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运用机器学习方法探讨年龄对接受放化疗的晚期鼻咽癌患者死因的影响。

Exploring the influence of age on the causes of death in advanced nasopharyngeal carcinoma patients undergoing chemoradiotherapy using machine learning methods.

作者信息

Zhang Mengni, Zhang Shipeng, Ao Xudong, Liu Lisha, Peng Shunlin

机构信息

Department of Otolaryngology, Hospital of Chengdu University of Traditional Chinese Medicine, No.39, Shierqiao Road, Jinniu District, Chengdu, Sichuan, China.

出版信息

Sci Rep. 2025 Jan 13;15(1):1777. doi: 10.1038/s41598-025-86178-6.

Abstract

The present study analyzed the impact of age on the causes of death (CODs) in patients with nasopharyngeal carcinoma (NPC) undergoing chemoradiotherapy (CRT) using machine learning approaches. A total of 2841 patients (1037 classified as older, ≥ 60 years and 1804 as younger, < 60 years) were enrolled. Variations in the CODs between the two age groups were analyzed before and after applying inverse probability of treatment weighting (IPTW). Additionally, seven different machine learning models were employed as predictive tools to identify key variables and assess the therapeutic outcomes in NPC patients receiving CRT. The younger group exhibited a significantly longer overall survival (OS) than the older group, both before the IPTW adjustment (140 vs. 50 months, P < 0.001) and after the adjustment (137 vs. 53 months, P < 0.001). After IPTW, the older group was associated with worse 5-, 10-, and 15-year cumulative incidences in terms of NPC-related deaths (30, 34, and 38% vs. 21, 27, and 30%; P < 0.001), cardiovascular disease (CVD; 4.1, 7.2, and 8.8% vs. 0.5, 1.8, and 3.0%; P < 0.001), and other causes (8.3, 17, and 24% vs. 4.1, 8.7, and 12%; P < 0.001). However, cumulative incidences of secondary malignant neoplasms were comparable between the two groups (P = 0.100). The random forest (RF) model demonstrated the highest concordance index of 0.701 among all models. Time-dependent variable importance plots indicated that age was the most influential factor affecting 3-, 5-, and 10-year survival, followed by metastasis and tumor stage. Younger patients had significantly longer OS than their older counterparts. Older patients had a higher likelihood of dying from non-NPC-related causes, particularly CVDs. The RF model showed the best predictive accuracy, identifying age as the most critical factor influencing OS in NPC patients undergoing CRT.

摘要

本研究采用机器学习方法分析了年龄对接受放化疗(CRT)的鼻咽癌(NPC)患者死因的影响。共纳入2841例患者(1037例年龄较大,≥60岁;1804例年龄较小,<60岁)。在应用治疗权重逆概率(IPTW)前后,分析了两个年龄组之间死因的差异。此外,还采用了七种不同的机器学习模型作为预测工具,以确定关键变量并评估接受CRT的NPC患者的治疗结果。在IPTW调整前(140个月对50个月,P<0.001)和调整后(137个月对53个月,P<0.001),年轻组的总生存期(OS)均显著长于老年组。IPTW后,老年组在NPC相关死亡(30%、34%和38%对21%、27%和30%;P<0.001)、心血管疾病(CVD;4.1%、7.2%和8.8%对0.5%、1.8%和3.0%;P<0.001)以及其他原因(8.3%、17%和24%对4.1%、8.7%和12%;P<0.001)方面的5年、10年和15年累积发病率更高。然而,两组继发性恶性肿瘤的累积发病率相当(P=0.100)。随机森林(RF)模型在所有模型中显示出最高的一致性指数,为0.701。时间依赖变量重要性图表明,年龄是影响3年、5年和10年生存率的最有影响因素,其次是转移和肿瘤分期。年轻患者的OS明显长于老年患者。老年患者死于非NPC相关原因的可能性更高,尤其是心血管疾病。RF模型显示出最佳的预测准确性,确定年龄是影响接受CRT的NPC患者OS的最关键因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f79e/11725570/8c1d4baca805/41598_2025_86178_Fig1_HTML.jpg

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