MultiFlow: A unified deep learning framework for multi-vessel classification, segmentation and clustering of phase-contrast MRI validated on a multi-site single ventricle patient cohort
- URL: http://arxiv.org/abs/2502.11993v1
- Date: Mon, 17 Feb 2025 16:33:59 GMT
- Title: MultiFlow: A unified deep learning framework for multi-vessel classification, segmentation and clustering of phase-contrast MRI validated on a multi-site single ventricle patient cohort
- Authors: Tina Yao, Nicole St. Clair, Gabriel F. Miller, FORCE Investigators, Jennifer A. Steeden, Rahul H. Rathod, Vivek Muthurangu,
- Abstract summary: MultiFlowSeg was applied to the FORCE registry of Fontan procedure patients.
It achieved 100% classification accuracy for the aorta, SVC, and IVC, and 94% for the LPA and RPA.
The automated pipeline processed registry data, achieving high segmentation success despite challenges like poor image quality and dextrocardia.
- Score: 0.5025737475817937
- License:
- Abstract: This study presents a unified deep learning (DL) framework, MultiFlowSeg, for classification and segmentation of velocity-encoded phase-contrast magnetic resonance imaging data, and MultiFlowDTC for temporal clustering of flow phenotypes. Applied to the FORCE registry of Fontan procedure patients, MultiFlowSeg achieved 100% classification accuracy for the aorta, SVC, and IVC, and 94% for the LPA and RPA. It demonstrated robust segmentation with a median Dice score of 0.91 (IQR: 0.86-0.93). The automated pipeline processed registry data, achieving high segmentation success despite challenges like poor image quality and dextrocardia. Temporal clustering identified five distinct patient subgroups, with significant differences in clinical outcomes, including ejection fraction, exercise tolerance, liver disease, and mortality. These results demonstrate the potential of combining DL and time-varying flow data for improved CHD prognosis and personalized care.
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