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基于机器学习的预后模型以及影响肺癌脑转移患者原发灶手术获益的因素。

Machine learning-based prognostic models and factors influencing the benefit of surgery on primary lesion for patients with lung cancer brain metastases.

作者信息

Zhao Xixi, Li Chaofan, Liu Mengjie, Feng Zeyao, Wei Xinyu, Wang Yusheng, Zhao Jiaqi, Zhang Shuqun, Qu Jingkun

机构信息

Department of Radiation Oncology, The Second Affiliated Hospital of Xi'an Jiaotong University Xi'an, Shaanxi, P. R. China.

Department of Surgical Oncology, The Comprehensive Breast Care Center, The Second Affiliated Hospital of Xi'an Jiaotong University Xi'an, Shaanxi, P. R. China.

出版信息

Am J Cancer Res. 2024 Nov 15;14(11):5154-5177. doi: 10.62347/PRFQ9244. eCollection 2024.

Abstract

Brain metastasis is very common in lung cancer and it's a fatal disease with extremely poor prognosis. Until now, there has been a lack of accurate and efficient prognostic models for patients with lung cancer brain metastases (LCBM), and the factors influencing the effectiveness of the surgery on primary lesion for these patients remain unclear. We used 7 machine learning algorithms to create prognostic models to predict the overall survival (OS) of LCBM based on the data from the Surveillance Epidemiology and End Results. Then, a series of validation methods, including area under the curve values, receiver operating characteristic curve analysis, calibration curves, decision curve analysis and external data validation were used to confirm the high discrimination, accuracy, and clinical applicability of the XGBoost models. Propensity score matching adjusted analysis was conducted for further stratified analysis to find factors influencing the benefit of surgery on primary lesion for LCBM. Models using XGBoost algorithm performed best. Surgery on primary lesion was a favorable independent prognostic factor for LCBM. Age > 70 years old, blacks, grade IV, stage T4, N3, other distant organ metastases, squamous cell carcinoma, large cell carcinoma and no radiation were all unfavorable factors of primary lung tumor surgery for the prognosis of LCBM. Our study is the first one to create highly accurate AI models to predict the OS of LCBM. Our in-depth stratified analysis found some influence factors of surgery on primary lesion for the prognosis of LCBM.

摘要

脑转移在肺癌中非常常见,是一种预后极差的致命疾病。到目前为止,对于肺癌脑转移(LCBM)患者,一直缺乏准确有效的预后模型,且影响这些患者原发灶手术疗效的因素仍不明确。我们基于监测、流行病学和最终结果数据,使用7种机器学习算法创建预后模型,以预测LCBM患者的总生存期(OS)。然后,采用一系列验证方法,包括曲线下面积值、受试者工作特征曲线分析、校准曲线、决策曲线分析和外部数据验证,来证实XGBoost模型具有较高的区分度、准确性和临床适用性。进行倾向评分匹配调整分析以进一步分层分析,找出影响LCBM患者原发灶手术获益的因素。使用XGBoost算法的模型表现最佳。原发灶手术是LCBM患者良好的独立预后因素。年龄>70岁、黑人、IV级、T4期、N3期、其他远处器官转移、鳞状细胞癌、大细胞癌以及未接受放疗均是影响LCBM患者原发灶手术预后的不利因素。我们的研究是首个创建高精度人工智能模型来预测LCBM患者OS的研究。我们深入的分层分析发现了一些影响LCBM患者原发灶手术预后的因素。

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