Real-Time Surrogate Modeling for Personalized Blood Flow Prediction and Hemodynamic Analysis
arXiv cs.LG / 2026/4/6
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要点
- The paper proposes a systematic ML framework for real-time (instantaneous) prediction of patient-specific hemodynamics and estimation of difficult-to-measure vascular parameters like terminal resistance/compliance.
- It uses a parametric virtual cohort generated from multivariate correlations in the Asklepios clinical dataset to preserve realistic physiological parameter distributions and avoid invalid simulations.
- A deep neural surrogate model predicts arterial pressure and cardiac output to enable immediate screening and rejection of non-physiological input parameter combinations, reducing the cost of generating large synthetic cohorts.
- The authors also use the surrogate to guide principled sampling of terminal resistance to minimize uncertainties for unmeasurable parameters and to study the information needed to solve the inverse problem for cardiac output estimation.
- They demonstrate the approach by applying the surrogate to clinical data to estimate central aortic hemodynamics, including cardiac output and central systolic blood pressure.




