Department of Theoretical Neuroscience, Central Institute of Mental Health, Medical Faculty Mannheim/Heidelberg University, 68159, Mannheim, Germany.
Department of Psychiatry and Psychotherapy, Central Institute of Mental Health, Medical Faculty Mannheim/Heidelberg University, 68159, Mannheim, Germany.
Mol Psychiatry. 2019 Nov;24(11):1583-1598. doi: 10.1038/s41380-019-0365-9. Epub 2019 Feb 15.
Machine and deep learning methods, today's core of artificial intelligence, have been applied with increasing success and impact in many commercial and research settings. They are powerful tools for large scale data analysis, prediction and classification, especially in very data-rich environments ("big data"), and have started to find their way into medical applications. Here we will first give an overview of machine learning methods, with a focus on deep and recurrent neural networks, their relation to statistics, and the core principles behind them. We will then discuss and review directions along which (deep) neural networks can be, or already have been, applied in the context of psychiatry, and will try to delineate their future potential in this area. We will also comment on an emerging area that so far has been much less well explored: by embedding semantically interpretable computational models of brain dynamics or behavior into a statistical machine learning context, insights into dysfunction beyond mere prediction and classification may be gained. Especially this marriage of computational models with statistical inference may offer insights into neural and behavioral mechanisms that could open completely novel avenues for psychiatric treatment.
机器学习和深度学习方法是人工智能的核心,如今已在许多商业和研究环境中成功应用并产生了深远影响。它们是进行大规模数据分析、预测和分类的强大工具,尤其是在数据非常丰富的环境(“大数据”)中,并且已经开始应用于医学领域。在这里,我们将首先概述机器学习方法,重点介绍深度学习和循环神经网络、它们与统计学的关系以及它们背后的核心原理。然后,我们将讨论和回顾(深度)神经网络在精神病学背景下的应用方向,并尝试描绘它们在该领域的未来潜力。我们还将评论一个新兴领域,到目前为止,这个领域的研究还远远不够:通过将大脑动力学或行为的语义可解释计算模型嵌入到统计机器学习环境中,可以深入了解不仅仅是预测和分类的功能障碍。特别是计算模型与统计推断的结合,可以深入了解神经和行为机制,为精神疾病治疗开辟全新途径。