Feasibility of Vascular Parameter Estimation for Assessing Hypertensive Pregnancy Disorders

Abstract

Hypertensive pregnancy disorders (HPDs), such as pre-eclampsia, are leading sources of both maternal and fetal morbidity in pregnancy. Noninvasive imaging, such as ultrasound (US) and magnetic resonance imaging (MRI), is an important tool for predicting and monitoring these high risk pregnancies. While imaging can measure hemodynamic parameters, such as uterine artery pulsatility and resistivity indices (PI and RI), the interpretation of such metrics for disease assessment relies on ad hoc standards, which provide limited insight to the physical mechanisms underlying the emergence of hypertensive pregnancy disorders. To provide meaningful interpretation of measured hemodynamic data in patients, advances in computational fluid dynamics can be brought to bear. In this work, we develop a patient-specific computational framework that combines Bayesian inference with a reduced-order fluid dynamics model to infer parameters, such as vascular resistance, compliance, and vessel cross-sectional area, known to be related to the development of hypertension. The proposed framework enables the prediction of hemodynamic quantities of interest, such as pressure and velocity, directly from sparse and noisy MRI measurements. We illustrate the effectiveness of this approach in two systemic arterial network geometries: an aorta with branching carotid artery and a maternal pelvic arterial network. For both cases, the model can reconstruct the provided measurements and infer parameters of interest. In the case of the maternal pelvic arteries, the model can make a distinction between the pregnancies destined to develop hypertension and those that remain normotensive, expressed through the value range of the predicted absolute pressure.

Document Details

Document Type
Pub Defense Publication
Publication Date
Oct 28, 2022
Source ID
10.1115/1.4055679

Entities

People

  • Eileen Hwuang
  • Elizabeth W. Thompson
  • Georgios Kissas
  • John A. Detre
  • Nadav Schwartz
  • Paris Perdikaris
  • Walter R. Witschey

Organizations

  • Air Force Office of Scientific Research
  • National Institutes of Health
  • Office of Science
  • University of Pennsylvania

Tags

Fields of Study

  • Medicine

Readers

  • Cardiovascular Physiology
  • Neural Network Machine Learning.
  • Women's Health and Cancer Risk Research: African American Women and Pregnancy Outcomes.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference