Deep transfer learning of brain shape morphometry predicts Body Mass Index (BMI) in the UK Biobank

L. Zeng, C. Ching, Zvart Abaryan, S. Thomopoulos, Kai Gao, A. Zhu, A. Ragothaman, Faisal M. Rashid, Marc Harrison, Lauren E. Salminen, Brandalyn C. Riedel, N. Jahanshad, D. Hu, P. Thompson
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Abstract

Prior studies show that obesity is associated with accelerated brain aging and specific patterns of brain atrophy. Finerscale mapping of the effects of obesity on the brain would help to understand how it promotes or interacts with disease effects, but so far, the influence of the obesity on finer-scale maps of anatomy remains unclear. In this study, we propose a deep transfer learning network based on Optimal Mass Transport (OMTNet) to classify individuals with normal versus overweight/obese body mass index (BMI) using vertex-wise brain shape metrics extracted from structural MRI scans from the UK Biobank study. First, an area-preserving mapping was used to project 3D brain surface meshes onto 2D planar meshes. Vertex-wise maps of brain metrics such as cortical thickness were mapped into 2D planar images for each brain surface extracted from each person’s MRI scan. Second, several popular networks pretrained on the ImageNet database, i.e., VGG19, ResNet152 and DenseNet201, were used for transfer learning of brain shape metrics. We combined all shape metrics and generated a metric ensemble classification, and then combined all three networks and generated a network ensemble classification. The results reveal that transfer learning always outperforms direct learning, and we obtained accuracies of 65.6±0.7% and 62.7±0.7% for transfer and direct learning in the network ensemble classification, respectively. Moreover, surface area and cortical thickness, especially in the left hemisphere, consistently achieved the highest classification accuracies, together with subcortical shape metrics. The findings suggest a significant and classifiable influence of obesity on brain shape. Our proposed OMTNet method may offer a powerful transfer learning framework that can be extended to other vertex-wise brain structural and functional imaging measures.
在英国生物银行,脑形态测量的深度迁移学习预测身体质量指数(BMI)
先前的研究表明,肥胖与大脑加速老化和特定的脑萎缩模式有关。肥胖对大脑影响的精细图谱将有助于了解它是如何促进或与疾病影响相互作用的,但到目前为止,肥胖对精细解剖学图谱的影响仍不清楚。在这项研究中,我们提出了一个基于最优质量传输(OMTNet)的深度迁移学习网络,使用从英国生物银行研究的结构MRI扫描中提取的顶点脑形状指标,对正常与超重/肥胖体重指数(BMI)的个体进行分类。首先,使用保面积映射将三维脑表面网格投影到二维平面网格上。从每个人的MRI扫描中提取每个脑表面的二维平面图像,将大脑指标(如皮质厚度)的逐顶点图映射为二维平面图像。其次,使用在ImageNet数据库上预训练的几个流行网络VGG19、ResNet152和DenseNet201进行脑形状指标的迁移学习。我们结合所有的形状度量并生成一个度量集合分类,然后结合所有三个网络并生成一个网络集合分类。结果表明,迁移学习始终优于直接学习,在网络集成分类中,迁移学习和直接学习的准确率分别为65.6±0.7%和62.7±0.7%。此外,表面积和皮层厚度,特别是在左半球,一致地达到最高的分类精度,以及皮层下形状指标。研究结果表明,肥胖对大脑形状有显著的、可分类的影响。我们提出的OMTNet方法可以提供一个强大的迁移学习框架,可以扩展到其他顶点脑结构和功能成像测量。
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