The problem of analyzing data with updated measurements in the time-dependent proportional hazards model arises frequently in practice. One available option is to reduce the number of intervals (or updated measurements) to be included in the Cox regression model. We empirically investigated the bias of the estimator of the time-dependent covariate while varying the effect of failure rate, sample size, true values of the parameters and the number of intervals. We also evaluated how often a time-dependent covariate needs to be collected and assessed the effect of sample size and failure rate on the power of testing a time-dependent effect.^ A time-dependent proportional hazards model with two binary covariates was considered. The time axis...
Cox’s proportional hazards model is routinely used in many ap- plied fields, especially in bio–medic...
Master of ArtsDepartment of StatisticsPaul NelsonThere are two important statistical models for mult...
Master of ArtsDepartment of StatisticsPaul NelsonThere are two important statistical models for mult...
The problem of analyzing data with updated measurements in the time-dependent proportional hazards m...
The Cox proportional-hazards regression model has achieved widespread use in the analysis of time-to...
We consider the joint modelling of longitudinal and event time data. The longitudinal data are irreg...
We consider the joint modelling of longitudinal and event time data. The longitudinal data are irreg...
Time-varying covariance occurs when a covariate changes over time during the follow-up period. Such ...
When comparing the survival time according to time-dependent covariate, there may be a guarantee-tim...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
Abstract Background Typical survival studies follow individuals to an event and measure explanatory ...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
The longitudinal studies has increased the importance of statistical methods for time-to event data ...
Cox’s proportional hazards model is routinely used in many ap- plied fields, especially in bio–medic...
Master of ArtsDepartment of StatisticsPaul NelsonThere are two important statistical models for mult...
Master of ArtsDepartment of StatisticsPaul NelsonThere are two important statistical models for mult...
The problem of analyzing data with updated measurements in the time-dependent proportional hazards m...
The Cox proportional-hazards regression model has achieved widespread use in the analysis of time-to...
We consider the joint modelling of longitudinal and event time data. The longitudinal data are irreg...
We consider the joint modelling of longitudinal and event time data. The longitudinal data are irreg...
Time-varying covariance occurs when a covariate changes over time during the follow-up period. Such ...
When comparing the survival time according to time-dependent covariate, there may be a guarantee-tim...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
Abstract Background Typical survival studies follow individuals to an event and measure explanatory ...
Cox’s proportional hazards model is routinely used in many applied fields, especially in bio–medica...
The longitudinal studies has increased the importance of statistical methods for time-to event data ...
Cox’s proportional hazards model is routinely used in many ap- plied fields, especially in bio–medic...
Master of ArtsDepartment of StatisticsPaul NelsonThere are two important statistical models for mult...
Master of ArtsDepartment of StatisticsPaul NelsonThere are two important statistical models for mult...