论文标题

年龄预测性能在深,肤浅和小脑白质连接中各不相同

Age Prediction Performance Varies Across Deep, Superficial, and Cerebellar White Matter Connections

论文作者

Wei, Yuxiang, Xue, Tengfei, Rathi, Yogesh, Makris, Nikos, Zhang, Fan, O'Donnell, Lauren J.

论文摘要

大脑的白质(WM)在人类寿命期间经历了发展和退化过程。为了研究WM解剖区域与年龄之间的关系,我们研究了扩散的磁共振成像片段,这些散射片段图被细化为深,表面和小脑WM中的纤维簇。我们提出了一个基于深度学习的年龄预测模型,该模型利用大型的卷积内核和倒置瓶颈。我们使用新颖的离散多面式混合数据增强和基于新的基于知识的损失函数来提高性能,从而鼓励在预期范围内的年龄预测。我们研究了来自人类连接项目(HCP)的965名健康年轻人(22-37岁)的数据集。实验结果表明,所提出的模型达到了2。59年的平均绝对误差,并且比较优于方法。我们发现,深层WM是该队列中年龄预测的最有用的,而浅表WM的信息量最少。总体而言,最预测的WM道是来自深WM的丘脑 - 额叶区域,以及来自小脑WM的脑内输入和Purkinje道。

The brain's white matter (WM) undergoes developmental and degenerative processes during the human lifespan. To investigate the relationship between WM anatomical regions and age, we study diffusion magnetic resonance imaging tractography that is finely parcellated into fiber clusters in the deep, superficial, and cerebellar WM. We propose a deep-learning-based age prediction model that leverages large convolutional kernels and inverted bottlenecks. We improve performance using novel discrete multi-faceted mix data augmentation and a novel prior-knowledge-based loss function that encourages age predictions in the expected range. We study a dataset of 965 healthy young adults (22-37 years) derived from the Human Connectome Project (HCP). Experimental results demonstrate that the proposed model achieves a mean absolute error of 2.59 years and outperforms compared methods. We find that the deep WM is the most informative for age prediction in this cohort, while the superficial WM is the least informative. Overall, the most predictive WM tracts are the thalamo-frontal tract from the deep WM and the intracerebellar input and Purkinje tract from the cerebellar WM.

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