An Dayeong, Ibrahim El-Sayed
Department of Biomedical Engineering, Medical College of Wisconsin, Milwaukee, WI 53226, USA.
Department of Radiology, Medical College of Wisconsin, Milwaukee, WI 53226, USA.
J Imaging. 2024 Dec 1;10(12):308. doi: 10.3390/jimaging10120308.
Radiation therapy (RT) is widely used to treat thoracic cancers but carries a risk of radiation-induced heart disease (RIHD). This study aimed to detect early markers of RIHD using machine learning (ML) techniques and cardiac MRI in a rat model. SS.BN3 consomic rats, which have a more subtle RIHD phenotype compared to Dahl salt-sensitive (SS) rats, were treated with localized cardiac RT or sham at 10 weeks of age. Cardiac MRI was performed 8 and 10 weeks post-treatment to assess global and regional cardiac function. ML algorithms were applied to differentiate sham-treated and irradiated rats based on early changes in myocardial function. Despite normal global left ventricular ejection fraction in both groups, strain analysis showed significant reductions in the anteroseptal and anterolateral segments of irradiated rats. Gradient boosting achieved an F1 score of 0.94 and an ROC value of 0.95, while random forest showed an accuracy of 88%. These findings suggest that ML, combined with cardiac MRI, can effectively detect early preclinical changes in RIHD, particularly alterations in regional myocardial contractility, highlighting the potential of these techniques for early detection and monitoring of radiation-induced cardiac dysfunction.
放射治疗(RT)被广泛用于治疗胸段癌症,但存在辐射诱发心脏病(RIHD)的风险。本研究旨在利用机器学习(ML)技术和心脏磁共振成像,在大鼠模型中检测RIHD的早期标志物。与达利盐敏感(SS)大鼠相比,具有更细微RIHD表型的SS.BN3近交系大鼠在10周龄时接受局部心脏RT或假手术治疗。在治疗后8周和10周进行心脏磁共振成像,以评估整体和局部心脏功能。基于心肌功能的早期变化,应用ML算法区分假手术治疗组和照射组大鼠。尽管两组的整体左心室射血分数均正常,但应变分析显示照射组大鼠的前间隔和前外侧节段有显著降低。梯度提升算法的F1评分为0.94,ROC值为0.95,而随机森林算法的准确率为88%。这些发现表明,ML与心脏磁共振成像相结合,可以有效地检测RIHD的早期临床前变化,特别是局部心肌收缩性的改变,突出了这些技术在早期检测和监测辐射诱发心脏功能障碍方面的潜力。