组织学指导下的磁共振成像分割对意识至关重要的脑干核团。

Mark David Olchanyi, Jean Augustinack, Robin L Haynes, Laura D Lewis, Nicholas Cicero, Jian Li, Christophe Destrieux, Rebecca D Folkerth, Hannah C Kinney, Bruce Fischl, Emery N Brown, Juan Eugenio Iglesias, Brian L Edlow
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引用次数: 0

摘要

尽管在绘制负责意识觉醒的皮层网络连接图方面取得了重大进展,但对调节觉醒(即清醒)的皮层下觉醒网络的神经成像分析却因缺乏对脑干觉醒核团的稳健分割程序而受到限制。脑干唤醒核的自动分割是阐明人类意识唤醒生理学和意识障碍病理生理学的重要一步。我们根据以 750 μm 各向同性分辨率扫描的五个活体人脑标本的弥散 MRI 扫描结果,绘制了脑干唤醒核的概率图谱。用于生成概率图谱的唤醒核标签是参照五个大脑标本中两个标本的核特异性免疫染色人工标注的。然后,我们开发了一种贝叶斯分割算法,利用概率图谱作为生成模型,以分辨率和对比度无关的方式自动识别脑干唤醒核。该分割方法在健康和病变的活体 T1 MRI 扫描中都显示出很高的准确性,在 T1 和 T2 MRI 对比中都显示出很高的测试重复可靠性。最后,我们展示了该分割算法可分别检测阿尔茨海默病和创伤性昏迷患者脑干唤醒核的体积变化和磁感应强度差异。我们在 FreeSurfer 中发布了概率图集和贝叶斯分割工具,以推动人类意识及其疾病的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Histology-guided MRI segmentation of brainstem nuclei critical to consciousness.

While substantial progress has been made in mapping the connectivity of cortical networks responsible for conscious awareness, neuroimaging analysis of subcortical arousal networks that modulate arousal (i.e., wakefulness) has been limited by a lack of a robust segmentation procedures for brainstem arousal nuclei. Automated segmentation of brainstem arousal nuclei is an essential step toward elucidating the physiology of arousal in human consciousness and the pathophysiology of disorders of consciousness. We created a probabilistic atlas of brainstem arousal nuclei built on diffusion MRI scans of five ex vivo human brain specimens scanned at 750 μm isotropic resolution. Labels of arousal nuclei used to generate the probabilistic atlas were manually annotated with reference to nucleus-specific immunostaining in two of the five brain specimens. We then developed a Bayesian segmentation algorithm that utilizes the probabilistic atlas as a generative model and automatically identifies brainstem arousal nuclei in a resolution- and contrast-agnostic manner. The segmentation method displayed high accuracy in both healthy and lesioned in vivo T1 MRI scans and high test-retest reliability across both T1 and T2 MRI contrasts. Finally, we show that the segmentation algorithm can detect volumetric changes and differences in magnetic susceptibility within brainstem arousal nuclei in Alzheimer's disease and traumatic coma, respectively. We release the probabilistic atlas and Bayesian segmentation tool in FreeSurfer to advance the study of human consciousness and its disorders.

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