School of Psychological and Cognitive Sciences, Beijing Key Laboratory of Behavior and Mental Health, IDG/McGovern Institute for Brain Research, Peking-Tsinghua Center for Life Sciences, Peking University, Beijing, 100871, China.
School of Health and Psychological Sciences, City, University of London, London, EC1V 0HB, UK.
Neurosci Bull. 2023 Aug;39(8):1309-1326. doi: 10.1007/s12264-023-01057-2. Epub 2023 Apr 24.
Machine learning approaches are increasingly being applied to neuroimaging data from patients with psychiatric disorders to extract brain-based features for diagnosis and prognosis. The goal of this review is to discuss recent practices for evaluating machine learning applications to obsessive-compulsive and related disorders and to advance a novel strategy of building machine learning models based on a set of core brain regions for better performance, interpretability, and generalizability. Specifically, we argue that a core set of co-altered brain regions (namely 'core regions') comprising areas central to the underlying psychopathology enables the efficient construction of a predictive model to identify distinct symptom dimensions/clusters in individual patients. Hypothesis-driven and data-driven approaches are further introduced showing how core regions are identified from the entire brain. We demonstrate a broadly applicable roadmap for leveraging this core set-based strategy to accelerate the pursuit of neuroimaging-based markers for diagnosis and prognosis in a variety of psychiatric disorders.
机器学习方法越来越多地应用于精神障碍患者的神经影像学数据,以提取基于大脑的特征用于诊断和预后。本综述的目的是讨论最近用于评估应用于强迫症和相关障碍的机器学习的实践,并提出一种基于一组核心脑区构建机器学习模型的新策略,以提高性能、可解释性和通用性。具体来说,我们认为一组核心改变的脑区(即“核心区”)包括对潜在病理生理学至关重要的区域,能够有效地构建预测模型,以识别个体患者中不同的症状维度/聚类。进一步介绍了假设驱动和数据驱动的方法,展示了如何从整个大脑中识别核心区域。我们展示了一种广泛适用的路线图,利用这一基于核心集的策略来加速寻求各种精神障碍的基于神经影像学的诊断和预后标志物。