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Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder

INTRODUCTION: Poor social inclusion, as a cause and consequence simultaneously, has been associated with schizophrenia spectrum disorder (SSD). It can bring a substantial burden to individual families and the society. Previous studies lack 1) the quantitative exploration of (multidimensional) social...

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Autores principales: Hao, J., Tiles-Sar, N., van der Meer, L., Bruggeman, R., Alizadeh, B. Z.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10405713/
http://dx.doi.org/10.1192/j.eurpsy.2023.651
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author Hao, J.
Tiles-Sar, N.
van der Meer, L.
Bruggeman, R.
Alizadeh, B. Z.
author_facet Hao, J.
Tiles-Sar, N.
van der Meer, L.
Bruggeman, R.
Alizadeh, B. Z.
author_sort Hao, J.
collection PubMed
description INTRODUCTION: Poor social inclusion, as a cause and consequence simultaneously, has been associated with schizophrenia spectrum disorder (SSD). It can bring a substantial burden to individual families and the society. Previous studies lack 1) the quantitative exploration of (multidimensional) social inclusion which can enable the measurement and monitor of the level of social integration, 2) longitudinal and multivariate study designs, and 3) methodological comparison between the traditional and data-driven approaches for a better clinical suitability of monitoring and managing social inclusion. OBJECTIVES: To build and compare 3-year models predictive of multidimensional social inclusion (mSI) among the SSD patients, using standard and data-driven approaches. METHODS: We used the baseline and 3-year follow-up data of 1,119 patients from the Genetic Risk and Outcome in Psychosis. Social functioning (Social Functioning Scale, SFS) and quality of life (the brief version of the World Health Organization Quality of Life, WHOQOL-BREF) were used as a proxy of mSI. K-means clustering over the 13 subscales of SFS and WHOQOL-BREF was applied to identify mSI subgroups. Prediction models were built and internally validated via multinomial logistic regression (MLR) and random forest (RF). The MLR and RF model performance was compared by accuracy and the discriminability of mSI subgroups (i.e., p-value of one-sided binomial test between the accuracy and no information rate). RESULTS: Five mSI groups were identified: 1) “very low (in SFS)/very low (in WHOQOL-BREF)” (8.58%), 2) “low/low” (12.87%), 3) “high/low” (49.24%), 4) “medium/high” (18.05%), and 5) “high/high” (11.26%). Both MLR and RF models included 22 predictors and demonstrated accuracies of 59.16% (95CI%: [55.75%, 62.58%], p = 0.994) and 61.61% (95%CI: [54.90%, 68.01%], p = 0.013) correspondingly. The mSI was robustly and mainly and robustly predicted by genetic predisposition, premorbid social functioning, symptoms (i.e., positive, negative and depressive), number of met needs and baseline satisfaction with the environment and social life. Image: Image 2: Image 3: CONCLUSIONS: Notwithstanding comparable accuracies, we cautiously consider the RF model outperforming primarily due to its better discriminability. As the baseline conditions of the patients with SSD could indicate the 3-year mSI level, customized amount and types of resources and interventions can be designed to improve the level of multidimensional social inclusion of all SSD patients. DISCLOSURE OF INTEREST: None Declared
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spelling pubmed-104057132023-08-08 Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder Hao, J. Tiles-Sar, N. van der Meer, L. Bruggeman, R. Alizadeh, B. Z. Eur Psychiatry Abstract INTRODUCTION: Poor social inclusion, as a cause and consequence simultaneously, has been associated with schizophrenia spectrum disorder (SSD). It can bring a substantial burden to individual families and the society. Previous studies lack 1) the quantitative exploration of (multidimensional) social inclusion which can enable the measurement and monitor of the level of social integration, 2) longitudinal and multivariate study designs, and 3) methodological comparison between the traditional and data-driven approaches for a better clinical suitability of monitoring and managing social inclusion. OBJECTIVES: To build and compare 3-year models predictive of multidimensional social inclusion (mSI) among the SSD patients, using standard and data-driven approaches. METHODS: We used the baseline and 3-year follow-up data of 1,119 patients from the Genetic Risk and Outcome in Psychosis. Social functioning (Social Functioning Scale, SFS) and quality of life (the brief version of the World Health Organization Quality of Life, WHOQOL-BREF) were used as a proxy of mSI. K-means clustering over the 13 subscales of SFS and WHOQOL-BREF was applied to identify mSI subgroups. Prediction models were built and internally validated via multinomial logistic regression (MLR) and random forest (RF). The MLR and RF model performance was compared by accuracy and the discriminability of mSI subgroups (i.e., p-value of one-sided binomial test between the accuracy and no information rate). RESULTS: Five mSI groups were identified: 1) “very low (in SFS)/very low (in WHOQOL-BREF)” (8.58%), 2) “low/low” (12.87%), 3) “high/low” (49.24%), 4) “medium/high” (18.05%), and 5) “high/high” (11.26%). Both MLR and RF models included 22 predictors and demonstrated accuracies of 59.16% (95CI%: [55.75%, 62.58%], p = 0.994) and 61.61% (95%CI: [54.90%, 68.01%], p = 0.013) correspondingly. The mSI was robustly and mainly and robustly predicted by genetic predisposition, premorbid social functioning, symptoms (i.e., positive, negative and depressive), number of met needs and baseline satisfaction with the environment and social life. Image: Image 2: Image 3: CONCLUSIONS: Notwithstanding comparable accuracies, we cautiously consider the RF model outperforming primarily due to its better discriminability. As the baseline conditions of the patients with SSD could indicate the 3-year mSI level, customized amount and types of resources and interventions can be designed to improve the level of multidimensional social inclusion of all SSD patients. DISCLOSURE OF INTEREST: None Declared Cambridge University Press 2023-07-19 /pmc/articles/PMC10405713/ http://dx.doi.org/10.1192/j.eurpsy.2023.651 Text en © The Author(s) 2023 https://creativecommons.org/licenses/by/4.0/This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Abstract
Hao, J.
Tiles-Sar, N.
van der Meer, L.
Bruggeman, R.
Alizadeh, B. Z.
Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder
title Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder
title_full Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder
title_fullStr Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder
title_full_unstemmed Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder
title_short Long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder
title_sort long-term prediction of multidimensional social inclusion among patients with schizophrenia spectrum disorder
topic Abstract
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10405713/
http://dx.doi.org/10.1192/j.eurpsy.2023.651
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