4.7 Article

Artificial Intelligence framework with traditional computer vision and deep learning approaches for optimal automatic segmentation of left ventricle with scar

Journal

ARTIFICIAL INTELLIGENCE IN MEDICINE
Volume 143, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.artmed.2023.102610

Keywords

Unsupervised; Automatic segmentation; Machine learning; Cardiac segmentation; Left ventricle; Scars; Deep learning; U-net

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This study aimed to develop a novel framework and cost function for optimal automatic segmentation of the left ventricle with scars using LGE-MRI images. The study found that the traditional computer vision technique delivered more accurate results than deep learning, except in cases of breath misalignment error. The developed framework achieved robust and generalized results, offering a valuable tool for experts to accomplish fully automatic segmentation of the left ventricle with scars based on a single-modality cardiac scan.
Automatic segmentation of the cardiac left ventricle with scars remains a challenging and clinically significant task, as it is essential for patient diagnosis and treatment pathways. This study aimed to develop a novel framework and cost function to achieve optimal automatic segmentation of the left ventricle with scars using LGE-MRI images. To ensure the generalization of the framework, an unbiased validation protocol was established using out-of-distribution (OOD) internal and external validation cohorts, and intra-observation and inter-observer variability ground truths. The framework employs a combination of traditional computer vision techniques and deep learning, to achieve optimal segmentation results. The traditional approach uses multi-atlas techniques, active contours, and k-means methods, while the deep learning approach utilizes various deep learning techniques and networks. The study found that the traditional computer vision technique delivered more accurate results than deep learning, except in cases where there was breath misalignment error. The optimal solution of the framework achieved robust and generalized results with Dice scores of 82.8 & PLUSMN; 6.4% and 72.1 & PLUSMN; 4.6% in the internal and external OOD cohorts, respectively. The developed framework offers a high-performance solution for automatic segmentation of the left ventricle with scars using LGE-MRI. Unlike existing state-of-the-art approaches, it achieves unbiased results across different hospitals and vendors without the need for training or tuning in hospital cohorts. This framework offers a valuable tool for experts to accomplish the task of fully automatic segmentation of the left ventricle with scars based on a single-modality cardiac scan.

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