Shane Matthew S, Denomme William J
Ontario Tech University, Forensic Psychology, Oshawa, ON, Canada.
Personal Neurosci. 2021 Nov 15;4:e6. doi: 10.1017/pen.2021.2. eCollection 2021.
By some accounts, as many as 93% of individuals diagnosed with antisocial personality disorder (ASPD) or psychopathy also meet criteria for some form of substance use disorder (SUD). This high level of comorbidity, combined with an overlapping biopsychosocial profile, and potentially interacting features, has made it difficult to delineate the shared/unique characteristics of each disorder. Moreover, while rarely acknowledged, both SUD and antisociality exist as highly heterogeneous disorders in need of more targeted parcellation. While emerging data-driven nosology for psychiatric disorders (e.g., Research Domain Criteria (RDoC), Hierarchical Taxonomy of Psychopathology (HiTOP)) offers the opportunity for a more systematic delineation of the externalizing spectrum, the interrogation of large, complex neuroimaging-based datasets may require data-driven approaches that are not yet widely employed in psychiatric neuroscience. With this in mind, the proposed article sets out to provide an introduction into machine learning methods for neuroimaging that can help parse comorbid, heterogeneous externalizing samples. The modest machine learning work conducted to date within the externalizing domain demonstrates the potential utility of the approach but remains highly nascent. Within the paper, we make suggestions for how future work can make use of machine learning methods, in combination with emerging psychiatric nosology systems, to further diagnostic and etiological understandings of the externalizing spectrum. Finally, we briefly consider some challenges that will need to be overcome to encourage further progress in the field.
据一些统计,被诊断患有反社会人格障碍(ASPD)或精神病态的个体中,多达93%的人也符合某种形式的物质使用障碍(SUD)的标准。这种高共病率,再加上重叠的生物心理社会特征以及潜在的相互作用特征,使得难以界定每种障碍的共同/独特特征。此外,虽然很少被承认,但物质使用障碍和反社会倾向都是高度异质性的障碍,需要更有针对性的分类。虽然新兴的数据驱动的精神疾病分类法(例如,研究领域标准(Research Domain Criteria,RDoC)、精神病理学层次分类法(Hierarchical Taxonomy of Psychopathology,HiTOP))为更系统地描绘外化谱系提供了机会,但对基于神经影像学的大型复杂数据集的研究可能需要尚未在精神神经科学中广泛应用的数据驱动方法。考虑到这一点,本文旨在介绍用于神经影像学的机器学习方法,这些方法有助于剖析共病的、异质性的外化样本。迄今为止,在外化领域开展的适度机器学习工作证明了该方法的潜在效用,但仍处于非常初期的阶段。在本文中,我们就未来的工作如何结合新兴的精神疾病分类系统利用机器学习方法,以进一步理解外化谱系的诊断和病因提出了建议。最后,我们简要考虑了为鼓励该领域取得进一步进展需要克服的一些挑战。