Tian Yu, Yunhe Li, Michael E Kim, Chenyu Gao, Qi Yang, Leon Y Cai, Susane M Resnick, Lori L Beason-Held, Daniel C Moyer, Kurt G Schilling, Bennett A Landman
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引用次数: 0
摘要
弥散核磁共振成像(dMRI)流线束描是活体估算脑白质(WM)通路的黄金标准,长期以来一直被认为是 WM 微观结构的产物。然而,最近在束谱学方面取得的进展表明,采用师生框架训练的卷积递归神经网络(CoRNN)有能力直接从 T1 和解剖背景中学习传播流线。该网络的训练以前一直依赖于高分辨率 dMRI。在本文中,我们将训练机制推广到了传统的临床分辨率数据中,从而实现了敏感和易感研究人群的通用性。我们在巴尔的摩老龄化纵向研究(Baltimore Longitudinal Study of Aging,BLSA)的一个小型子集上训练 CoRNN,该子集更接近临床扫描。我们定义了一种称为ε球播种法的指标,用于在流线水平上比较 T1 tractography 和传统的扩散 tractography。我们的研究表明,在这一指标下,CoRNN 生成的 T1 牵引成像再现了扩散牵引成像,误差约为三毫米。
Tractography with T1-weighted MRI and associated anatomical constraints on clinical quality diffusion MRI.
Diffusion MRI (dMRI) streamline tractography, the gold-standard for in vivo estimation of white matter (WM) pathways in the brain, has long been considered as a product of WM microstructure. However, recent advances in tractography demonstrated that convolutional recurrent neural networks (CoRNN) trained with a teacher-student framework have the ability to learn to propagate streamlines directly from T1 and anatomical context. Training for this network has previously relied on high resolution dMRI. In this paper, we generalize the training mechanism to traditional clinical resolution data, which allows generalizability across sensitive and susceptible study populations. We train CoRNN on a small subset of the Baltimore Longitudinal Study of Aging (BLSA), which better resembles clinical scans. We define a metric, termed the epsilon ball seeding method, to compare T1 tractography and traditional diffusion tractography at the streamline level. We show that under this metric T1 tractography generated by CoRNN reproduces diffusion tractography with approximately three millimeters of error.