Literature DB >> 33544670

Synthetic Database of Aortic Morphometry and Hemodynamics: Overcoming Medical Imaging Data Availability.

B Thamsen, P Yevtushenko, L Gundelwein, A A A Setio, H Lamecker, M Kelm, M Schafstedde, T Heimann, T Kuehne, L Goubergrits.   

Abstract

Modeling of hemodynamics and artificial intelligence have great potential to support clinical diagnosis and decision making. While hemodynamics modeling is extremely time- and resource-consuming, machine learning (ML) typically requires large training data that are often unavailable. The aim of this study was to develop and evaluate a novel methodology generating a large database of synthetic cases with characteristics similar to clinical cohorts of patients with coarctation of the aorta (CoA), a congenital heart disease associated with abnormal hemodynamics. Synthetic data allows use of ML approaches to investigate aortic morphometric pathology and its influence on hemodynamics. Magnetic resonance imaging data (154 patients as well as of healthy subjects) of aortic shape and flow were used to statistically characterize the clinical cohort. The methodology generating the synthetic cohort combined statistical shape modeling of aortic morphometry and aorta inlet flow fields and numerical flow simulations. Hierarchical clustering and non-linear regression analysis were successfully used to investigate the relationship between morphometry and hemodynamics and to demonstrate credibility of the synthetic cohort by comparison with a clinical cohort. A database of 2652 synthetic cases with realistic shape and hemodynamic properties was generated. Three shape clusters and respective differences in hemodynamics were identified. The novel model predicts the CoA pressure gradient with a root mean square error of 4.6 mmHg. In conclusion, synthetic data for anatomy and hemodynamics is a suitable means to address the lack of large datasets and provide a powerful basis for ML to gain new insights into cardiovascular diseases.

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Year:  2021        PMID: 33544670     DOI: 10.1109/TMI.2021.3057496

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  2 in total

1.  Optimal Modeling and Simulation of the Relationship between Athletes' High-Intensity Training and Sports Injuries.

Authors:  Youcheng Zhang; Yuanyuan Chang
Journal:  Scanning       Date:  2022-09-14       Impact factor: 1.750

2.  CT-Based Analysis of Left Ventricular Hemodynamics Using Statistical Shape Modeling and Computational Fluid Dynamics.

Authors:  Leonid Goubergrits; Katharina Vellguth; Lukas Obermeier; Adriano Schlief; Lennart Tautz; Jan Bruening; Hans Lamecker; Angelika Szengel; Olena Nemchyna; Christoph Knosalla; Titus Kuehne; Natalia Solowjowa
Journal:  Front Cardiovasc Med       Date:  2022-07-05
  2 in total

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