基于人工智能的首发精神病患者抑郁症状预测:来自EUFEST和RAISE-ETP临床试验的见解

IF 5.5 2区 医学 Q1 PSYCHIATRY
Sergio Mena, Fiona Coutts, Jana von Trott, Esin Ucur, Clara Vetter, René R Kahn, W Wolfgang Fleischhacker, John M Kane, Oliver D Howes, Rachel Upthegrove, Paris A Lalousis, Nikolaos Koutsouleris
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引用次数: 0

摘要

背景:抑郁症状在首发精神病(FEP)中非常普遍,且临床预后较差。目前很难根据临床评估确定哪些患者会有持续的抑郁症状。我们的目的是确定抑郁症状和精神病后抑郁发作是否可以从基线临床数据、生活质量和基于血液的生物标志物来预测,并评估这些模型的地理普遍性。方法:对两项FEP试验进行分析:欧洲首发精神分裂症试验(EUFEST) (n = 498;2002-2006)和精神分裂症早期治疗项目(RAISE-ETP)后的恢复(n = 404;2010 - 2012)。参与者年龄在15-40岁之间,符合精神分裂症谱系障碍诊断与统计手册IV的标准。我们开发了支持向量回归和分类器来预测6个月和12个月时抑郁症状的变化以及前6个月的抑郁发作。这些模型在一个样本中进行训练,并在另一个样本中进行外部验证,以获得地理上的普遍性。结果:共纳入EUFEST参与者320例,RAISE-ETP参与者234例(平均[SD]年龄:25.93[5.60]岁,男性56.56%;23.90[5.27]岁,男性73.50%)。模型预测6个月时抑郁症状变化的平衡准确度(BAC)为66.26% (RAISE-ETP)和75.09% (EUFEST), 12个月时BAC为67.88% (RAISE-ETP)和77.61% (EUFEST)。BAC分别为66.67% (RAISE-ETP)和69.01% (EUFEST),具有良好的外部预测效果。结论:使用临床数据、生活质量和生物标志物的预测模型可以准确预测FEP患者的抑郁事件,在人群中具有普遍性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-based prediction of depression symptomatology in first-episode psychosis patients: insights from the EUFEST and RAISE-ETP clinical trials.

Background: Depressive symptoms are highly prevalent in first-episode psychosis (FEP) and worsen clinical outcomes. It is currently difficult to determine which patients will have persistent depressive symptoms based on a clinical assessment. We aimed to determine whether depressive symptoms and post-psychotic depressive episodes can be predicted from baseline clinical data, quality of life, and blood-based biomarkers, and to assess the geographical generalizability of these models.

Methods: Two FEP trials were analyzed: European First-Episode Schizophrenia Trial (EUFEST) (n = 498; 2002-2006) and Recovery After an Initial Schizophrenia Episode Early Treatment Program (RAISE-ETP) (n = 404; 2010-2012). Participants included those aged 15-40 years, meeting Diagnostic and Statistical Manual of Mental Disorders IV criteria for schizophrenia spectrum disorders. We developed support vector regressors and classifiers to predict changes in depressive symptoms at 6 and 12 months and depressive episodes within the first 6 months. These models were trained in one sample and externally validated in another for geographical generalizability.

Results: A total of 320 EUFEST and 234 RAISE-ETP participants were included (mean [SD] age: 25.93 [5.60] years, 56.56% male; 23.90 [5.27] years, 73.50% male). Models predicted changes in depressive symptoms at 6 months with balanced accuracy (BAC) of 66.26% (RAISE-ETP) and 75.09% (EUFEST), and at 12 months with BAC of 67.88% (RAISE-ETP) and 77.61% (EUFEST). Depressive episodes were predicted with BAC of 66.67% (RAISE-ETP) and 69.01% (EUFEST), showing fair external predictive performance.

Conclusions: Predictive models using clinical data, quality of life, and biomarkers accurately forecast depressive events in FEP, demonstrating generalization across populations.

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来源期刊
Psychological Medicine
Psychological Medicine 医学-精神病学
CiteScore
11.30
自引率
4.30%
发文量
711
审稿时长
3-6 weeks
期刊介绍: Now in its fifth decade of publication, Psychological Medicine is a leading international journal in the fields of psychiatry, related aspects of psychology and basic sciences. From 2014, there are 16 issues a year, each featuring original articles reporting key research being undertaken worldwide, together with shorter editorials by distinguished scholars and an important book review section. The journal''s success is clearly demonstrated by a consistently high impact factor.
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