Journal of Biometrics & Biostatistics | |
Confidence Intervals Estimation for Survival Function in Log-Logistic Distribution and Proportional Odds Regression Based on Censored Survival Time Data | |
article | |
Kamil ALAKUS1  Necati Alp ERILLI1  | |
[1] Ondokuz Mayıs University, Faculty of science and Arts, Department of Statistics | |
关键词: Confidence interval; Hazard function; Point estimation; Survival analysis; Survival function; Log-logistic distribution; Proportional odds regression.; | |
DOI : 10.4172/2155-6180.1000116 | |
来源: Hilaris Publisher | |
【 摘 要 】
Log-logistic and Weibull distributions have both accelerated survival time property. The log-logistic distribution has also proportional odds property. Log-logistic distribution has unimodal hazard curve which changes direction. Link [6,7] presented a confidence interval estimate of survival function using Cox\'s proportional hazard model with covariates. Her idea more recently extended by [1] to the exponential distribution and [2] to exponential proportional hazard model, respectively. The same idea has been extended to the Weibull proportional hazard regression model by [3]. In this study, it is formed on confidence interval for log-logistic distribution survival function for any values of the time provided that the survival times have a log-logistic distributed random variable. It is also extended the same results to the proportional odds regression. A Real time data and a simulation data examples are also considered in the study for illustration the discussed confidence interval.
【 授权许可】
Unknown
【 预 览 】
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