Bayesian Inference for Parameter Estimation in Perivascular Cerebrospinal Fluid Flow
ORAL
Abstract
Cerebrospinal fluid (CSF) plays a critical role in clearing metabolic waste from the brain. Several studies hypothesize that the astrocyte endfeet function as a flexible valve to regulate the CSF flow within penetrating perivascular spaces (PVSs). However, the values of key parameters governing this system, including the material properties of endfeet walls and the flow resistances of the pial PVS, extracellular space (ECS), and endfeet walls, are still unknown. We apply Bayesian inference to an endfoot valve mechanism model to estimate these parameters while quantifying their uncertainty using in vivo measurements of arterial pulsations and CSF flow velocity in pial PVS. This approach not only provides posterior distributions but also reveals the sensitivity of CSF flow dynamics to specific variations in parameters. By integrating a mathematical model with Bayesian inference, this work advances the understanding of CSF transport mechanisms and establishes a framework for calibrating future models of brain-wide solute clearance.
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Presenters
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Biraj Khadka
University of Rochester
Authors
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Biraj Khadka
University of Rochester
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Biraj Khadka
University of Rochester
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Yiming Gan
University of Rochester
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Jessica K Shang
University of Rochester