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Using resting state functional MRI to build a personalized autism diagnosis system

机译:使用静止状态功能MRI构建个性化的自闭症诊断系统

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摘要

Autism spectrum disorder (ASD) is a neuro-developmental disorder associated with social impairments, communication difficulties, and restricted and repetitive behaviors. Yet, there is no confirmed cause identified for ASD. Studying the functional connectivity of the brain is an emerging technique used in diagnosing and understanding ASD. In this study, we obtained the resting state functional MRI data of 283 subjects from the National Database of Autism Research (NDAR). An automated autism diagnosis system was built using the data from NDAR. The proposed system is machine learning based. Power spectral densities (PSDs) of time courses corresponding to the spatial activation areas are used as input features, feeds them to a stacked autoencoder then builds a classifier using probabilistic support vector machines. Over the used dataset, around 90% of sensitivity, specificity and accuracy was achieved by our machine learning system. Moreover, the system generalization ability was checked over two different prevalence values, one for the general population and the other for the of high risk population, and the system proved to be very generalizable, especially among the population of high risk. The proposed system generates a full personalized report for each subject, along with identifying the global differences between ASD and typically developed (TD) subjects and its ability to diagnose autism. It shows the impacted areas and the severity of implications. From the clinical aspect, this report is considered very valuable as it helps in both predicting and understanding behavior of autistic subjects. Moreover, it helps in designing a plan for personalized treatment per each individual subject. The proposed work is taking a step towards achieving personalized medicine in autism which is the ultimate goal of our group’s research efforts in this area.
机译:自闭症谱系障碍(ASD)是一种与社交障碍,沟通困难以及受限和重复行为相关的神经发育障碍。但是,尚无确定的ASD病因。研究大脑的功能连接性是一种用于诊断和理解ASD的新兴技术。在这项研究中,我们从国家自闭症研究数据库(NDAR)获得了283位受试者的静息状态功能MRI数据。使用NDAR的数据构建了一个自动的自闭症诊断系统。所提出的系统是基于机器学习的。对应于空间激活区域的时程的功率谱密度(PSD)被用作输入特征,将其馈送到堆叠的自动编码器,然后使用概率支持向量机构建分类器。在使用的数据集上,我们的机器学习系统实现了大约90%的敏感性,特异性和准确性。此外,系统泛化能力在两个不同的患病率值上进行了检验,一个针对一般人群,另一个针对高风险人群,系统被证明具有很高的泛化能力,特别是在高风险人群中。拟议的系统为每个受试者生成完整的个性化报告,并识别ASD和典型发展的(TD)受试者之间的总体差异及其诊断自闭症的能力。它显示了受影响的区域和影响的严重性。从临床角度来看,该报告被认为非常有价值,因为它有助于预测和理解自闭症患者的行为。此外,它有助于设计针对每个个体受试者的个性化治疗计划。拟议的工作正在朝着实现自闭症个性化医学迈出一步,这是我们小组在该领域研究工作的最终目标。

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