Real-Time Surrogate Modeling for Personalized Blood Flow Prediction and Hemodynamic Analysis
Sokratis J. Anagnostopoulos, George Rovas, Vasiliki Bikia, Theodore G. Papaioannou, Athanase D. Protogerou, Nikolaos Stergiopulos

TL;DR
This paper introduces a machine learning surrogate model for real-time prediction of blood flow and hemodynamics, enabling efficient parameter estimation and patient-specific cardiovascular analysis.
Contribution
It presents a systematic framework for training neural network models using clinical data to predict hemodynamics and estimate parameters rapidly and accurately.
Findings
The surrogate model accurately predicts arterial pressure and cardiac output.
It enables rapid screening of physiological parameter combinations.
The model reduces dataset generation costs and improves parameter estimation.
Abstract
Cardiovascular modeling has rapidly advanced over the past few decades due to the rising needs for health tracking and early detection of cardiovascular diseases. While 1-D arterial models offer an attractive compromise between computational efficiency and solution fidelity, their application on large populations or for generating large \emph{in silico} cohorts remains challenging. Certain hemodynamic parameters like the terminal resistance/compliance, are difficult to clinically estimate and often yield non-physiological hemodynamics when sampled naively, resulting in large portions of simulated datasets to be discarded. In this work, we present a systematic framework for training machine learning (ML) models, capable of instantaneous hemodynamic prediction and parameter estimation. We initially start with generating a parametric virtual cohort of patients which is based on the…
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