Robust differentiation between infarcted and normal myocardial tissue is essential for improving diagnostic accuracy and personalizing treatment in myocardial infarction (MI). This study proposes a hybrid framework combining radiomic texture analysis with deep learning-based segmentation to enhance MI detection on non-contrast cine cardiac magnetic resonance (CMR) imaging.The approach incorporates radiomic features derived from the Gray-Level Co-Occurrence Matrix (GLCM) and Gray-Level Run Length Matrix (GLRLM) methods into a modified U-Net segmentation network. A three-stage feature selection pipeline was employed, followed by classification using multiple machine learning models. Early and intermediate fusion strategies were integrated into the hybrid architecture. The model was validated on cine-CMR data from the SCD and Kaggle datasets.Joint Entropy, Max Probability, and RLNU emerged as the most discriminative features, with Joint Entropy achieving the highest AUC (0.948). The hybrid model outperformed standalone U-Net in segmentation (Diceâ=â0.887, IoUâ=â0.803, HD95â=â4.48Â mm) and classification (accuracyâ=â96.30%, AUCâ=â0.97, precisionâ=â0.96, recallâ=â0.94, F1-scoreâ=â0.96). Dimensionality reduction via PCA and t-SNE confirmed distinct class separability. Correlation coefficients (râ=â0.95-0.98) and Bland-Altman plots demonstrated high agreement between predicted and reference infarct sizes.Integrating radiomic features into a deep learning segmentation pipeline improves MI detection and interpretability in cine-CMR. This scalable and explainable hybrid framework holds potential for broader applications in multimodal cardiac imaging and automated myocardial tissue characterization.
Integrating radiomic texture analysis and deep learning for automated myocardial infarction detection in cine-MRI.
将放射组学纹理分析和深度学习相结合,用于电影磁共振成像中心肌梗死的自动检测。
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| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2025 | 起止号: | 2025 Jul 8; 15(1):24365 |
| doi: | 10.1038/s41598-025-08127-7 | ||
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