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首页> 外文期刊>NeuroImage >Predictive models of autism spectrum disorder based on brain regional cortical thickness.
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Predictive models of autism spectrum disorder based on brain regional cortical thickness.

机译:基于脑区域皮质厚度的自闭症谱系障碍的预测模型。

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Autism spectrum disorder (ASD) is a neurodevelopmental disorder with a wide phenotypic range, often affecting personality and communication. Previous voxel-based morphometry (VBM) studies of ASD have identified both gray- and white-matter volume changes. However, the cerebral cortex is a 2-D sheet with a highly folded and curved geometry, which VBM cannot directly measure. Surface-based morphometry (SBM) has the advantage of being able to measure cortical surface features, such as thickness. The goals of this study were twofold: to construct diagnostic models for ASD, based on regional thickness measurements extracted from SBM, and to compare these models to diagnostic models based on volumetric morphometry. Our study included 22 subjects with ASD (mean age 9.2+/-2.1 years) and 16 volunteer controls (mean age 10.0+/-1.9 years). Using SBM, we obtained regional cortical thicknesses for 66 brain structures for each subject. In addition, we obtained volumes for the same 66 structures for these subjects. To generate diagnostic models, we employed four machine-learning techniques: support vector machines (SVMs), multilayer perceptrons (MLPs), functional trees (FTs), and logistic model trees (LMTs). We found that thickness-based diagnostic models were superior to those based on regional volumes. For thickness-based classification, LMT achieved the best classification performance, with accuracy=87%, area under the receiver operating characteristic (ROC) curve (AUC)=0.93, sensitivity=95%, and specificity=75%. For volume-based classification, LMT achieved the highest accuracy, with accuracy=74%, AUC=0.77, sensitivity=77%, and specificity=69%. The thickness-based diagnostic model generated by LMT included 7 structures. Relative to controls, children with ASD had decreased cortical thickness in the left and right pars triangularis, left medial orbitofrontal gyrus, left parahippocampal gyrus, and left frontal pole, and increased cortical thickness in the left caudal anterior cingulate and left precuneus. Overall, thickness-based classification outperformed volume-based classification across a variety of classification methods.
机译:自闭症谱系障碍(ASD)是一种具有广泛表型的神经发育障碍,通常会影响人格和交流。先前的ASD基于体素的形态学(VBM)研究已经确定了灰色和白色物质的体积变化。然而,大脑皮层是具有高度折叠和弯曲几何形状的二维薄片,VBM无法直接测量该薄片。基于表面的形态学(SBM)的优势在于能够测量皮质表面特征(例如厚度)。这项研究的目标是双重的:基于从SBM中提取的区域厚度测量值来构建ASD诊断模型,并将这些模型与基于体积形态学的诊断模型进行比较。我们的研究包括22名自闭症患者(平均年龄9.2 +/- 2.1岁)和16名志愿者对照(平均年龄10.0 +/- 1.9岁)。使用SBM,我们为每个受试者获得了66个大脑结构的区域皮层厚度。此外,对于这些主题,我们获得了相同的66个结构的体积。为了生成诊断模型,我们采用了四种机器学习技术:支持向量机(SVM),多层感知器(MLP),功能树(FT)和逻辑模型树(LMT)。我们发现基于厚度的诊断模型优于基于区域体积的诊断模型。对于基于厚度的分类,LMT达到了最佳分类性能,准确度= 87%,接收器工作特性(ROC)曲线(AUC)曲线下的面积= 0.93,灵敏度= 95%,特异性= 75%。对于基于体积的分类,LMT达到了最高的准确度,准确度为74%,AUC为0.77,灵敏度为77%,特异性为69%。 LMT生成的基于厚度的诊断模型包括7个结构。相对于对照组,患有ASD的儿童的左,右三角肌,左眼眶额回,左海马旁回和左额极皮层厚度减小,而左尾前扣带和左前突的皮层厚度增加。总体而言,在多种分类方法中,基于厚度的分类优于基于体积的分类。

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