Komatsu Hidetoshi, Watanabe Emi, Fukuchi Mamoru
Medical Affairs, Kyowa Pharmaceutical Industry Co., Ltd., Osaka 530-0005, Japan.
Department of Biological Science, Graduate School of Science, Nagoya University, Nagoya City 464-8602, Japan.
Biomedicines. 2021 Apr 8;9(4):403. doi: 10.3390/biomedicines9040403.
Learning and environmental adaptation increase the likelihood of survival and improve the quality of life. However, it is often difficult to judge optimal behaviors in real life due to highly complex social dynamics and environment. Consequentially, many different brain regions and neuronal circuits are involved in decision-making. Many neurobiological studies on decision-making show that behaviors are chosen through coordination among multiple neural network systems, each implementing a distinct set of computational algorithms. Although these processes are commonly abnormal in neurological and psychiatric disorders, the underlying causes remain incompletely elucidated. Machine learning approaches with multidimensional data sets have the potential to not only pathologically redefine mental illnesses but also better improve therapeutic outcomes than DSM/ICD diagnoses. Furthermore, measurable endophenotypes could allow for early disease detection, prognosis, and optimal treatment regime for individuals. In this review, decision-making in real life and psychiatric disorders and the applications of machine learning in brain imaging studies on psychiatric disorders are summarized, and considerations for the future clinical translation are outlined. This review also aims to introduce clinicians, scientists, and engineers to the opportunities and challenges in bringing artificial intelligence into psychiatric practice.
学习和环境适应增加了生存的可能性并改善了生活质量。然而,由于高度复杂的社会动态和环境,在现实生活中往往难以判断最佳行为。因此,许多不同的脑区和神经回路参与了决策过程。许多关于决策的神经生物学研究表明,行为是通过多个神经网络系统之间的协调来选择的,每个系统都执行一组独特的计算算法。尽管这些过程在神经和精神疾病中通常是异常的,但其潜在原因仍未完全阐明。具有多维数据集的机器学习方法不仅有可能从病理学角度重新定义精神疾病,而且比DSM/ICD诊断更能改善治疗效果。此外,可测量的内表型可以实现疾病的早期检测、预后评估以及为个体制定最佳治疗方案。在这篇综述中,总结了现实生活和精神疾病中的决策以及机器学习在精神疾病脑成像研究中的应用,并概述了未来临床转化的考虑因素。这篇综述还旨在向临床医生、科学家和工程师介绍将人工智能引入精神科实践所面临的机遇和挑战。