Development and validation of a nomogram to predict cardiac death after radiotherapy for esophageal cancer

Author:

Lv Xinfang12ORCID,Wu Xue23,Liu Kai2,Zhao Xinke2,Pan Chenliang4,Zhao Jing4,Chang Juan5,Guo Huan6,Gao Xiang2,Zhi Xiaodong2,Ren Chunzhen2,Chen Qilin2,Jiang Hugang2,Wang Chunling2,Li Ying‐Dong2

Affiliation:

1. Department of Geriatrics Affiliated Hospital of Gansu University of Traditional Chinese Medicine Lanzhou Gansu China

2. School of Integrative Medicine, Gansu University of Chinese Medicine Lanzhou Gansu China

3. Department of Cardiology The Second Hospital of Lanzhou University Lanzhou Gansu China

4. Cardiovascular Disease Center, The First Hospital of Lanzhou University Lanzhou Gansu China

5. Department of Traditional Medicine Gansu Provincial Hospital Lanzhou Gansu China

6. Center for Translational Medicine, Gansu Provincial Academic Institute for Medical Research Lanzhou Gansu China

Abstract

AbstractBackgroundPatients frequently die from cardiac causes after radiotherapy for esophageal cancer. Early detection of cardiac death risk in these patients is crucial to improve clinical decision‐making and prognosis. Thus, we modeled the risk of cardiac death after irradiation for esophageal cancer.MethodsA retrospective analysis of 37,599 esophageal cancer cases treated with radiotherapy in the SEER database between 2000 and 2018 was performed. The selected cases were randomly assigned to the model development group (n = 26,320) and model validation group (n = 11,279) at a ratio of 7:3. We identified the risk factors most commonly associated with cardiac death by least absolute shrinkage and selection operator regression analysis (LASSO). The endpoints for model development and validation were 5‐ and 10‐year survival rates. The net clinical benefit of the models was evaluated by decision curve analysis (DCA) and concordance index (C‐index). The performance of the models was further assessed by creating a receiver operating characteristic curve (ROC) and calculating the area under the curve (AUC). Kaplan‐Meier (K‐M) survival analysis was performed on the probability of death. Patients were classified according to death probability thresholds. Five‐ and ten‐year survival rates for the two groups were shown using K‐M curves.ResultsThe major risk factors for cardiac death were age, surgery, year of diagnosis, sequence of surgery and radiotherapy, chemotherapy and a number of tumors, which were used to create the nomogram. The C‐indexes of the nomograms were 0.708 and 0.679 for the development and validation groups, respectively. DCA showed the good net clinical benefit of nomograms in predicting 5‐ and 10‐year risk of cardiac death. The model exhibited moderate predictive power for 5‐ and 10‐year cardiac mortality (AUC: 0.833 and 0.854, respectively), and for the development and validation cohorts (AUC: 0.76 and 0.813, respectively).ConclusionsOur nomogram may assist clinicians in making clinical decisions about patients undergoing radiotherapy for esophageal cancer based on early detection of cardiac death risk.

Publisher

Wiley

Subject

Pharmacology (medical),Cancer Research,Pharmacology, Toxicology and Pharmaceutics (miscellaneous),Drug Discovery,Oncology

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