Automated Mapping of Residual Distortion Severity in Diffusion MRI.

Shuo Huang, Lujia Zhong, Yonggang Shi
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Abstract

Susceptibility-induced distortion is a common artifact in diffusion MRI (dMRI), which deforms the dMRI locally and poses significant challenges in connectivity analysis. While various methods were proposed to correct the distortion, residual distortions often persist at varying degrees across brain regions and subjects. Generating a voxel-level residual distortion severity map can thus be a valuable tool to better inform downstream connectivity analysis. To fill this current gap in dMRI analysis, we propose a supervised deep-learning network to predict a severity map of residual distortion. The training process is supervised using the structural similarity index measure (SSIM) of the fiber orientation distribution (FOD) in two opposite phase encoding (PE) directions. Only b0 images and related outputs from the distortion correction methods are needed as inputs in the testing process. The proposed method is applicable in large-scale datasets such as the UK Biobank, Adolescent Brain Cognitive Development (ABCD), and other emerging studies that only have complete dMRI data in one PE direction but acquires b0 images in both PEs. In our experiments, we trained the proposed model using the Lifespan Human Connectome Project Aging (HCP-Aging) dataset (n=662) and apply the trained model to data (n=1330) from UK Biobank. Our results show low training, validation, and test errors, and the severity map correlates excellently with an FOD integrity measure in both HCP-Aging and UK Biobank data. The proposed method is also highly efficient and can generate the severity map in around 1 second for each subject.

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自动绘制弥散核磁共振成像中的残余失真严重程度图
易感性引起的失真是弥散核磁共振成像(dMRI)中常见的伪影,它会使 dMRI 局部变形,给连通性分析带来巨大挑战。虽然人们提出了各种方法来校正畸变,但残余畸变往往会在不同脑区和受试者身上不同程度地存在。因此,生成体素级残余畸变严重程度图是一种有价值的工具,可为下游连通性分析提供更好的信息。为了填补目前在 dMRI 分析领域的这一空白,我们提出了一种有监督的深度学习网络来预测残余畸变的严重程度图。训练过程使用两个相反相位编码(PE)方向的纤维取向分布(FOD)的结构相似性指数测量(SSIM)进行监督。在测试过程中,只需将 b0 图像和畸变校正方法的相关输出作为输入。建议的方法适用于大规模数据集,如英国生物库、青少年脑认知发展(ABCD)和其他新兴研究,这些研究只有一个相位编码方向的完整 dMRI 数据,但在两个相位编码方向都获取了 b0 图像。在实验中,我们使用 "寿命人类连接组计划老化(HCP-Aging)"数据集(n=662)训练了所提出的模型,并将训练好的模型应用于英国生物库的数据(n=1330)。我们的结果表明,训练、验证和测试误差都很低,在 HCP-Aging 和英国生物库数据中,严重程度图与 FOD 完整性测量结果都有很好的相关性。所提出的方法也非常高效,可以在 1 秒钟左右的时间内生成每个受试者的严重程度图。
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FASSt : Filtering via Symmetric Autoencoder for Spherical Superficial White Matter Tractography. Self Supervised Denoising Diffusion Probabilistic Models for Abdominal DW-MRI. Automated Mapping of Residual Distortion Severity in Diffusion MRI. Stepwise Stochastic Dictionary Adaptation Improves Microstructure Reconstruction with Orientation Distribution Function Fingerprinting. Computational Diffusion MRI: 13th International Workshop, CDMRI 2022, Held in Conjunction with MICCAI 2022, Singapore, Singapore, September 22, 2022, Proceedings
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