Department of Biomedical Engineering, New Jersey Institute of Technology, Newark, NJ, USA.
Icahn School of Medicine at Mount Sinai, New York, NY, USA.
Transl Psychiatry. 2023 Jul 1;13(1):236. doi: 10.1038/s41398-023-02536-w.
Attention-deficit/hyperactivity disorder (ADHD) is a highly prevalent and heterogeneous neurodevelopmental disorder in children and has a high chance of persisting in adulthood. The development of individualized, efficient, and reliable treatment strategies is limited by the lack of understanding of the underlying neural mechanisms. Diverging and inconsistent findings from existing studies suggest that ADHD may be simultaneously associated with multivariate factors across cognitive, genetic, and biological domains. Machine learning algorithms are more capable of detecting complex interactions between multiple variables than conventional statistical methods. Here we present a narrative review of the existing machine learning studies that have contributed to understanding mechanisms underlying ADHD with a focus on behavioral and neurocognitive problems, neurobiological measures including genetic data, structural magnetic resonance imaging (MRI), task-based and resting-state functional MRI (fMRI), electroencephalogram, and functional near-infrared spectroscopy, and prevention and treatment strategies. Implications of machine learning models in ADHD research are discussed. Although increasing evidence suggests that machine learning has potential in studying ADHD, extra precautions are still required when designing machine learning strategies considering the limitations of interpretability and generalization.
注意缺陷多动障碍(ADHD)是一种在儿童中普遍存在且具有高度异质性的神经发育障碍,在成年后有很高的持续存在的可能性。由于缺乏对潜在神经机制的理解,限制了个体化、高效和可靠的治疗策略的发展。现有研究的分歧和不一致的发现表明,ADHD 可能同时与认知、遗传和生物学领域的多种因素相关。机器学习算法比传统的统计方法更能检测多个变量之间的复杂相互作用。在这里,我们对现有的有助于理解 ADHD 潜在机制的机器学习研究进行了叙述性综述,重点关注行为和神经认知问题、神经生物学测量,包括遗传数据、结构磁共振成像(MRI)、基于任务和静息状态的功能磁共振成像(fMRI)、脑电图和功能近红外光谱,以及预防和治疗策略。讨论了机器学习模型在 ADHD 研究中的应用。尽管越来越多的证据表明机器学习在研究 ADHD 方面具有潜力,但在设计机器学习策略时,考虑到可解释性和泛化性的局限性,仍需要额外的预防措施。