医学
肥厚性心肌病
神经组阅片室
磁共振成像
接收机工作特性
放射科
逻辑回归
心脏成像
心肌病
纤维化
介入放射学
人工智能
核医学
内科学
心力衰竭
计算机科学
神经学
精神科
作者
Cailing Pu,Xi Hu,Sangying Lv,Yan Wu,Feidan Yu,Wenchao Zhu,Lingjie Zhang,Jingle Fei,Chengbin He,Xiaoli Ling,Fuyan Wang,Hongjie Hu
标识
DOI:10.1007/s00330-022-09217-0
摘要
Abstract Objectives Hypertrophic cardiomyopathy (HCM) often requires repeated enhanced cardiac magnetic resonance (CMR) imaging to detect fibrosis. We aimed to develop a practical model based on cine imaging to help identify patients with high risk of fibrosis and screen out patients without fibrosis to avoid unnecessary injection of contrast. Methods A total of 273 patients with HCM were divided into training and test sets at a ratio of 7:3. Logistic regression analysis was used to find predictive image features to construct CMR model. Radiomic features were derived from the maximal wall thickness (MWT) slice and entire left ventricular (LV) myocardium. Extreme gradient boosting was used to build radiomic models. Integrated models were established by fusing image features and radiomic models. The model performance was validated in the test set and assessed by ROC and calibration curve and decision curve analysis (DCA). Results We established five prediction models, including CMR, R1 (based on the MWT slice), R2 (based on the entire LV myocardium), and two integrated models (I CMR+R1 and I CMR+R2 ). In the test set, I CMR+R2 model had an excellent AUC value (0.898), diagnostic accuracy (89.02%), sensitivity (92.54%), and F1 score (93.23%) in identifying patients with positive late gadolinium enhancement. The calibration plots and DCA indicated that I CMR+R2 model was well-calibrated and presented a better net benefit than other models. Conclusions A predictive model that fused image and radiomic features from the entire LV myocardium had good diagnostic performance, robustness, and clinical utility. Key Points • Hypertrophic cardiomyopathy is prone to fibrosis, requiring patients to undergo repeated enhanced cardiac magnetic resonance imaging to detect fibrosis over their lifetime follow-up. • A predictive model based on the entire left ventricular myocardium outperformed a model based on a slice of the maximal wall thickness. • A predictive model that fused image and radiomic features from the entire left ventricular myocardium had excellent diagnostic performance, robustness, and clinical utility.
科研通智能强力驱动
Strongly Powered by AbleSci AI