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Topological Properties of Resting-State fMRI Functional Networks Improve Machine Learning-Based Autism Classification

机译:静止状态功能磁共振成像功能网络的拓扑特性改善了基于机器学习的自闭症分类

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摘要

Automatic algorithms for disease diagnosis are being thoroughly researched for use in clinical settings. They usually rely on pre-identified biomarkers to highlight the existence of certain problems. However, finding such biomarkers for neurodevelopmental disorders such as Autism Spectrum Disorder (ASD) has challenged researchers for many years. With enough data and computational power, machine learning (ML) algorithms can be used to interpret the data and extract the best biomarkers from thousands of candidates. In this study, we used the fMRI data of 816 individuals enrolled in the Autism Brain Imaging Data Exchange (ABIDE) to introduce a new biomarker extraction pipeline for ASD that relies on the use of graph theoretical metrics of fMRI-based functional connectivity to inform a support vector machine (SVM). Furthermore, we split the dataset into 5 age groups to account for the effect of aging on functional connectivity. Our methodology achieved better results than most state-of-the-art investigations on this dataset with the best model for the >30 years age group achieving an accuracy, sensitivity, and specificity of 95, 97, and 95%, respectively. Our results suggest that measures of centrality provide the highest contribution to the classification power of the models.
机译:疾病诊断的自动算法正在深入研究中,以用于临床环境。他们通常依靠预先确定的生物标记物来突出某些问题的存在。然而,找到这样的神经发育障碍的生物标记物,例如自闭症谱系障碍(ASD),已经对研究人员提出了很多挑战。有了足够的数据和计算能力,机器学习(ML)算法可用于解释数据并从成千上万的候选样本中提取最佳生物标记。在这项研究中,我们使用了自闭症脑成像数据交换(ABIDE)中登记的816名个体的fMRI数据,为ASD引入了新的生物标记物提取流程,该流程依赖于基于fMRI的功能连通性的图形理论指标的使用,支持向量机(SVM)。此外,我们将数据集分为5个年龄组,以说明老化对功能连接性的影响。我们的方法比该数据集上的大多数最新研究获得了更好的结果,对于30岁以上年龄组的最佳模型,其准确率,灵敏度和特异性分别达到95%,97%和95%。我们的结果表明,中心度的度量为模型的分类能力提供了最大的贡献。

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