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Identification of Binge Drinkers via Convolutional Neural Network and Support Vector Machine

机译:通过卷积神经网络和支持向量机识别泪流饮用者

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Studies have described neural and psychosocial markers of binge drinking. Deep learning would address how well these markers distinguish binge and non-binge drinkers. We examined the data of 180 binge and 282 non-binge drinking young adults from the Human Connectome Project. We randomly selected 90% of the subjects as training sample to build convolutional neural network (CNN) and support vector machine (SVM) models, and evaluated their performance in the remaining 10%. Imaging data were processed with published routines. 2D-/3D-CNN of gray matter volumes (GMV) exhibited an area under the curve (AUC) of 0.802/0.812 and SVM of psychosocial measures, GMVs and cortical thickness each exhibited an AUC of 0.883, 0.746 and 0.589 in the classification of binge and non-binge drinkers. Among the psychosocial measures, rule breaking behavior score showed the greatest difference and contributed most significantly to the classification in SVM model. Among the GMVs, left cerebellum showed the greatest difference in GMV and contributed most significantly to the classification in SVM model. These findings show that, associated with subtle cerebral volumetric differences, young adult binge drinking is best predicted by psvchosocial measures.
机译:研究描述了狂欢饮酒的神经和心理社会标志。深度学习将解决这些标记区分狂暴和非狂饮人员的程度。我们研究了从人类连接项目的180次狂欢和282个非狂犬病饮用的年轻成人的数据。我们随机选择了90%的受试者作为培训样本,以构建卷积神经网络(CNN)和支持向量机(SVM)模型,并在其余10中评估其性能。已发布的例程处理成像数据。 2D- / 3D-CNN的灰质体积(GMV)在0.802 / 0.812的曲线(AUC)下的面积显示为0.802 / 0.812,并且心理社会措施的SVM,每个展会和皮质厚度均为0.883,0.746和0.589的AUC狂欢和非狂饮者。在心理社会措施中,规则破坏行为分数显示出最大的差异,并为SVM模型的分类最大程度地贡献。在GMVS中,左脑细胞在GMV中显示出最大的差异,并在SVM模型中的分类中最重大贡献。这些发现表明,与微妙的脑体积差异相关,幼年成年人饮酒最适合通过PSVChocial措施预测。

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