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Mixed-Effects Parametric Proportional Hazard Model with Generalized Log-Logistic Baseline Distribution

Mixed-Effects Parametric Proportional Hazard Model with Generalized Log-Logistic Baseline Distribution
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摘要 Clustered survival data are widely observed in a variety of setting. Most survival models incorporate clustering and grouping of data accounting for between-cluster variability that creates correlation in order to prevent underestimate of the standard errors of the parameter estimators but do not include random effects. In this study, we developed a mixed-effect parametric proportional hazard (MEPPH) model with a generalized log-logistic distribution baseline. The parameters of the model were estimated by the application of the maximum likelihood estimation technique with an iterative optimization procedure (quasi-Newton Raphson). The developed MEPPH model’s performance was evaluated using Monte Carlo simulation. The Leukemia dataset with right-censored data was used to demonstrate the model’s applicability. The results revealed that all covariates, except age in PH models, were significant in all considered distributions. Age and Townsend score were significant when the GLL distribution was used in MEPPH, while sex, age and Townsend score were significant in MEPPH model when other distributions were used. Based on information criteria values, the Generalized Log-Logistic Mixed-Effects Parametric Proportional Hazard model (GLL-MEPPH) outperformed other models. Clustered survival data are widely observed in a variety of setting. Most survival models incorporate clustering and grouping of data accounting for between-cluster variability that creates correlation in order to prevent underestimate of the standard errors of the parameter estimators but do not include random effects. In this study, we developed a mixed-effect parametric proportional hazard (MEPPH) model with a generalized log-logistic distribution baseline. The parameters of the model were estimated by the application of the maximum likelihood estimation technique with an iterative optimization procedure (quasi-Newton Raphson). The developed MEPPH model’s performance was evaluated using Monte Carlo simulation. The Leukemia dataset with right-censored data was used to demonstrate the model’s applicability. The results revealed that all covariates, except age in PH models, were significant in all considered distributions. Age and Townsend score were significant when the GLL distribution was used in MEPPH, while sex, age and Townsend score were significant in MEPPH model when other distributions were used. Based on information criteria values, the Generalized Log-Logistic Mixed-Effects Parametric Proportional Hazard model (GLL-MEPPH) outperformed other models.
作者 Maryrose Wausi Peter Samuel Musili Mwalili Anthony Kibira Wanjoya Abdsalam Hassan Muse Maryrose Wausi Peter;Samuel Musili Mwalili;Anthony Kibira Wanjoya;Abdsalam Hassan Muse(Pan African University Institute for Basic Sciences, Technology and Innovation (PAUSTI), Nairobi, Kenya;Jomo kenyatta University of Agriculture and Technology (JKUAT), Nairobi, Kenya)
出处 《Journal of Data Analysis and Information Processing》 2023年第2期81-102,共22页 数据分析和信息处理(英文)
关键词 Survival Analysis Generalized Log-Logistic PARAMETRIC Proportional Hazard Mixed-Effects Monte Carlo Maximum Likelihood Estimation Survival Analysis Generalized Log-Logistic Parametric Proportional Hazard Mixed-Effects Monte Carlo Maximum Likelihood Estimation
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