IVCVNov 11, 2022

Joint Deep Learning for Improved Myocardial Scar Detection from Cardiac MRI

arXiv:2211.06247v110 citationsh-index: 39
Originality Incremental advance
AI Analysis

This work addresses automated scar detection for patients with heart disease, offering potential improvements in risk prediction and therapy response, but it is incremental as it builds on existing multitask learning approaches.

The paper tackled the problem of automated myocardial scar detection from cardiac MRI images, which is limited by noise and artifacts, by proposing a joint deep learning framework that uses simultaneously learned myocardium segmentations to guide scar detection, resulting in outperforming state-of-the-art methods.

Automated identification of myocardial scar from late gadolinium enhancement cardiac magnetic resonance images (LGE-CMR) is limited by image noise and artifacts such as those related to motion and partial volume effect. This paper presents a novel joint deep learning (JDL) framework that improves such tasks by utilizing simultaneously learned myocardium segmentations to eliminate negative effects from non-region-of-interest areas. In contrast to previous approaches treating scar detection and myocardium segmentation as separate or parallel tasks, our proposed method introduces a message passing module where the information of myocardium segmentation is directly passed to guide scar detectors. This newly designed network will efficiently exploit joint information from the two related tasks and use all available sources of myocardium segmentation to benefit scar identification. We demonstrate the effectiveness of JDL on LGE-CMR images for automated left ventricular (LV) scar detection, with great potential to improve risk prediction in patients with both ischemic and non-ischemic heart disease and to improve response rates to cardiac resynchronization therapy (CRT) for heart failure patients. Experimental results show that our proposed approach outperforms multiple state-of-the-art methods, including commonly used two-step segmentation-classification networks, and multitask learning schemes where subtasks are indirectly interacted.

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