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基于随机森林算法分析食管癌精确放疗致放射性肺炎的相关因素。

Analysis of related factors of radiation pneumonia caused by precise radiotherapy of esophageal cancer based on random forest algorithm.

机构信息

Department of Oncology Center, Second Hospital of Anhui Medical University, Hefei, Anhui 230601, China.

The First Department of Oncology, Cancer Hospital, Chinese Academy of Sciences, Hefei, Anhui 230031, China.

出版信息

Math Biosci Eng. 2021 May 25;18(4):4477-4490. doi: 10.3934/mbe.2021227.

Abstract

The precise radiotherapy of esophageal cancer may cause different degrees of radiation damage for lung tissues and cause radioactive pneumonia. However, the occurrence of radioactive pneumonia is related to many factors. To further clarify the correlation between the occurrence of radioactive pneumonia and related factors, a random forest model was used to build a risk prediction model for patients with esophageal cancer undergoing radiotherapy. In this study, we retrospectively reviewed 118 patients with esophageal cancer confirmed by pathology in our hospital. The health characteristics and related parameters of all patients were analyzed, and the predictive effect of radiation pneumonia was discussed using the random forest algorithm. After treatment, 71 patients developed radioactive pneumonia (60.17%). In univariate analyses, age, planning target volume length, Karnofsky performance score (KPS), pulmonary emphysema, with or without chemotherapy, and the ratio of planning target volume to planning gross tumor volume (PTV/PGTV) in mediastinum were significantly associated with radioactive pneumonia (P < 0.05 for each comparison). Multivariate analysis revealed that with or without pulmonary emphysema (OR = 7.491, P = 0.001), PTV/PGTV (OR = 0.205, P = 0.007), and KPS (OR = 0.251, P = 0.011) were independent predictors for radiation pneumonia. The results concluded that the analysis of radiation pneumonia-related factors based on the random forest algorithm could build a mathematical prediction model for the easily obtained data. This algorithm also could effectively analyze the risk factors of radiation pneumonia and formulate the appropriate treatment plan for esophageal cancer.

摘要

食管癌精确放疗可能会对肺部组织造成不同程度的放射性损伤,引起放射性肺炎。然而,放射性肺炎的发生与多种因素有关。为了进一步阐明放射性肺炎的发生与相关因素的关系,采用随机森林模型构建了食管癌放疗患者放射性肺炎的风险预测模型。本研究回顾性分析了我院经病理证实的 118 例食管癌患者,分析了所有患者的健康特征和相关参数,采用随机森林算法探讨了放射性肺炎的预测效果。治疗后,71 例患者发生放射性肺炎(60.17%)。单因素分析显示,年龄、计划靶区长度、卡氏功能状态评分(KPS)、肺气肿、是否化疗以及纵隔计划靶区与计划大体肿瘤体积比值(PTV/PGTV)与放射性肺炎显著相关(P 值均<0.05)。多因素分析显示,是否合并肺气肿(OR=7.491,P=0.001)、PTV/PGTV(OR=0.205,P=0.007)和 KPS(OR=0.251,P=0.011)是放射性肺炎的独立预测因素。研究结论认为,基于随机森林算法的放射性肺炎相关因素分析可以建立一个易于获得数据的数学预测模型。该算法还可以有效地分析放射性肺炎的风险因素,为食管癌制定合适的治疗计划。

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