两期关节生存模型的诊断。

IF 1.6 Q1 ANTHROPOLOGY
PaleoAmerica Pub Date : 2023-01-01 Epub Date: 2021-10-26 DOI:10.1080/03610918.2021.1995751
I L Singini, H G Mwambi, F N Gumedze
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引用次数: 0

摘要

两阶段联合生存模型用于分析可能与生物标志物相关的时间到事件结果。两阶段关节生存模型的模型检查工具有限,通常使用生存模型的标准诊断工具进行评估。可以改进和实施诊断工具。两阶段联合生存模型中的时变协变量可能包含外围观察值或对象。在本研究中,我们使用方差偏移异常值模型(VSOM)来检测两期关节生存模型第一阶段的异常值并降低其权重。这需要在观测水平拟合一个VSOM,在受试者水平拟合一个VSOM,然后为识别的异常值拟合一个组合的VSOM。然后从组合的VSOM中提取拟合值,然后将其用作扩展Cox模型中的时变协变量。我们在一个多中心随机临床试验的数据集上说明了这种方法。一项多中心试验表明,联合VSOM比扩展Cox模型更适合数据。我们注意到,在需要时,实现组合VSOM具有更好的拟合性,这是基于离群值被降权的事实。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnostics for a two-stage joint survival model.

A two-stage joint survival model is used to analyse time to event outcomes that could be associated with biomakers that are repeatedly collected over time. A Two-stage joint survival model has limited model checking tools and is usually assessed using standard diagnostic tools for survival models. The diagnostic tools can be improved and implemented. Time-varying covariates in a two-stage joint survival model might contain outlying observations or subjects. In this study we used the variance shift outlier model (VSOM) to detect and down-weight outliers in the first stage of the two-stage joint survival model. This entails fitting a VSOM at the observation level and a VSOM at the subject level, and then fitting a combined VSOM for the identified outliers. The fitted values were then extracted from the combined VSOM which were then used as time-varying covariate in the extended Cox model. We illustrate this methodology on a dataset from a multi-centre randomised clinical trial. A multi-centre trial showed that a combined VSOM fits the data better than an extended Cox model. We noted that implementing a combined VSOM, when desired, has a better fit based on the fact that outliers are down-weighted.

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来源期刊
PaleoAmerica
PaleoAmerica Earth and Planetary Sciences-Paleontology
CiteScore
3.70
自引率
0.00%
发文量
15
期刊介绍: PaleoAmerica disseminates new research results and ideas about early human dispersal and migrations, with a particular focus on the Americas. It fosters an interdisciplinary dialog between archaeologists, geneticists and other scientists investigating the dispersal of modern humans during the late Pleistocene. The journal has three goals: First and foremost, the journal is a vehicle for the presentation of new research results. Second, it includes editorials on special topics written by leaders in the field. Third, the journal solicits essays covering current debates in the field, the state of research in relevant disciplines, and summaries of new research findings in a particular region, for example Beringia, the Eastern Seaboard or the Southern Cone of South America. Although the journal’s focus is the peopling of the Americas, editorials and research essays also highlight the investigation of early human colonization of empty lands in other areas of the world. As techniques are developing so rapidly, work in other regions can be very relevant to the Americas, so the journal will publish research relating to other regions which has relevance to research on the Americas.
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