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基于解剖学知识的 MRI 深度学习流水线用于量化与认知障碍相关的脑白质高信号。

An anatomical knowledge-based MRI deep learning pipeline for white matter hyperintensity quantification associated with cognitive impairment.

机构信息

School of Electronic and Information Engineering, Harbin Institute of Technology at Shenzhen, Shenzhen, Guangdong, China; Peng Cheng Laboratory, Shenzhen, Guangdong, China.

Peng Cheng Laboratory, Shenzhen, Guangdong, China.

出版信息

Comput Med Imaging Graph. 2021 Apr;89:101873. doi: 10.1016/j.compmedimag.2021.101873. Epub 2021 Feb 3.

Abstract

Recent studies have confirmed that white matter hyperintensities (WMHs) accumulated in strategic brain regions can predict cognitive impairments associated with Alzheimer's disease (AD). The knowledge of white matter anatomy facilitates lesion-symptom mapping associated with cognition, and provides important spatial information for lesion segmentation algorithms. However, deep learning-based methods in the white matter hyperintensity (WMH) segmentation realm do not take full advantage of anatomical knowledge in decision-making and lesion localization processes. In this paper, we proposed an anatomical knowledge-based MRI deep learning pipeline (U-Net), handcrafted anatomical-based spatial features developed from brain atlas were integrated with a well-designed U-Net configuration to simultaneously segment and locate WMHs. Manually annotated data from WMH segmentation challenge were used for the evaluation. We then applied this pipeline to investigate the association between WMH burden and cognition within another publicly available database. The results showed that U-Net significantly improved segmentation performance compared with methods that did not incorporate anatomical knowledge (p < 0.05), and achieved a 14-17% increase based on area under the curve (AUC) in the cohort with mild WMH burden. Different configurations for incorporating anatomical knowledge were evaluated, the proposed stage-wise U-Net-two-step method achieved the best performance (Dice: 0.86, modified Hausdorff distance: 3.06 mm), which was comparable with the state-of-the-art method (Dice: 0.87, modified Hausdorff distance: 3.62 mm). We observed different WMH accumulation patterns associated with normal aging and cognitive impairments. Furthermore, the characteristics of individual WMH lesions located in strategic regions (frontal and parietal subcortical white matter, as well as corpus callosum) were significantly correlated with cognition after adjusting for total lesion volumes. Our findings suggest that U-Net is a reliable method to segment and quantify brain WMHs in elderly cohorts, and is valuable in individual cognition evaluation.

摘要

最近的研究证实,在战略大脑区域积累的脑白质高信号(WMH)可以预测与阿尔茨海默病(AD)相关的认知障碍。对脑白质解剖结构的了解有助于与认知相关的病变-症状映射,并为病变分割算法提供重要的空间信息。然而,基于深度学习的脑白质高信号(WMH)分割领域的方法在决策和病变定位过程中没有充分利用解剖学知识。在本文中,我们提出了一种基于解剖学知识的 MRI 深度学习管道(U-Net),从脑图谱中开发的基于手工制作的解剖学空间特征与精心设计的 U-Net 结构相结合,同时分割和定位 WMH。手动标注的 WMH 分割挑战数据用于评估。然后,我们将该管道应用于另一个公开可用数据库中,研究 WMH 负担与认知之间的关联。结果表明,与未结合解剖学知识的方法相比,U-Net 显著提高了分割性能(p<0.05),并且在 WMH 负担较轻的队列中,基于曲线下面积(AUC)增加了 14-17%。评估了不同的方法来结合解剖学知识,所提出的分阶段 U-Net 两步法达到了最佳性能(Dice:0.86,修改后的 Hausdorff 距离:3.06mm),与最先进的方法相当(Dice:0.87,修改后的 Hausdorff 距离:3.62mm)。我们观察到与正常衰老和认知障碍相关的不同 WMH 积累模式。此外,在调整总病变体积后,位于战略区域(额叶和顶叶皮质下白质以及胼胝体)的单个 WMH 病变的特征与认知显著相关。我们的研究结果表明,U-Net 是一种可靠的方法,可以对老年队列中的脑 WMH 进行分割和量化,并且在个体认知评估中具有价值。

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