Application of machine learning models to explore prognosis and cause of death in advanced intrahepatic cholangiocarcinoma patients undergoing chemotherapy.

IF 2.8 4区 医学 Q3 ENDOCRINOLOGY & METABOLISM
Qin Zeng, Xin Wang, Jun Liu, Yiqing Jiang, Guili Cao, Ke Su, Xiaoqin Liu
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Abstract

Background: This study was aimed at examining the causes of death (CODs) in patients with advanced intrahepatic cholangiocarcinoma (ICC) undergoing chemotherapy (CT). In addition, machine learning models were incorporated to predict the treatment outcomes of patients with advanced ICC and identify the factors most closely related to prognosis.

Methods: A total of 5564 patients (CT group, 3632; non-CT group, 1932) were included in the Surveillance Epidemiology and End Results registries between 2000 and 2020. The CODs were compared between the two groups before and after the inverse probability of treatment weighting (IPTW). Furthermore, seven machine learning models were utilized as predictive tools to select variable features, aiming to assess the therapeutic effectiveness in patients with advanced ICC.

Results: After IPTW, the CT group exhibited a lower cumulative incidence of cholangiocarcinoma-related deaths (30%, 49%, and 73% vs. 59%, 66%, and 73%; P < 0.001), secondary malignant neoplasms (8.5%, 13%, and 20% vs. 19%, 22%, and 24%; P < 0.001), and other CODs (1.8%, 2.9%, and 4.4% vs. 4.1%, 4.6%, and 5.4%; P < 0.001) at 0.5-, 1-, and 3- years than the non-CT group, whereas the cumulative incidence of cardiovascular diseases (P = 0.4) was comparable between the two groups. Of the seven machine learning models, the random forest model showed the highest predictive effectiveness. This model verified that variables such as CT, radiotherapy, tumor dimensions, sex, and distant metastasis were strongly correlated with the prognosis of advanced ICC.

Conclusions: CT has improved the therapeutic efficacy of advanced ICC without significantly increasing other CODs. Furthermore, the analysis of various features using machine learning models has confirmed that the random forest model demonstrates the highest predictive performance.

应用机器学习模型探讨晚期肝内胆管癌化疗患者的预后和死亡原因。
研究背景本研究旨在探讨接受化疗(CT)的晚期肝内胆管癌(ICC)患者的死亡原因(CODs)。此外,研究还纳入了机器学习模型,以预测晚期 ICC 患者的治疗结果,并确定与预后关系最密切的因素:2000年至2020年间,共有5564名患者(CT组3632人;非CT组1932人)被纳入监测流行病学和最终结果登记处。比较了两组患者在逆治疗概率加权(IPTW)前后的 CODs。此外,还利用七个机器学习模型作为预测工具来选择变量特征,旨在评估晚期ICC患者的治疗效果:结果:IPTW后,CT组胆管癌相关死亡累积发生率较低(30%、49%和73% vs. 59%、66%和73%;P 结论:CT改善了晚期ICC患者的治疗效果:CT 提高了晚期 ICC 的疗效,而不会显著增加其他 COD。此外,使用机器学习模型对各种特征进行的分析证实,随机森林模型具有最高的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Discover. Oncology
Discover. Oncology Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
2.40
自引率
9.10%
发文量
122
审稿时长
5 weeks
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