Real-time imaging of respiratory effects on cerebrospinal fluid flow in small diameter passageways

实时成像呼吸对小直径通道内脑脊液流动的影响

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Abstract

PURPOSE: Respiration-related CSF flow through the cerebral aqueduct may be useful for elucidating physiology and pathophysiology of the glymphatic system, which has been proposed as a mechanism of brain waste clearance. Therefore, we aimed to (1) develop a real-time (CSF) flow imaging method with high spatial and sufficient temporal resolution to capture respiratory effects, (2) validate the method in a phantom setup and numerical simulations, and (3) apply the method in vivo and quantify its repeatability and correlation with different respiratory conditions. METHODS: A golden-angle radial flow sequence (reconstructed temporal resolution 168 ms, spatial resolution 0.6 mm) was implemented on a 7T MRI scanner and reconstructed using compressed sensing. A phantom setup mimicked simultaneous cardiac and respiratory flow oscillations. The effect of temporal resolution and vessel diameter was investigated numerically. Healthy volunteers (n = 10) were scanned at four different respiratory conditions, including repeat scans. RESULTS: Phantom data show that the developed sequence accurately quantifies respiratory oscillations (ratio real-time/reference Q(R)  = 0.96 ± 0.02), but underestimates the rapid cardiac oscillations (ratio Q(C)  = 0.46 ± 0.14). Simulations suggest that Q(C) can be improved by increasing temporal resolution. In vivo repeatability was moderate to very strong for cranial and caudal flow (intraclass correlation coefficient range: 0.55-0.99) and weak to strong for net flow (intraclass correlation coefficient range: 0.48-0.90). Net flow was influenced by respiratory condition (p < 0.01). CONCLUSIONS: The presented real-time flow MRI method can quantify respiratory-related variations of CSF flow in the cerebral aqueduct, but it underestimates rapid cardiac oscillations. In vivo, the method showed good repeatability and a relationship between flow and respiration.

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