Irimia Andrei, Lei Xiaoyu, Torgerson Carinna M, Jacokes Zachary J, Abe Sumiko, Van Horn John D
Laboratory of Neuro Imaging, Keck School of Medicine, USC Mark and Mary Stevens Neuroimaging and Informatics Institute, University of Southern California, Los Angeles, CA, United States.
Ethel Percy Andrus Gerontology Center, Leonard Davis School of Gerontology, University of Southern California, Los Angeles, CA, United States.
Front Comput Neurosci. 2018 Nov 26;12:93. doi: 10.3389/fncom.2018.00093. eCollection 2018.
Despite substantial efforts, it remains difficult to identify reliable neuroanatomic biomarkers of autism spectrum disorder (ASD) based on magnetic resonance imaging (MRI) and diffusion tensor imaging (DTI). Studies which use standard statistical methods to approach this task have been hampered by numerous challenges, many of which are innate to the mathematical formulation and assumptions of general linear models (GLM). Although the potential of alternative approaches such as machine learning (ML) to identify robust neuroanatomic correlates of psychiatric disease has long been acknowledged, few studies have attempted to evaluate the abilities of ML to identify structural brain abnormalities associated with ASD. Here we use a sample of 110 ASD patients and 83 typically developing (TD) volunteers (95 females) to assess the suitability of support vector machines (SVMs, a robust type of ML) as an alternative to standard statistical inference for identifying structural brain features which can reliably distinguish ASD patients from TD subjects of either sex, thereby facilitating the study of the interaction between ASD diagnosis and sex. We find that SVMs can perform these tasks with high accuracy and that the neuroanatomic correlates of ASD identified using SVMs overlap substantially with those found using conventional statistical methods. Our results confirm and establish SVMs as powerful ML tools for the study of ASD-related structural brain abnormalities. Additionally, they provide novel insights into the volumetric, morphometric, and connectomic correlates of this epidemiologically significant disorder.
尽管付出了巨大努力,但基于磁共振成像(MRI)和扩散张量成像(DTI)来识别可靠的自闭症谱系障碍(ASD)神经解剖生物标志物仍然很困难。使用标准统计方法来处理这项任务的研究受到了诸多挑战的阻碍,其中许多挑战源于一般线性模型(GLM)的数学公式和假设。尽管机器学习(ML)等替代方法识别精神疾病强大神经解剖关联的潜力早已得到认可,但很少有研究尝试评估ML识别与ASD相关的脑结构异常的能力。在此,我们使用110名ASD患者和83名发育正常(TD)志愿者(95名女性)的样本,来评估支持向量机(SVM,一种强大的ML类型)作为标准统计推断的替代方法,用于识别能够可靠区分ASD患者与不同性别的TD受试者的脑结构特征的适用性,从而促进对ASD诊断与性别的相互作用的研究。我们发现SVM能够高精度地执行这些任务,并且使用SVM识别出的ASD神经解剖关联与使用传统统计方法发现的关联有很大重叠。我们的结果证实并确立了SVM作为研究与ASD相关的脑结构异常的强大ML工具。此外,它们为这种具有流行病学意义的疾病的体积、形态计量和连接组学关联提供了新的见解。