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Combining Deep and Hand-crafted MRI Features for Identifying Sex-specific Differences in Autism-Spectrum Disorder versus Controls

机译:结合深度和手工制作的MRI功能来识别自闭症谱系障碍与对照的性别差异

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Autism spectrum disorder (ASD) is a collection of neuro-developmental disorders with many symptoms, most prominently social impairment. It is known that there is a significant prevalence (4:1) of ASD in males compared to females. This suggests that there will likely be distinct neuro-anatomical structures across males and females that contribute to the distinct disease etiologies across the two sexes. Hence, in this work, we seek to develop "sex-specific" machine learning models that attempt to capture neuroanatomical differences in brain morphometry across ASD versus normal controls using structural MRI scans. Specifically, we train two different machine-learning models (one for male and one for female cohorts) consisting of "hand-crafted" morphometric features such as shape and surface area of brain parcellations from T1w MRI. with "deep features learned from a Dense Convolutional Network (DenseXet). Our methodology consists of first computing morphometric hand-crafted features (i.e. volume and surface features of different brain parcellations) from the training cohort obtained from the ABIDE-Ⅱ dataset consisting of 210 males and 98 females from structural Tlw MRI scans. We then employ feed-forward feature selection within a linear discriminant analysis classifier trained separately for the male and female cohorts, to distinguish ASD from normal controls. Additionally, we train a DenseNet model with 4 dense blocks (with 2 layers each) to extract deep features from Tlw MRI scans to distinguish ASD versus controls, separately for males and females. The deep features allow for capturing complementary data-driven feature differences in brain morphometry specific to male and female ASD cohort (versus normal controls). Finally, we combine the top morphometric and DenseNet features obtained from the training model and test them on the ABIDE I dataset for the male (n=85) and female (n=19) cohort separately, to distinguish ASD from normal controls. Our results demonstrated training and testing accuracies of 78% and 79% using hand-crafted features alone, 68% and 57% using DenseNet features alone, and 87% and 79% respectively using integrated hand-crafted and deep features for the male cohort. For the female cohort, we obtained accuracies of 81% and 84% with hand-crafted features alone, 71% and 62% for DenseNet features alone, and 81% and 84% with integrated hand-crafted and deep features, on training and testing sets respectively. With further optimization of deep features along with inclusion of a large multi-site cohort, our presented sex-specific ML approach could allow for improved diagnosis of ASD from controls, across males and females, using structural MRI scans.
机译:自闭症谱系障碍(ASD)是神经发育障碍的集合,具有许多症状,最主要的是社交障碍。众所周知,与女性相比,男性的ASD患病率很高(4:1)。这表明,在男性和女性中可能存在不同的神经解剖结构,这导致了两性的独特疾病病因。因此,在这项工作中,我们寻求开发“性别特定”的机器学习模型,以尝试使用结构MRI扫描捕获ASD与正常对照之间的大脑形态测量中的神经解剖学差异。具体来说,我们训练了两种不同的机器学习模型(一种针对男性,另一种针对女性),这些模型由“手工”形态特征组成,例如T1w MRI的大脑碎片的形状和表面积。具有“从密集卷积网络(DenseXet)中获悉的深层特征。我们的方法包括:首先从ABIDE-Ⅱ数据集(包括210个)中获得训练队列,以计算形态特征的手工特征(即,不同大脑碎片的体积和表面特征)结构Tlw MRI扫描中的男性和98位女性,然后在分别针对男性和女性队列训练的线性判别分析分类器中采用前馈特征选择,以区分ASD和正常对照,此外,我们还训练了一个DenseNet模型,其中包含4个密集块(每层2层)从Tlw MRI扫描中提取深层特征,以分别区分男性和女性的ASD与对照。深层特征允许捕获针对男性和女性ASD队列特定的大脑形态测量的互补数据驱动特征差异(与正常对照相比)。最后,我们结合了从训练模型中获得的最佳形态学特征和DenseNet特征并分别在男性(n = 85)和女性(n = 19)队列的ABIDE I数据集上对其进行测试,以区分ASD和正常对照。我们的结果表明,单独使用手工制作功能的培训和测试的准确度分别为78%和79%,仅使用DenseNet功能使用的培训功能和测试准确度分别为男性,分别为68%和57%,使用集成的手工制作和深度功能的准确度分别为87%和79%。对于女性队列,在培训和测试中,仅手工制作的功能就获得了81%和84%的准确性,仅DenseNet功能使用的就得到了71%和62%的准确度,而综合了手工制作和深度的功能就得到了81%和84%的准确度分别设置。随着深度特征的进一步优化以及大型多站点队列的纳入,我们提出的针对性别的ML方法可以使用结构MRI扫描从男性和女性的对照中改善对ASD的诊断。

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