Generalizability of clinical prediction models in mental health

IF 9.6 1区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Maike Richter, Daniel Emden, Ramona Leenings, Nils R. Winter, Rafael Mikolajczyk, Janka Massag, Esther Zwiky, Tiana Borgers, Ronny Redlich, Nikolaos Koutsouleris, Renata Falguera, Sharmili Edwin Thanarajah, Frank Padberg, Matthias A. Reinhard, Mitja D. Back, Nexhmedin Morina, Ulrike Buhlmann, Tilo Kircher, Udo Dannlowski, Tim Hahn, Nils Opel
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Abstract

Concerns about the generalizability of machine learning models in mental health arise, partly due to sampling effects and data disparities between research cohorts and real-world populations. We aimed to investigate whether a machine learning model trained solely on easily accessible and low-cost clinical data can predict depressive symptom severity in unseen, independent datasets from various research and real-world clinical contexts. This observational multi-cohort study included 3021 participants (62.03% females, MAge = 36.27 years, range 15–81) from ten European research and clinical settings, all diagnosed with an affective disorder. We firstly compared research and real-world inpatients from the same treatment center using 76 clinical and sociodemographic variables. An elastic net algorithm with ten-fold cross-validation was then applied to develop a sparse machine learning model for predicting depression severity based on the top five features (global functioning, extraversion, neuroticism, emotional abuse in childhood, and somatization). Model generalizability was tested across nine external samples. The model reliably predicted depression severity across all samples (r = 0.60, SD = 0.089, p < 0.0001) and in each individual external sample, ranging in performance from r = 0.48 in a real-world general population sample to r = 0.73 in real-world inpatients. These results suggest that machine learning models trained on sparse clinical data have the potential to predict illness severity across diverse settings, offering insights that could inform the development of more generalizable tools for use in routine psychiatric data analysis.

Abstract Image

心理健康临床预测模型的普遍性
人们对机器学习模型在心理健康领域的普遍性感到担忧,部分原因是研究群体与现实世界人群之间的抽样效应和数据差异。我们的目的是研究机器学习模型是否可以在来自各种研究和现实世界临床背景的未见过的独立数据集中预测抑郁症状的严重程度。这项观察性多队列研究包括来自10个欧洲研究和临床机构的3021名参与者(62.03%为女性,年龄36.27岁,15-81岁),均被诊断为情感性障碍。我们首先使用76个临床和社会人口学变量比较了研究和来自同一治疗中心的真实住院患者。然后应用具有十倍交叉验证的弹性网络算法来开发一个稀疏机器学习模型,该模型基于前五大特征(整体功能、外向性、神经质、儿童时期的情感虐待和躯体化)来预测抑郁症的严重程度。在9个外部样本中测试了模型的泛化性。该模型可靠地预测了所有样本(r = 0.60, SD = 0.089, p < 0.0001)和每个单独的外部样本的抑郁严重程度,其表现范围从现实世界一般人群样本的r = 0.48到现实世界住院患者的r = 0.73。这些结果表明,在稀疏临床数据上训练的机器学习模型有可能预测不同环境下的疾病严重程度,为开发更通用的工具提供见解,用于常规精神病学数据分析。
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来源期刊
Molecular Psychiatry
Molecular Psychiatry 医学-精神病学
CiteScore
20.50
自引率
4.50%
发文量
459
审稿时长
4-8 weeks
期刊介绍: Molecular Psychiatry focuses on publishing research that aims to uncover the biological mechanisms behind psychiatric disorders and their treatment. The journal emphasizes studies that bridge pre-clinical and clinical research, covering cellular, molecular, integrative, clinical, imaging, and psychopharmacology levels.
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