Contribution of socio-demographic and clinical characteristics to predict initial referrals to psychosocial interventions in patients with serious mental illness.

IF 5.9 2区 医学 Q1 PSYCHIATRY Epidemiology and Psychiatric Sciences Pub Date : 2024-01-29 DOI:10.1017/S2045796024000015
Guillaume Barbalat, Julien Plasse, Isabelle Chéreau-Boudet, Benjamin Gouache, Emilie Legros-Lafarge, Catherine Massoubre, Nathalie Guillard-Bouhet, Frédéric Haesebaert, Nicolas Franck
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Abstract

Aims: Psychosocial rehabilitation (PSR) is at the core of psychiatric recovery. There is a paucity of evidence regarding how the needs and characteristics of patients guide clinical decisions to refer to PSR interventions. Here, we used explainable machine learning methods to determine how socio-demographic and clinical characteristics contribute to initial referrals to PSR interventions in patients with serious mental illness.

Methods: Data were extracted from the French network of rehabilitation centres, REHABase, collected between years 2016 and 2022 and analysed between February and September 2022. Participants presented with serious mental illnesses, including schizophrenia spectrum disorders, bipolar disorders, autism spectrum disorders, depressive disorders, anxiety disorders and personality disorders. Information from 37 socio-demographic and clinical variables was extracted at baseline and used as potential predictors. Several machine learning models were tested to predict initial referrals to four PSR interventions: cognitive behavioural therapy (CBT), cognitive remediation (CR), psychoeducation (PE) and vocational training (VT). Explanatory power of predictors was determined using the artificial intelligence-based SHAP (SHapley Additive exPlanations) method from the best performing algorithm.

Results: Data from a total of 1146 patients were included (mean age, 33.2 years [range, 16-72 years]; 366 [39.2%] women). A random forest algorithm demonstrated the best predictive performance, with a moderate or average predictive accuracy [micro-averaged area under the receiver operating curve from 'external' cross-validation: 0.672]. SHAP dependence plots demonstrated insightful associations between socio-demographic and clinical predictors and referrals to PSR programmes. For instance, patients with psychotic disorders were more likely to be referred to PE and CR, while those with non-psychotic disorders were more likely to be referred to CBT and VT. Likewise, patients with social dysfunctions and lack of educational attainment were more likely to be referred to CR and VT, while those with better functioning and education were more likely to be referred to CBT and PE.

Conclusions: A combination of socio-demographic and clinical features was not sufficient to accurately predict initial referrals to four PSR programmes among a French network of rehabilitation centres. Referrals to PSR interventions may also involve service- and clinician-level factors. Considering socio-demographic and clinical predictors revealed disparities in referrals with respect to diagnoses, current clinical and psychological issues, functioning and education.

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社会人口学和临床特征对预测重症精神病患者最初转诊接受社会心理干预的贡献。
目的:社会心理康复(PSR)是精神病康复的核心。关于患者的需求和特征如何指导临床决定转诊至心理社会康复干预的证据还很少。在此,我们使用可解释的机器学习方法来确定社会人口学和临床特征是如何影响重症精神病患者的心理康复干预初始转诊的:数据来自法国康复中心网络 REHABase,收集时间为 2016 年至 2022 年,分析时间为 2022 年 2 月至 9 月。参与者均患有严重精神疾病,包括精神分裂症谱系障碍、双相情感障碍、自闭症谱系障碍、抑郁障碍、焦虑障碍和人格障碍。从基线的 37 个社会人口学和临床变量中提取了信息,并将其作为潜在的预测因子。测试了几种机器学习模型,以预测四种 PSR 干预的初始转诊情况:认知行为疗法 (CBT)、认知矫正 (CR)、心理教育 (PE) 和职业培训 (VT)。使用基于人工智能的 SHAP(SHapley Additive exPlanations)方法,从表现最好的算法中确定预测因子的解释力:共纳入了 1146 名患者的数据(平均年龄 33.2 岁[16-72 岁];女性 366 人[39.2%])。随机森林算法的预测性能最佳,预测准确率为中等或平均水平['外部'交叉验证的接收器工作曲线下的微平均面积为 0.672]:0.672].SHAP 依赖图显示了社会人口学和临床预测因素与 PSR 项目转介之间的深刻关联。例如,患有精神障碍的患者更有可能被转介到 PE 和 CR,而患有非精神障碍的患者则更有可能被转介到 CBT 和 VT。同样,有社会功能障碍和缺乏教育程度的患者更有可能被转介到 CR 和 VT,而功能和教育程度较高的患者则更有可能被转介到 CBT 和 PE:在法国的一个康复中心网络中,社会人口学和临床特征的组合不足以准确预测四种 PSR 项目的初始转诊情况。PSR干预的转诊可能还涉及服务和临床医生层面的因素。考虑社会人口学和临床预测因素后发现,在诊断、目前的临床和心理问题、功能和教育方面,转诊情况存在差异。
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来源期刊
CiteScore
7.80
自引率
1.20%
发文量
121
审稿时长
>12 weeks
期刊介绍: Epidemiology and Psychiatric Sciences is a prestigious international, peer-reviewed journal that has been publishing in Open Access format since 2020. Formerly known as Epidemiologia e Psichiatria Sociale and established in 1992 by Michele Tansella, the journal prioritizes highly relevant and innovative research articles and systematic reviews in the areas of public mental health and policy, mental health services and system research, as well as epidemiological and social psychiatry. Join us in advancing knowledge and understanding in these critical fields.
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