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Accelerating massively parallel hemodynamic models of coarctation of the aorta using neural networks.

Publication ,  Journal Article
Feiger, B; Gounley, J; Adler, D; Leopold, JA; Draeger, EW; Chaudhury, R; Ryan, J; Pathangey, G; Winarta, K; Frakes, D; Michor, F; Randles, A
Published in: Scientific reports
June 2020

Comorbidities such as anemia or hypertension and physiological factors related to exertion can influence a patient's hemodynamics and increase the severity of many cardiovascular diseases. Observing and quantifying associations between these factors and hemodynamics can be difficult due to the multitude of co-existing conditions and blood flow parameters in real patient data. Machine learning-driven, physics-based simulations provide a means to understand how potentially correlated conditions may affect a particular patient. Here, we use a combination of machine learning and massively parallel computing to predict the effects of physiological factors on hemodynamics in patients with coarctation of the aorta. We first validated blood flow simulations against in vitro measurements in 3D-printed phantoms representing the patient's vasculature. We then investigated the effects of varying the degree of stenosis, blood flow rate, and viscosity on two diagnostic metrics - pressure gradient across the stenosis (ΔP) and wall shear stress (WSS) - by performing the largest simulation study to date of coarctation of the aorta (over 70 million compute hours). Using machine learning models trained on data from the simulations and validated on two independent datasets, we developed a framework to identify the minimal training set required to build a predictive model on a per-patient basis. We then used this model to accurately predict ΔP (mean absolute error within 1.18 mmHg) and WSS (mean absolute error within 0.99 Pa) for patients with this disease.

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Published In

Scientific reports

DOI

EISSN

2045-2322

ISSN

2045-2322

Publication Date

June 2020

Volume

10

Issue

1

Start / End Page

9508

Related Subject Headings

  • Neural Networks, Computer
  • Models, Biological
  • Kinetics
  • Hemodynamics
  • Constriction, Pathologic
  • Aorta
 

Citation

APA
Chicago
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MLA
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Feiger, B., Gounley, J., Adler, D., Leopold, J. A., Draeger, E. W., Chaudhury, R., … Randles, A. (2020). Accelerating massively parallel hemodynamic models of coarctation of the aorta using neural networks. Scientific Reports, 10(1), 9508. https://doi.org/10.1038/s41598-020-66225-0
Feiger, Bradley, John Gounley, Dale Adler, Jane A. Leopold, Erik W. Draeger, Rafeed Chaudhury, Justin Ryan, et al. “Accelerating massively parallel hemodynamic models of coarctation of the aorta using neural networks.Scientific Reports 10, no. 1 (June 2020): 9508. https://doi.org/10.1038/s41598-020-66225-0.
Feiger B, Gounley J, Adler D, Leopold JA, Draeger EW, Chaudhury R, et al. Accelerating massively parallel hemodynamic models of coarctation of the aorta using neural networks. Scientific reports. 2020 Jun;10(1):9508.
Feiger, Bradley, et al. “Accelerating massively parallel hemodynamic models of coarctation of the aorta using neural networks.Scientific Reports, vol. 10, no. 1, June 2020, p. 9508. Epmc, doi:10.1038/s41598-020-66225-0.
Feiger B, Gounley J, Adler D, Leopold JA, Draeger EW, Chaudhury R, Ryan J, Pathangey G, Winarta K, Frakes D, Michor F, Randles A. Accelerating massively parallel hemodynamic models of coarctation of the aorta using neural networks. Scientific reports. 2020 Jun;10(1):9508.

Published In

Scientific reports

DOI

EISSN

2045-2322

ISSN

2045-2322

Publication Date

June 2020

Volume

10

Issue

1

Start / End Page

9508

Related Subject Headings

  • Neural Networks, Computer
  • Models, Biological
  • Kinetics
  • Hemodynamics
  • Constriction, Pathologic
  • Aorta