Autism spectrum disorder classification based on interpersonal neural synchrony: Can classification be improved by dyadic neural biomarkers using unsupervised graph representation learning?

C. Gerloff, K. Konrad, Jana A. Kruppa, M. Schulte-Rüther, Vanessa Reindl
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引用次数: 1

Abstract

. Research in machine learning for autism spectrum disorder (ASD) classification bears the promise to improve clinical diagnoses. However, recent studies in clinical imaging have shown the limited generalization of biomarkers across and beyond benchmark datasets. Despite increasing model complexity and sample size in neuroimaging, the classification performance of ASD remains far away from clinical application. This raises the question of how we can overcome these barriers to develop early biomarkers for ASD. One approach might be to rethink how we operationalize the theoretical basis of this disease in machine learning models. Here we introduced unsupervised graph representations that explicitly map the neural mechanisms of a core aspect of ASD, deficits in dyadic social interaction, as assessed by dual brain record-ings, termed hyperscanning, and evaluated their predictive performance. The proposed method differs from existing approaches in that it is more suitable to capture social interaction deficits on a neural level and is applicable to young children and infants. First results from functional near-infrared spectroscopy data indicate potential predictive capacities of a task-agnostic, interpretable graph representation. This first effort to leverage interaction-related deficits on neural level to classify ASD may stimulate new approaches and methods to enhance existing models to achieve developmental ASD biomarkers in the future.
基于人际神经同步性的自闭症谱系障碍分类:使用无监督图表示学习的二元神经生物标记可以改进分类吗?
. 自闭症谱系障碍(ASD)分类的机器学习研究有望改善临床诊断。然而,最近的临床影像学研究表明,生物标志物在基准数据集之外的泛化有限。尽管神经影像学的模型复杂性和样本量不断增加,但ASD的分类性能仍远未达到临床应用。这就提出了一个问题,即我们如何克服这些障碍,开发ASD的早期生物标志物。一种方法可能是重新思考我们如何在机器学习模型中操作这种疾病的理论基础。在这里,我们引入了无监督图表示,明确地描绘了ASD核心方面的神经机制,即二元社会互动缺陷,通过双脑记录(称为超扫描)进行评估,并评估了它们的预测性能。所提出的方法与现有方法的不同之处在于,它更适合在神经水平上捕捉社会互动缺陷,适用于幼儿和婴儿。首先,来自功能性近红外光谱数据的结果表明,任务不可知的、可解释的图形表示具有潜在的预测能力。这是利用神经水平上的相互作用相关缺陷来分类ASD的第一次努力,可能会刺激新的方法和方法来增强现有模型,以在未来实现发展性ASD生物标志物。
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