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Survival analysis: part II – applied clinical data analysis

机译:生存分析:第二部分–应用临床数据分析

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摘要

As a follow-up to a previous article, this review provides several in-depth concepts regarding a survival analysis. Also, several codes for specific survival analysis are listed to enhance the understanding of such an analysis and to provide an applicable survival analysis method. A proportional hazard assumption is an important concept in survival analysis. Validation of this assumption is crucial for survival analysis. For this purpose, a graphical analysis method and a goodnessof- fit test are introduced along with detailed codes and examples. In the case of a violated proportional hazard assumption, the extended models of a Cox regression are required. Simplified concepts of a stratified Cox proportional hazard model and time-dependent Cox regression are also described. The source code for an actual analysis using an available statistical package with a detailed interpretation of the results can enable the realization of survival analysis with personal data. To enhance the statistical power of survival analysis, an evaluation of the basic assumptions and the interaction between variables and time is important. In doing so, survival analysis can provide reliable scientific results with a high level of confidence.
机译:作为上一篇文章的后续,这篇评论提供了一些有关生存分析的深入概念。另外,列出了一些用于特定生存分析的代码,以增强对此类分析的理解并提供适用的生存分析方法。比例风险假设是生存分析中的重要概念。该假设的验证对于生存分析至关重要。为此,引入了图形分析方法和拟合优度测试以及详细的代码和示例。在违反比例风险假设的情况下,需要使用Cox回归的扩展模型。还描述了分层Cox比例风险模型的简化概念和与时间有关的Cox回归。使用可用的统计软件包对结果进行详细解释的实际分析源代码可以实现使用个人数据进行生存分析。为了增强生存分析的统计能力,对基本假设以及变量与时间之间的相互作用进行评估非常重要。这样一来,生存分析就可以以高置信度提供可靠的科学结果。

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