利用胶囊网络改进自闭症谱系障碍的诊断并解开其异质功能连接模式。

Zhicheng Jiao, Hongming Li, Yong Fan
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引用次数: 10

摘要

功能连接(FC)分析是帮助诊断和阐明自闭症谱系障碍(ASD)的神经生理基础的一种有吸引力的工具。许多机器学习方法已经被开发出来,以区分基于FC测量的ASD患者和健康对照,并识别ASD的异常FC模式。特别是,一些研究表明,深度学习模型可以比传统的机器学习方法获得更好的ASD诊断性能。虽然现有的机器学习方法已经取得了很好的分类性能,但它们并没有明确地模拟ASD的异质性,无法解开ASD的异质性FC模式。为了提高ASD的诊断水平和更好地了解ASD,我们采用胶囊网络(CapsNets)建立基于FC测量的ASD患者与健康对照的分类器,并根据不同的FC模式将ASD患者分为不同的组。基于大型多站点数据集的评估结果表明,我们的方法不仅获得了比最先进的替代机器学习方法更好的分类性能,而且还根据CapsNets分类模型的矢量化分类输出确定了具有临床意义的ASD患者亚组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Diagnosis of Autism Spectrum Disorder and Disentangling its Heterogeneous Functional Connectivity Patterns Using Capsule Networks.

Functional connectivity (FC) analysis is an appealing tool to aid diagnosis and elucidate the neurophysiological underpinnings of autism spectrum disorder (ASD). Many machine learning methods have been developed to distinguish ASD patients from healthy controls based on FC measures and identify abnormal FC patterns of ASD. Particularly, several studies have demonstrated that deep learning models could achieve better performance for ASD diagnosis than conventional machine learning methods. Although promising classification performance has been achieved by the existing machine learning methods, they do not explicitly model heterogeneity of ASD, incapable of disentangling heterogeneous FC patterns of ASD. To achieve an improved diagnosis and a better understanding of ASD, we adopt capsule networks (CapsNets) to build classifiers for distinguishing ASD patients from healthy controls based on FC measures and stratify ASD patients into groups with distinct FC patterns. Evaluation results based on a large multi-site dataset have demonstrated that our method not only obtained better classification performance than state-of-the-art alternative machine learning methods, but also identified clinically meaningful subgroups of ASD patients based on their vectorized classification outputs of the CapsNets classification model.

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