4.5 Article

In Vivo Image-Based 4D Modeling of Competent and Regurgitant Mitral Valve Dynamics

期刊

EXPERIMENTAL MECHANICS
卷 61, 期 1, 页码 159-169

出版社

SPRINGER
DOI: 10.1007/s11340-020-00656-8

关键词

Mitral valve imaging; 4D segmentation; Echocardiography; Mitral regurgitation

资金

  1. National Institutes of Health from the National Institute of Biomedical Imaging and Bioengineering [EB017255]
  2. National Institutes of Health from National Heart Lung and Blood Institute [HL073021, HL142504, HL103723, HL141643, HL142138]

向作者/读者索取更多资源

The study aims to accurately reconstruct cardiac valve morphology and motion through image analysis algorithms, providing personalized descriptions for cardiac patients and insights into disease pathophysiology. Results demonstrate that automated 4D image analysis allows for reliable modeling of mitral valve dynamics, facilitating research on pathological and normal valves.
Background In vivo characterization of mitral valve dynamics relies on image analysis algorithms that accurately reconstruct valve morphology and motion from clinical images. The goal of such algorithms is to provide patient-specific descriptions of both competent and regurgitant mitral valves, which can be used as input to biomechanical analyses and provide insights into the pathophysiology of diseases like ischemic mitral regurgitation (IMR). Objective The goal is to generate accurate image-based representations of valve dynamics that visually and quantitatively capture normal and pathological valve function. Methods We present a novel framework for 4D segmentation and geometric modeling of the mitral valve in real-time 3D echocardiography (rt-3DE), an imaging modality used for pre-operative surgical planning of mitral interventions. The framework integrates groupwise multi-atlas label fusion and template-based medial modeling with Kalman filtering to generate quantitatively descriptive and temporally consistent models of valve dynamics. Results The algorithm is evaluated on rt-3DE data series from 28 patients: 14 with normal mitral valve morphology and 14 with severe IMR. In these 28 data series that total 613 individual 3DE images, each 3D mitral valve segmentation is validated against manual tracing, and temporal consistency between segmentations is demonstrated. Conclusions Automated 4D image analysis allows for reliable non-invasive modeling of the mitral valve over the cardiac cycle for comparison of annular and leaflet dynamics in pathological and normal mitral valves. Future studies can apply this algorithm to cardiovascular mechanics applications, including patient-specific strain estimation, fluid dynamics simulation, inverse finite element analysis, and risk stratification for surgical treatment.

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