Chen Xiaorong, Lv Lei, Pan Jiangfeng, Guan Dongwei, Huang Yimin, Hu Yi, Zhang Haiping, Hu Hongjie
Department of Medical Imaging, Affiliated Jinhua Hospital, Zhejiang University School of Medicine, Jinhua, China.
ShuKun Technology Co., Ltd., Beijing, China.
Cardiovasc Diagn Ther. 2025 Feb 28;15(1):85-99. doi: 10.21037/cdt-24-330. Epub 2025 Feb 25.
Both acute myocarditis patients and normal cohort usually present with normal coronary computed tomography angiography (CCTA) performance, and the performance of CCTA radiomics on the prediction for myocarditis is still unclear. This study aims to build a clinical prediction model for acute myocarditis using CCTA-based radiomics.
A total of 215 consecutive patients from the Affiliated Jinhua Hospital, Zhejiang University School of Medicine (Center 1) and Sir Run Run Shaw Hospital, Zhejiang University School of Medicine (Center 2) who underwent CCTA and were diagnosed as normal or acute myocarditis were enrolled. All CCTA images of myocardium were automatically segmented to extract radiomics features. Pearson correlation analysis was used to identify features that were highly correlated with others. The application of the 5-fold cross-validation test reduced reliance on a single training set and provided more robust performance estimation. The best radiomics prediction model was chosen and combined with the clinical labels to construct a clinical-radiomics model for the classification of patients as with or without myocarditis.
Pearson's correlation and least absolute shrinkage and selection operator (LASSO) regression analyses identified 10 radiomics features and 7 clinical features which demonstrated the best correlation. The receiver operating characteristic curves of the three models that used the support vector machine (SVM) demonstrated the best performance. The area under the curves (AUCs) of Model 1 (Rad-score model) using training and test datasets were 0.970 (0.949-0.991) and 0.912 (0.832-0.992), respectively. The AUCs of Model 2 (clinical factors model) for the training and test datasets were 0.992 (0.983-1.000) and 0.943 (0.875-1.000), respectively. Model 3 (clinical factors and Rad-score model) demonstrated the best results, with AUCs of 1.000 (0.999-1.000) and 0.951 (0.880-1.000) in the training and test datasets, respectively.
The CCTA-based radiomics model constructed using machine learning demonstrated good performance for predicting myocarditis.
急性心肌炎患者和正常对照组的冠状动脉计算机断层扫描血管造影(CCTA)表现通常均正常,CCTA放射组学对心肌炎的预测性能仍不明确。本研究旨在使用基于CCTA的放射组学建立急性心肌炎的临床预测模型。
连续纳入浙江大学医学院附属金华医院(中心1)和浙江大学医学院附属邵逸夫医院(中心2)的215例接受CCTA检查且被诊断为正常或急性心肌炎的患者。对所有心肌的CCTA图像进行自动分割以提取放射组学特征。采用Pearson相关分析来识别与其他特征高度相关的特征。5折交叉验证测试的应用减少了对单个训练集的依赖,并提供了更可靠的性能估计。选择最佳的放射组学预测模型并结合临床标签,构建用于对有无心肌炎患者进行分类的临床-放射组学模型。
Pearson相关分析和最小绝对收缩和选择算子(LASSO)回归分析确定了10个放射组学特征和7个临床特征,它们显示出最佳相关性。使用支持向量机(SVM)的三个模型的受试者工作特征曲线表现最佳。模型1(放射学评分模型)在训练集和测试集上的曲线下面积(AUC)分别为0.970(0.949 - 0.991)和0.912(0.832 - 0.992)。模型2(临床因素模型)在训练集和测试集上的AUC分别为0.992(0.983 - 1.000)和0.943(0.875 - 1.000)。模型3(临床因素和放射学评分模型)表现最佳,在训练集和测试集上的AUC分别为1.000(0.999 - 1.000)和0.951(0.880 - 1.000)。
使用机器学习构建的基于CCTA的放射组学模型在预测心肌炎方面表现良好。