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超越生存数据分析中的 Cox 比例风险模型:宫颈癌研究。

Moving beyond the Cox proportional hazards model in survival data analysis: a cervical cancer study.

机构信息

Department of Medical Matters, Puning People's Hospital, Puning, China.

Department of Biostatistics, School of Public Health (Guangdong Provincial Key Laboratory of Tropical Disease Research), Southern Medical University, Guangzhou, China.

出版信息

BMJ Open. 2020 Jul 19;10(7):e033965. doi: 10.1136/bmjopen-2019-033965.

Abstract

OBJECTIVES

This study explored the prognostic factors and developed a prediction model for Chinese-American (CA) cervical cancer (CC) patients. We compared two alternative models (the restricted mean survival time (RMST) model and the proportional baselines landmark supermodel (PBLS model, producing dynamic prediction)) versus the Cox proportional hazards model in the context of time-varying effects.

SETTING AND DATA SOURCES

A total of 713 CA women with CC and available covariates (age at diagnosis, International Federation of Gynecology and Obstetrics (FIGO) stage, lymph node metastasis and radiation) from the Surveillance, Epidemiology and End Results database were included.

DESIGN

We applied the Cox proportional hazards model to analyse the all-cause mortality with the proportional hazards assumption. Additionally, we applied two alternative models to analyse covariates with time-varying effects. The performances of the models were compared using the C-index for discrimination and the shrinkage slope for calibration.

RESULTS

Older patients had a worse survival rate than younger patients. Advanced FIGO stage patients showed a relatively poor survival rate and low life expectancy. Lymph node metastasis was an unfavourable prognostic factor in our models. Age at diagnosis, FIGO stage and lymph node metastasis represented time-varying effects from the PBLS model. Additionally, radiation showed no impact on survival in any model. Dynamic prediction presented a better performance for 5-year dynamic death rates than did the Cox proportional hazards model.

CONCLUSIONS

With the time-varying effects, the RMST model was suggested to explore diagnosis factors, and the PBLS model was recommended to predict a patient's -year dynamic death rate.

摘要

目的

本研究旨在探讨美籍华裔(CA)宫颈癌(CC)患者的预后因素,并建立预测模型。我们比较了两种替代模型(受限平均生存时间(RMST)模型和比例基线地标超模型(PBLS 模型,产生动态预测))与 Cox 比例风险模型在时变效应下的表现。

设置和数据来源

本研究共纳入了来自监测、流行病学和最终结果(SEER)数据库的 713 名 CA 女性 CC 患者,且均有可用的协变量(诊断时年龄、国际妇产科联合会(FIGO)分期、淋巴结转移和放疗)。

设计

我们应用 Cox 比例风险模型分析全因死亡率,并假设比例风险。此外,我们应用两种替代模型分析具有时变效应的协变量。通过判别 C 指数和校准收缩斜率比较模型的性能。

结果

年龄较大的患者生存率较差。晚期 FIGO 分期患者的生存状况较差,预期寿命较低。淋巴结转移是我们模型中的不利预后因素。诊断时年龄、FIGO 分期和淋巴结转移代表了 PBLS 模型的时变效应。此外,放疗在任何模型中均未显示对生存的影响。动态预测在 5 年动态死亡率方面的表现优于 Cox 比例风险模型。

结论

考虑到时变效应,RMST 模型更适合用于探讨诊断因素,而 PBLS 模型更适合用于预测患者的 5 年动态死亡率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9988/7371360/fab08ea9a882/bmjopen-2019-033965f01.jpg

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