M3 - Article
SN - 0033-2917
VL - 53
SP - 5717
EP - 5728
JO - Psychological Medicine
JF - Psychological Medicine
IS - 12
ER -