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Linking Adolescent Brain MRI to Obesity via Deep Multi-cue Regression Network

机译:通过深度多提示回归网络将青少年脑MRI连接到肥胖

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Adolescent obesity has become a significant public health problem for the potential risk of various diseases in later life. Recent biomedical studies have revealed that obesity is associated with structural changes in the brain. Thus the computer-aided analysis of adolescent obesity based on brain MRI is of great clinical value. While previous methods typically rely on hand-crafted MRI features for obesity prediction, we propose to link adolescent obesity and brain MRI through a deep learning framework. The newly released brain MRI data from the large-scale Adolescent Brain Cognitive Development (ABCD) study has paved the way for such an exploration. In this paper, we propose a deep multi-cue regression network (DMRN) for MRI-based analysis of adolescent obesity. Specially, in DMRN, we first design a feature encoding network to automatically extract high-dimensional features from brain MR images, followed by a regression network to predict Body Mass Index (BMI) scores for obesity analysis. To take advantage of other prior knowledge of studied subjects, our DMRN framework further explicitly incorporates the demographic information (e.g., waist circumference) of subjects into the learning process. Experiments have been conducted on 3,779 subjects with T1-weighted MRIs from the ABCD dataset. The results have provided some useful findings: (1) we consolidate the relationship between adolescent obesity and brain MRI as well as demographic information through a deep learning model; (2) we use visualization method to explain the prediction results by highlighting potential biomarkers in the brain MR images that are associated with adolescent obesity.
机译:青少年肥胖症已成为潜在的潜在疾病在后期生活中的潜在风险。最近的生物医学研究表明,肥胖与大脑的结构变化有关。因此,基于脑MRI的青少年肥胖的计算机辅助分析具有很大的临床价值。虽然以前的方法通常依赖于肥胖预测的手工制作的MRI特征,但我们建议通过深入的学习框架将青少年肥胖症和脑MRI联系起来。来自大规模青少年脑认知发展(ABCD)研究的新发布的脑MRI数据已经为这种探索铺平了道路。在本文中,我们提出了一种深度多线CUE回归网络(DMRN),用于青少年肥胖的基于MRI的分析。特别地,在DMRN中,我们首先设计一个编码网络,自动从脑MR图像中提取高维特征,然后是回归网络来预测肥胖分析的体重指数(BMI)分数。为了利用所研究的受试者的其他先验知识,我们的DMRN框架进一步明确地将受试者的人口统计信息(例如,腰围)结合到学习过程中。在ABCD数据集中的3,779个受试者上进行了实验。结果提供了一些有用的结果:(1)我们通过深入学习模型巩固青少年肥胖和脑MRI之间的关系以及人口统计信息; (2)我们使用可视化方法来解释通过突出与青少年肥胖症相关的脑MR图像中的潜在生物标志物来解释预测结果。

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