Qiao Edmund M, He John, Silos Katrina D, Gasho Jordan O, Belen Patrick, Bitterman Danielle S, McKenzie Elizabeth, Steers Jennifer, Guthier Christian, Nohria Anju, Lu Michael T, Aerts Hugo J W L, Nikolova Andriana P, Mak Raymond H, Atkins Katelyn M
Department of Radiation Medicine and Applied Sciences, University of California San Diego, La Jolla, CA, United States.
Department of Radiation Oncology, Brigham and Women's Hospital/Dana-Farber Cancer Institute, Boston, MA, United States.
Front Cardiovasc Med. 2025 Jun 3;12:1560922. doi: 10.3389/fcvm.2025.1560922. eCollection 2025.
Patients receiving thoracic radiotherapy (RT) have an increased risk of major adverse cardiac events (MACE) posttreatment. We utilized machine learning (ML) to discover novel predictors of MACE and validated them on an external cohort.
This multi-institutional retrospective study included 984 patients [ = 803 non-small cell lung cancer (NSCLC), = 181 breast cancer] treated with radiotherapy. Extreme gradient boosting was utilized to discover novel clinical, dosimetric, and anatomical features (CT-based cardiac substructure segmentations) associated with MACE in a cohort of locally advanced NSCLC patients. Fine-Gray regression was performed with non-cardiac death as a competing risk. External validation was performed utilizing independent cohorts of NSCLC or breast cancer patients.
In the discovery dataset ( = 701), 70 patients experienced MACE. ML modeling (training AUC, 0.68; testing AUC, 0.71) identified right and left atrial volume indices (RAVI and LAVI, respectively) as top predictors. After adjusting for baseline cardiovascular risk and known radiotherapy predictive factors, RAVI was associated with an increased risk of MACE [subdistribution hazard ratio (sHR) 1.02/unit, 95% confidence interval (CI): 1.00-1.04; = 0.03]. In the validation cohorts ( = 102 NSCLC; = 181 breast cancer), RAVI was associated with an increased risk of MACE (NSCLC: sHR 1.05, 95% CI: 1.001-1.106, = 0.04; breast cancer: sHR 1.06, 95% CI: 1.01-1.11, = 0.03). Similar findings were found for LAVI.
ML modeling identified right and left atrial enlargement as novel radiographic predictors for increased risk of MACE following chest radiotherapy, which was validated in independent breast and lung cancer datasets. Given that echocardiography studies have demonstrated the prognostic utility of atrial volume indices across cardiovascular risk groups, these findings warrant further study to identify additional strategies for upfront cardiovascular risk profiling.
接受胸部放疗(RT)的患者治疗后发生主要不良心脏事件(MACE)的风险增加。我们利用机器学习(ML)来发现MACE的新预测因子,并在外部队列中对其进行验证。
这项多机构回顾性研究纳入了984例接受放疗的患者[非小细胞肺癌(NSCLC)803例,乳腺癌181例]。利用极端梯度提升算法在一组局部晚期NSCLC患者中发现与MACE相关的新的临床、剂量学和解剖学特征(基于CT的心脏亚结构分割)。以非心脏死亡作为竞争风险进行Fine-Gray回归分析。利用NSCLC或乳腺癌患者的独立队列进行外部验证。
在发现数据集中(n = 701),70例患者发生了MACE。ML建模(训练AUC为0.68;测试AUC为0.71)将右心房和左心房容积指数(分别为RAVI和LAVI)确定为首要预测因子。在调整基线心血管风险和已知的放疗预测因素后,RAVI与MACE风险增加相关[亚分布风险比(sHR)为1.02/单位,95%置信区间(CI):1.00 - 1.04;P = 0.03]。在验证队列中(NSCLC患者102例;乳腺癌患者181例),RAVI与MACE风险增加相关(NSCLC:sHR为1.05,95% CI:1.001 - 1.106,P = 0.04;乳腺癌:sHR为1.06,95% CI:1.01 - 1.11,P = 0.03)。LAVI也有类似发现。
ML建模确定右心房和左心房增大是胸部放疗后MACE风险增加的新影像学预测因子,这在独立的乳腺癌和肺癌数据集中得到了验证。鉴于超声心动图研究已证明心房容积指数在不同心血管风险组中的预后价值,这些发现值得进一步研究,以确定更多用于心血管风险初步评估的策略。