架构配置、图谱粒度和功能连通性对自闭症谱系障碍的诊断价值。

Cooper J Mellema, Alex Treacher, Kevin P Nguyen, Albert Montillo
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引用次数: 2

摘要

目前,自闭症谱系障碍(ASD)的诊断依赖于临床专家对行为测试的主观、耗时的评估。非侵入性功能MRI (fMRI)表征大脑连接,可用于告知诊断和民主化医学。然而,从功能磁共振成像成功构建预测模型,如深度学习模型,需要解决模型架构的关键选择,包括层数和每层神经元的数量。同时,从fMRI中获得功能连接(FC)特征需要选择具有适当粒度的图谱。一旦建立了准确的诊断模型,确定哪些特征可以预测ASD以及是否在图谱粒度级别上学习到类似的特征是至关重要的。识别新的重要特征扩展了我们对ASD生物学基础的理解,而识别证实过去发现的特征和跨图谱水平的扩展则给模型注入了信心。为了确定合适的体系结构配置,将比较高性能模型与低性能模型配置的概率分布。为了确定地图集粒度的影响,从具有3个粒度级别的地图集中获得连通性特征,并根据排列特征的重要性对重要特征进行排序。结果表明,性能最好的模型使用2-4个隐藏层,每层使用16-64个神经元,这取决于粒度。在所有3个图谱粒度水平上被确定为重要的连通性特征包括FC到辅助运动回和语言关联皮层,这些区域的异常发育与ASD中常见的社交和感觉处理缺陷有关。重要的是,小脑,通常不包括在功能分析中,也被确定为一个区域,其异常连接是ASD的高度预测。本研究的结果确定了未来ASD研究的重要区域,有助于帮助选择网络架构,并有助于确定适当的粒度水平,以促进ASD准确诊断模型的发展。
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Architectural configurations, atlas granularity and functional connectivity with diagnostic value in Autism Spectrum Disorder.

Currently, the diagnosis of Autism Spectrum Disorder (ASD) is dependent upon a subjective, time-consuming evaluation of behavioral tests by an expert clinician. Non-invasive functional MRI (fMRI) characterizes brain connectivity and may be used to inform diagnoses and democratize medicine. However, successful construction of predictive models, such as deep learning models, from fMRI requires addressing key choices about the model's architecture, including the number of layers and number of neurons per layer. Meanwhile, deriving functional connectivity (FC) features from fMRI requires choosing an atlas with an appropriate level of granularity. Once an accurate diagnostic model has been built, it is vital to determine which features are predictive of ASD and if similar features are learned across atlas granularity levels. Identifying new important features extends our understanding of the biological underpinnings of ASD, while identifying features that corroborate past findings and extend across atlas levels instills model confidence. To identify aptly suited architectural configurations, probability distributions of the configurations of high versus low performing models are compared. To determine the effect of atlas granularity, connectivity features are derived from atlases with 3 levels of granularity and important features are ranked with permutation feature importance. Results show the highest performing models use between 2-4 hidden layers and 16-64 neurons per layer, granularity dependent. Connectivity features identified as important across all 3 atlas granularity levels include FC to the supplementary motor gyrus and language association cortex, regions whose abnormal development are associated with deficits in social and sensory processing common in ASD. Importantly, the cerebellum, often not included in functional analyses, is also identified as a region whose abnormal connectivity is highly predictive of ASD. Results of this study identify important regions to include in future studies of ASD, help assist in the selection of network architectures, and help identify appropriate levels of granularity to facilitate the development of accurate diagnostic models of ASD.

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