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影响摩洛哥结直肠癌患者生存的风险因素:使用可解释机器学习方法的生存分析。

Risk factors affecting patients survival with colorectal cancer in Morocco: survival analysis using an interpretable machine learning approach.

机构信息

Mohammed VI Center for Research and Innovation, Rabat, Morocco.

International School of Public Health, Mohammed VI University of Sciences and Health, Casablanca, Morocco.

出版信息

Sci Rep. 2024 Feb 12;14(1):3556. doi: 10.1038/s41598-024-51304-3.

Abstract

The aim of our study was to assess the overall survival rates for colorectal cancer at 3 years and to identify associated strong prognostic factors among patients in Morocco through an interpretable machine learning approach. This approach is based on a fully non-parametric survival random forest (RSF), incorporating variable importance and partial dependence effects. The data was povided from a retrospective study of 343 patients diagnosed and followed at Hassan II University Hospital. Covariate selection was performed using the variable importance based on permutation and partial dependence plots were displayed to explore in depth the relationship between the estimated partial effect of a given predictor and survival rates. The predictive performance was measured by two metrics, the Concordance Index (C-index) and the Brier Score (BS). Overall survival rates at 1, 2 and 3 years were, respectively, 87% (SE = 0.02; CI-95% 0.84-0.91), 77% (SE = 0.02; CI-95% 0.73-0.82) and 60% (SE = 0.03; CI-95% 0.54-0.66). In the Cox model after adjustment for all covariates, sex, tumor differentiation had no significant effect on prognosis, but rather tumor site had a significant effect. The variable importance obtained from RSF strengthens that surgery, stage, insurance, residency, and age were the most important prognostic factors. The discriminative capacity of the Cox PH and RSF was, respectively, 0.771 and 0.798 for the C-index while the accuracy of the Cox PH and RSF was, respectively, 0.257 and 0.207 for the BS. This shows that RSF had both better discriminative capacity and predictive accuracy. Our results show that patients who are older than 70, living in rural areas, without health insurance, at a distant stage and who have not had surgery constitute a subgroup of patients with poor prognosis.

摘要

我们的研究目的是评估摩洛哥患者的 3 年总生存率,并通过可解释的机器学习方法确定相关的强预后因素。该方法基于完全非参数生存随机森林(RSF),结合变量重要性和部分依赖效应。数据来自哈桑二世大学医院回顾性研究的 343 名患者。使用基于置换的变量重要性进行协变量选择,并显示部分依赖图以深入探索给定预测器的估计部分效应与生存率之间的关系。预测性能通过两个指标衡量,即一致性指数(C 指数)和 Brier 评分(BS)。1、2 和 3 年的总生存率分别为 87%(SE=0.02;95%CI-95%0.84-0.91)、77%(SE=0.02;95%CI-95%0.73-0.82)和 60%(SE=0.03;95%CI-95%0.54-0.66)。在调整所有协变量后的 Cox 模型中,性别、肿瘤分化对预后没有显著影响,但肿瘤部位有显著影响。RSF 获得的变量重要性表明,手术、分期、保险、居住和年龄是最重要的预后因素。Cox PH 和 RSF 的区分能力分别为 C 指数的 0.771 和 0.798,Cox PH 和 RSF 的准确性分别为 BS 的 0.257 和 0.207。这表明 RSF 具有更好的区分能力和预测准确性。我们的结果表明,年龄大于 70 岁、居住在农村地区、没有医疗保险、处于晚期且未接受手术的患者构成了预后不良的亚组。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d634/10861582/d1fb830e9c23/41598_2024_51304_Fig1_HTML.jpg

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