Late gadolinium enhancement (LGE) cardiovascular magnetic resonance (CMR) is the reference standard for assessing myocardial scar and microvascular obstruction (MVO), strong predictors of post-acute myocardial infarction (AMI) outcomes. However, manual segmentation is time-consuming and subject to inter-observer variability, limiting clinical scalability. This study develops and validates LGE-CMRnet, an end-to-end deep learning pipeline for automated scar and MVO segmentation on LGE CMR, and evaluates its prognostic value in AMI patients. A total of 3,874 LGE images from 567 AMI patients (409 for training/internal stress-test cohort; 158 for external testing) were analyzed. LGE-CMRnet integrates YOLOv8 for heart localization and nnU-Net for simultaneous segmentation of myocardium, scar, and MVO. Performance was evaluated using Dice similarity coefficient (DSC), correlation, and Bland-Altman analysis against expert annotations. Prognostic value was assessed using Cox regression for major adverse cardiac events (MACE) over a median follow-up of 24.4 months. LGE-CMRnet achieved rapid processing (0.05 seconds per image) and high segmentation accuracy. In the external validation cohort, the model achieved mean DSC of 0.83±0.11 for scar and 0.88±0.11 for MVO at the patient level, with strong volumetric correlations to expert reference segmentations (scar: r =0.90; MVO: r =0.98, both P <0.0001). Bland-Altman analysis showed minimal bias in volumetric measurements (scar: 2.5±8.9 cm 3 ; MVO: − 0.20±0.89 cm 3 ). Among the 158 patients in the external validation cohort (age 57±10 years, 80% male), 35 (22.2%) experienced MACE. LGE-CMRnet-derived %MVO (hazard ratio HR, 1.06; 95% confidence interval CI: 1.02 to 1.09; P =0.003) and %Scar (HR, 1.05; 95% CI: 1.02 to 1.08; P =0.001) were independent predictors of MACE after adjustment for established risk factors. Furthermore, LGE-CMRnet-derived metrics demonstrated non-inferior discrimination for MACE prediction compared with expert analysis. The differences in C-index were 0.02 for %MVO and 0.01 for %Scar, with the lower bounds of the 95% CIs remaining above the pre-specified non-inferiority margin. LGE-CMRnet enables fast and accurate scar and MVO quantification, with prognostic performance comparable to expert analysis, supporting its potential for automated clinical risk stratification after AMI. Prognostic Value of End-to-End Deep Learning Assessment of Myocardial Scar and Microvascular Obstruction on LGE-CMR. LGE-CMRnet enables fast, accurate scar and MVO quantification with prognostic performance equivalent to expert analysis
Yang et al. (Sun,) studied this question.
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