Shaping tomorrow’s support: baseline clinical characteristics predict later social functioning and quality of life in schizophrenia spectrum disorder

Author:

Hao JiasiORCID,Tiles-Sar Natalia,Habtewold Tesfa Dejenie,Liemburg Edith J., ,de Haan Lieuwe,Schirmbeck Frederike,Simons Claudia J. P.,van Amelsvoort Therese,Veling Wim,Bruggeman Richard,van der Meer Lisette,Alizadeh Behrooz Z.ORCID

Abstract

Abstract Purpose We aimed to explore the multidimensional nature of social inclusion (mSI) among patients diagnosed with schizophrenia spectrum disorder (SSD), and to identify the predictors of 3-year mSI and the mSI prediction using traditional and data-driven approaches. Methods We used the baseline and 3-year follow-up data of 1119 patients from the Genetic Risk and Outcome in Psychosis (GROUP) cohort in the Netherlands. The outcome mSI was defined as clusters derived from combined analyses of thirteen subscales from the Social Functioning Scale and the brief version of World Health Organization Quality of Life questionnaires through K-means clustering. Prediction models were built through multinomial logistic regression (ModelMLR) and random forest (ModelRF), internally validated via bootstrapping and compared by accuracy and the discriminability of mSI subgroups. Results We identified five mSI subgroups: “very low (social functioning)/very low (quality of life)” (8.58%), “low/low” (12.87%), “high/low” (49.24%), “medium/high” (18.05%), and “high/high” (11.26%). The mSI was robustly predicted by a genetic predisposition for SSD, premorbid adjustment, positive, negative, and depressive symptoms, number of met needs, and baseline satisfaction with the environment and social life. The ModelRF (61.61% [54.90%, 68.01%]; P =0.013) was cautiously considered outperform the ModelMLR (59.16% [55.75%, 62.58%]; P =0.994). Conclusion We introduced and distinguished meaningful subgroups of mSI, which were modestly predictable from baseline clinical characteristics. A possibility for early prediction of mSI at the clinical stage may unlock the potential for faster and more impactful social support that is specifically tailored to the unique characteristics of the mSI subgroup to which a given patient belongs.

Publisher

Springer Science and Business Media LLC

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