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Analysis of Survival Data: Challenges and Algorithm-Based Model Selection LC14-LC20

机译:生存数据分析:挑战和基于算法的模型选择LC14-LC20

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Survival data is a special form of time to event data that is often encountered while modelling risk. The classical Cox proportional hazard model, that is popularly used to analyse survival data, cannot be used for modelling risk when the proportional hazard assumption is violated or when there is recurrent time to event data. In this context we conducted this narrative review to develop an algorithm for selection of advanced methods of analysing survival data in the above-mentioned situations. Findings were synthesized from literature retrieved from searches of Pubmed, Embase, and Google Scholar. Existing literature suggest that for non-proportionality, especially due to categorical predictors stratified Cox model may be useful. An accelerated failure time model is applicable in case of different follow-up time among different experimental groups and the median time to event is the outcome of interest instead of hazard. Extended Cox models and marginal models are used in case of multivariate ordered failure events and the type of model depends upon the presence of clustering and nature of ordering. In the presence of heterogeneity, a shared frailty model is used that is analogous to mixed models. More advanced models, including competing risk and multistate models are required for modelling competing risk, multiple states and multiple transitions. Joint models are used for multiple time dependent outcomes with different attributes. We have developed an algorithm based on the review for appropriate model selection to curb the challenge of modeling survival data and the algorithm is expected to help the na?ve researchers in analysing survival data.
机译:生存数据是时间到事件数据的一种特殊形式,在建模风险时经常会遇到这种情况。当违反比例风险假设或事件数据经常出现时,经典的Cox比例风险模型通常用于分析生存数据,不能用于建模风险。在这种情况下,我们进行了叙述性回顾,以开发一种算法,用于选择在上述情况下分析生存数据的高级方法。研究结果是根据从Pubmed,Embase和Google Scholar搜索中检索到的文献合成的。现有文献表明,对于非比例性,特别是由于分类预测因素,分层Cox模型可能有用。在不同实验组之间的随访时间不同的情况下,可以应用加速故障时间模型,事件发生的中位时间是关注的结果而不是危险的结果。在多元有序故障事件的情况下,使用扩展的Cox模型和边际模型,并且模型的类型取决于聚类的存在和排序的性质。在存在异构性的情况下,使用类似于混合模型的共享脆弱模型。建模竞争风险,多个状态和多个转换需要更高级的模型,包括竞争风险和多状态模型。联合模型用于具有不同属性的多个时间依赖性结果。我们在此基础上开发了一种算法,可进行适当的模型选择,以应对生存数据建模的挑战,该算法有望帮助幼稚的研究人员分析生存数据。

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