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Bayesian Intraventricular Vector Flow Mapping (BVFM)

ORAL

Abstract

Intracardiac blood flow analysis is quickly growing and allows for assessing flow dynamics, vortex formation, cardiac dysfunction, energetic efficiency, and other quantitative biomarkers of cardiovascular health. However, the lack of uncertainty quantification in medical imaging modalities makes it challenging to translate intracardiac blood flow analysis to guide medical decisions. Additionally, current methods used to quantify blood flow in the heart are limited due to assumptions (e.g., flow planarity), and post-processing algorithms rely on input data (e.g., wall segmentations) for boundary conditions that are also prone to uncertainty. Here we present a general flow mapping method rooted in Bayesian inference that allows us to fuse data from different imaging modalities and propagate their respective uncertainties to reconstruct intracardiac flow fields. We use an echocardiographic simulator (MATLAB Ultrasound Toolbox and SIMUS) to explore image quality and the parameter space to test our Bayesian framework. We apply our general framework to synthetic ultrasound data and two different clinical cases: 1) echo-PIV and echo-Doppler fusion and 2) Doppler multiscale fusion.

Presenters

  • Cathleen M Nguyen

    University of Washington

Authors

  • Cathleen M Nguyen

    University of Washington

  • Bahetihazi Maidu

    UC San Diego

  • Darrin J Wong

    UC San Diego

  • Sachiyo Igata

    UC San Diego

  • Christian Chazo Paz

    Hospital Gregorio Maranon, Madrid, Spain

  • Pablo Martínez-Legazpi

    Gregorio Marañon Hospital, Spain, UNED, Hospital Gregorio Maranon, Madrid, Spain, Dpt. Física Matemática y Fluidos, UNED

  • Javier Bermejo

    Gregorio Marañon Hospital, Spain, Hospital General Universitario Gregorio Marañón, Hospital Gregorio Maranon, Madrid, Spain, Hospital General Universitario Gregorio Marañon

  • Andrew M Kahn

    UC San Diego, University of California, San Diego

  • Anthony DeMaria

    UC San Diego

  • Juan Carlos del Alamo

    University of Washington