Perfusion Imaging via Mass Transport

Speaker

Peirong Liu
Martinos Center for Biomedical Imaging, MGB

Host

Polina Golland
CSAIL

Perfusion imaging (PI) quantifies blood flow through the brain parenchyma by serial imaging. The resulting quantitative measures help clinical diagnosis and clinical decision-making, for example, to assess acute strokes and brain tumors. Despite its benefits, the widespread use of PI still faces many challenges: (1) Current existing perfusion analysis approaches mostly depend on the arterial input function (AIF), while the selection procedure for AIF is not unified and is only a coarse approximation of the actual input tracer; (2) These approaches are performed on individual voxels, thereby disregarding spatial dependencies of tracer dynamics. In this talk, I will present a series of our PDE-based approaches from a mass transport perspective, to better understand the relations between tracer’s spatial-temporal transport and strokes, meanwhile avoiding the need of approximating AIF. We (1) proposed a variable-coefficient advection-diffusion PDE framework, which models the tracer transport from both optimization- and learning-based perspectives; (2) introduced constraint-free representations of physically meaningful velocity and diffusion fields in the tracer’s PDE system. Looking forward, I am excited to explore advanced, physics-informed formulations for dynamic modeling in real-world clinical settings. A key focus will be the development of interactive models capable of real-time prediction of patient outcomes following interventional treatments. By bridging theoretical foundations and practical applications, my long-term vision is to strengthen the robustness of machine learning, address real-world challenges in clinical data, and ultimately contribute to a safer, more reliable, and accessible healthcare system.