Robust data-driven segmentation of pulsatile cerebral vessels using functional magnetic resonance imaging.

IF 3.6 3区 生物学 Q1 BIOLOGY Interface Focus Pub Date : 2024-12-06 DOI:10.1098/rsfs.2024.0024
Adam M Wright, Tianyin Xu, Jacob Ingram, John Koo, Yi Zhao, Yunjie Tong, Qiuting Wen
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Abstract

Functional magnetic resonance imaging (fMRI) captures rich physiological and neuronal information, offering insight into neurofluid dynamics, vascular health and waste clearance. Accurate cerebral vessel segmentation could greatly facilitate fluid dynamics research in fMRI. However, existing vessel identification methods, such as magnetic resonance angiography or deep-learning-based segmentation on structural MRI, cannot reliably locate cerebral vessels in fMRI space due to misregistration from inherent fMRI distortions. To address this challenge, we developed a data-driven, automatic segmentation of cerebral vessels directly within fMRI space. This approach identified large cerebral arteries and the superior sagittal sinus (SSS) by leveraging these vessels' distinct pulsatile signal patterns during the cardiac cycle. The method was validated in a local dataset by comparing it to ground truth cerebral artery and SSS segmentations. Using the Human Connectome Project (HCP) ageing dataset, the method's reproducibility was tested on 422 participants aged 36-90, each with four repeated fMRI scans. The method demonstrated high reproducibility, with an intraclass correlation coefficient > 0.7 in both cerebral artery and SSS segmentation volumes. This study demonstrates that large cerebral arteries and SSS can be reproducibly and automatically segmented in fMRI datasets, facilitating reliable fluid dynamics investigation in these regions.

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功能磁共振成像对脉动脑血管的鲁棒数据驱动分割。
功能磁共振成像(fMRI)捕获丰富的生理和神经元信息,提供洞察神经流体动力学,血管健康和废物清除。准确的脑血管分割可以极大地促进功能磁共振成像中流体动力学的研究。然而,现有的血管识别方法,如磁共振血管造影或基于结构MRI的深度学习分割,由于固有的功能磁共振畸变导致的配准错误,无法可靠地在功能磁共振空间中定位脑血管。为了应对这一挑战,我们开发了一种数据驱动的,直接在功能磁共振成像空间内自动分割脑血管的方法。该方法通过利用大脑大动脉和上矢状窦(SSS)血管在心脏周期中不同的脉冲信号模式来识别这些血管。通过将该方法与真实的脑动脉和SSS分割进行比较,在局部数据集中验证了该方法。利用人类连接组计划(HCP)老化数据集,对422名年龄在36-90岁之间的参与者进行了该方法的可重复性测试,每位参与者都进行了四次重复的功能磁共振成像扫描。该方法重复性高,脑动脉和SSS分割体积的类内相关系数均为>.7。该研究表明,在fMRI数据集中,大脑大动脉和SSS可以重复和自动分割,从而促进了这些区域的可靠流体动力学研究。
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来源期刊
Interface Focus
Interface Focus BIOLOGY-
CiteScore
9.20
自引率
0.00%
发文量
44
审稿时长
6-12 weeks
期刊介绍: Each Interface Focus themed issue is devoted to a particular subject at the interface of the physical and life sciences. Formed of high-quality articles, they aim to facilitate cross-disciplinary research across this traditional divide by acting as a forum accessible to all. Topics may be newly emerging areas of research or dynamic aspects of more established fields. Organisers of each Interface Focus are strongly encouraged to contextualise the journal within their chosen subject.
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