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Multiple Deep Learning Architectures Achieve Superior Performance Diagnosing Autism Spectrum Disorder Using Features Previously Extracted From Structural And Functional Mri

机译:多种深度学习架构使用先前从结构和功能Mri中提取的特征实现了出色的诊断自闭症频谱障碍的性能

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The diagnosis of Autism Spectrum Disorder (ASD) is a subjective process requiring clinical expertise in neurodevelopmental disorders. Since such expertise is not available at many clinics, automated diagnosis using machine learning (ML) algorithms would be of great value to both clinicians and the imaging community to increase the diagnoses' availability and reproducibility while reducing subjectivity. This research systematically compares the performance of classifiers using over 900 subjects from the IMPAC database [1], using the database's derived anatomical and functional features to diagnose a subject as autistic or healthy. In total 12 classifiers are compared from 3 categories including: 6 nonlinear shallow ML models, 3 linear shallow models, and 3 deep learning models. When evaluated with an AUC ROC performance metric, results include: (1) amongst the shallow learning methods, linear models outperformed nonlinear models, agreeing with [2]. (2) Deep learning models outperformed shallow ML models. (3) The best model was a dense feedforward network, achieving 0.80 AUC which compares to the recently reported $0.79 pm 0.01$ AUC average of the top 10 methods from the IMPAC challenge [3]. These results demonstrate that even when using features derived from imaging data, deep learning methods can provide additional predictive accuracy over classical methods.
机译:自闭症谱系障碍(ASD)的诊断是一个主观过程,需要神经发育障碍的临床专业知识。由于许多诊所都没有这样的专业知识,因此使用机器学习(ML)算法进行自动诊断对于临床医生和成像社区都具有巨大的价值,以增加诊断的可用性和可重复性,同时降低主观性。这项研究系统地比较了IMPAC数据库中使用900多个对象的分类器的性能[1],并使用该数据库派生的解剖学和功能特征来诊断自闭症或健康对象。总共对来自3个类别的12个分类器进行了比较,包括:6个非线性浅层ML模型,3个线性浅层模型和3个深度学习模型。当使用AUC ROC性能指标进行评估时,结果包括:(1)在浅层学习方法中,线性模型优于非线性模型,与[2]一致。 (2)深度学习模型优于浅层ML模型。 (3)最好的模型是密集的前馈网络,达到0.80 AUC,与最近报告的IMPAC挑战的前10种方法的平均$ 0.79 \ pm 0.01 $ AUC相比[3]。这些结果表明,即使使用从影像数据得出的特征,深度学习方法也可以提供比传统方法更高的预测准确性。

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