在伊朗哈马丹Mahdieh中心确定乳腺癌患者死亡危险因素的随机生存森林竞争风险和回归模型的比较

Azadeh Yaghoubi, M. Rafiei, Ghodratallah Roshanaei, A. S. Pashaki
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摘要

乳腺癌是全世界女性中最常见的癌症之一。癌症患者可能因疾病进展或其他类型的事件而死亡。这些不同的事件类型被称为竞争风险。本研究旨在通过三种不同的方法确定影响乳腺癌患者生存的因素:病因特异性风险回归、亚分布风险回归和竞争风险的随机生存森林。方法:对2004 - 2015年在哈马丹Mahdieh医疗中心确诊的527例乳腺癌患者进行历史队列研究。为了确定因癌症进展或其他竞争风险导致的死亡的危险因素,拟合了特定原因危害和不合标准危害模型以及竞争风险的随机生存森林。采用R 3.4.3进行数据分析。结果:研究结果显示,对于乳腺癌进展死亡,年龄和累及淋巴结数在两种模型中均有显著性差异(P < 0.05),而在随机生存森林模型中,肿瘤大小、累及淋巴结数、孕激素、雌激素和家族史是癌症进展死亡的重要识别变量。结论:在存在竞争风险的情况下,当原因特异性和亚分布风险回归模型的基本假设未建立时,使用随机生存森林对竞争事件数据根据协调指数和Brier评分确定影响生存的危险因素更为合适。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Random Survival Forests for Competing Risks and Regression Models in Determining Mortality Risk Factors in Breast Cancer Patients in Mahdieh Center, Hamedan, Iran
Introduction : Breast cancer is one of the most common cancers among women worldwide. Patients with cancer may die due to disease progression or other types of events. These different event types are called competing risks. This study aimed to determine the factors affecting the survival of patients with breast cancer using three different approaches: cause-specific hazards regression, subdistribution hazards regression, and the random survival forest for competing risks. Methods: A historical cohort study was conducted on 527 breast cancer patients diagnosed in Mahdieh Medical Center, Hamadan, between 2004 and 2015. To determine risk factors for death due to cancer progression or other competing risks, cause-specific hazards and substandard hazards models and a random survival forest for competing risk were fitted. Data analysis was performed with R 3.4.3. Results : Findings showed that for death from the progression of breast cancer, age and number of involved lymph nodes were significant in both models (P < 0.05), and in the random survival forest model for death due to cancer progression, tumor size, number of involved lymph nodes, progesterone, estrogen, and family history were the important identified variables. Conclusion : In the presence of competing risks, when the underlying assumptions of cause-specific and subdistribution hazard regression models are not established, the use of random survival forest for competing events data to determine the risk factors affecting survival according to the coordination index and Brier score is more appropriate .
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