Deep-learning-enabled brain hemodynamic mapping using resting-state fMRI

Author:

Hou Xirui,Guo Pengfei,Wang PuyangORCID,Liu Peiying,Lin Doris D. M.ORCID,Fan Hongli,Li Yang,Wei Zhiliang,Lin Zixuan,Jiang Dengrong,Jin Jin,Kelly Catherine,Pillai Jay J.,Huang Judy,Pinho Marco C.,Thomas Binu P.,Welch Babu G.,Park Denise C.,Patel Vishal M.,Hillis Argye E.,Lu HanzhangORCID

Abstract

AbstractCerebrovascular disease is a leading cause of death globally. Prevention and early intervention are known to be the most effective forms of its management. Non-invasive imaging methods hold great promises for early stratification, but at present lack the sensitivity for personalized prognosis. Resting-state functional magnetic resonance imaging (rs-fMRI), a powerful tool previously used for mapping neural activity, is available in most hospitals. Here we show that rs-fMRI can be used to map cerebral hemodynamic function and delineate impairment. By exploiting time variations in breathing pattern during rs-fMRI, deep learning enables reproducible mapping of cerebrovascular reactivity (CVR) and bolus arrival time (BAT) of the human brain using resting-state CO2 fluctuations as a natural “contrast media”. The deep-learning network is trained with CVR and BAT maps obtained with a reference method of CO2-inhalation MRI, which includes data from young and older healthy subjects and patients with Moyamoya disease and brain tumors. We demonstrate the performance of deep-learning cerebrovascular mapping in the detection of vascular abnormalities, evaluation of revascularization effects, and vascular alterations in normal aging. In addition, cerebrovascular maps obtained with the proposed method exhibit excellent reproducibility in both healthy volunteers and stroke patients. Deep-learning resting-state vascular imaging has the potential to become a useful tool in clinical cerebrovascular imaging.

Funder

U.S. Department of Health & Human Services | NIH | National Center for Research Resources

Publisher

Springer Science and Business Media LLC

Subject

Health Information Management,Health Informatics,Computer Science Applications,Medicine (miscellaneous)

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