Zaboski Brian A, Bednarek Lora
Yale School of Medicine, Department of Psychiatry, Yale University, New Haven, CT 06510, USA.
Department of Psychology, University of California, San Diego, CA 92093, USA.
J Clin Med. 2025 Apr 3;14(7):2442. doi: 10.3390/jcm14072442.
Obsessive-compulsive disorder (OCD) is a complex psychiatric condition characterized by significant heterogeneity in symptomatology and treatment response. Advances in neuroimaging, EEG, and other multimodal datasets have created opportunities to identify biomarkers and predict outcomes, yet traditional statistical methods often fall short in analyzing such high-dimensional data. Deep learning (DL) offers powerful tools for addressing these challenges by leveraging architectures capable of classification, prediction, and data generation. This brief review provides an overview of five key DL architectures-feedforward neural networks, convolutional neural networks, recurrent neural networks, generative adversarial networks, and transformers-and their applications in OCD research and clinical practice. We highlight how these models have been used to identify the neural predictors of treatment response, diagnose and classify OCD, and advance precision psychiatry. We conclude by discussing the clinical implementation of DL, summarizing its advances and promises in OCD, and underscoring key challenges for the field.
强迫症(OCD)是一种复杂的精神疾病,其症状学和治疗反应具有显著的异质性。神经影像学、脑电图及其他多模态数据集的进展为识别生物标志物和预测结果创造了机会,但传统统计方法在分析此类高维数据时往往力不从心。深度学习(DL)通过利用能够进行分类、预测和数据生成的架构,为应对这些挑战提供了强大工具。本简要综述概述了五种关键的深度学习架构——前馈神经网络、卷积神经网络、循环神经网络、生成对抗网络和变换器——及其在强迫症研究和临床实践中的应用。我们强调了这些模型如何被用于识别治疗反应的神经预测指标、诊断和分类强迫症,以及推动精准精神病学的发展。我们通过讨论深度学习的临床应用、总结其在强迫症方面的进展和前景,并强调该领域的关键挑战来结束本文。