Predicton of major adverse cardiovascular events in patients with hypertrophic cardiomyopathy by deep learning and radiomics.

IF 1.9 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Cardiology Pub Date : 2025-07-11 DOI:10.1159/000547232
Jiangtao Wang, Biaohu Liu, Caiyun Xia, Sensen Wang
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引用次数: 0

Abstract

Introduction Hypertrophic cardiomyopathy (HCM) patients may be at risk for major adverse cardiovascular events (MACE), making risk stratification essential for implementing interventions in high-risk individuals. Deep transfer learning (DTL) and radiomics have made significant advances in the medical field; however, to date, no studies have combined echocardiography in HCM patients with DTL and radiomics to develop predictive models for identifying individuals at risk for MACE. Methods This study is a retrospective analysis that included 210 HCM patients, with a mean follow-up time of 29.44 ± 16.21 months. Among the patients, 59 experienced MACE and 151 non-MACE. The patients were randomly divided into training and validation sets in an 8:2 ratio. We collected chest parasternal left ventricular long-axis and short-axis images, with the left ventricular myocardial region defined as the region of interest (ROI). Radiomics features were extracted using the Pyradiomics software package, and DTL features were obtained through the pre-trained Resnet50 model. These radiomics and DTL features were then combined, and feature selection was conducted using the Least Absolute Shrinkage and Selection Operator (LASSO). The selected features were used to construct the DTL-RAD predictive model with machine learning algorithms. The model's diagnostic performance was evaluated using the Receiver Operating Characteristic (ROC) curve and Decision Curve Analysis (DCA). Finally, we compared the prediction performance of the DTL-RAD model with those of models built using only radiomics features or only DTL features. Results The diagnostic performance of the DTL-RAD model in both the training and validation sets was excellent, with AUC values of 0.936 and 0.918, specificity values of 0.852 and 0.767, and sensitivity values of 0.892 and 0.929, respectively. It significantly outperformed models that used only radiomics or DTL features. Furthermore, the DCA demonstrated that the DTL-RAD model exhibited superior clinical applicability and effectiveness, surpassing the performance of other models. Conclusion The DTL-RAD model demonstrated exceptional performance in identifying HCM patients at risk of MACE, accurately detecting high-risk individuals among HCM patients at an early stage. This provides a basis for precise clinical intervention, effectively reducing the incidence of MACE in HCM patients.

利用深度学习和放射组学预测肥厚性心肌病患者的主要不良心血管事件。
肥厚性心肌病(HCM)患者可能存在重大不良心血管事件(MACE)的风险,因此对高危人群实施干预措施的风险分层至关重要。深度迁移学习(DTL)和放射组学在医学领域取得了重大进展;然而,到目前为止,还没有研究将超声心动图与放射组学相结合用于HCM合并DTL患者的预测模型,以确定MACE风险个体。方法对210例HCM患者进行回顾性分析,平均随访时间29.44±16.21个月。其中MACE 59例,非MACE 151例。患者按8:2的比例随机分为训练组和验证组。我们收集了胸骨旁左心室长轴和短轴图像,将左心室心肌区域定义为感兴趣区域(ROI)。使用Pyradiomics软件包提取放射组学特征,通过预训练的Resnet50模型获得DTL特征。然后将这些放射组学和DTL特征结合起来,使用最小绝对收缩和选择算子(LASSO)进行特征选择。选取的特征通过机器学习算法构建DTL-RAD预测模型。采用受试者工作特征(ROC)曲线和决策曲线分析(DCA)对模型的诊断性能进行评价。最后,我们将DTL- rad模型的预测性能与仅使用放射组学特征或仅使用DTL特征构建的模型进行了比较。结果DTL-RAD模型在训练集和验证集的诊断性能均良好,AUC值分别为0.936和0.918,特异性值分别为0.852和0.767,敏感性分别为0.892和0.929。它明显优于仅使用放射组学或DTL特征的模型。DCA结果表明DTL-RAD模型具有较好的临床适用性和有效性,优于其他模型。结论DTL-RAD模型在HCM患者MACE风险识别方面表现优异,能在HCM患者中早期准确发现高危人群。为临床精准干预提供依据,有效降低HCM患者MACE的发生率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cardiology
Cardiology 医学-心血管系统
CiteScore
3.40
自引率
5.30%
发文量
56
审稿时长
1.5 months
期刊介绍: ''Cardiology'' features first reports on original clinical, preclinical and fundamental research as well as ''Novel Insights from Clinical Experience'' and topical comprehensive reviews in selected areas of cardiovascular disease. ''Editorial Comments'' provide a critical but positive evaluation of a recent article. Papers not only describe but offer critical appraisals of new developments in non-invasive and invasive diagnostic methods and in pharmacologic, nutritional and mechanical/surgical therapies. Readers are thus kept informed of current strategies in the prevention, recognition and treatment of heart disease. Special sections in a variety of subspecialty areas reinforce the journal''s value as a complete record of recent progress for all cardiologists, internists, cardiac surgeons, clinical physiologists, pharmacologists and professionals in other areas of medicine interested in current activity in cardiovascular diseases.
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