Parametric Estimation of the “Risk of Melanoma-Related Death” with the Recursion Formula of the Gompertz Survival Function

1997 ◽  
pp. 527-533
Author(s):  
I. D. Bassukas ◽  
A. Lippold ◽  
M. Hundeiker
Author(s):  
Abbas N. Salman ◽  
Ibtehal H. Farhan ◽  
Maymona M. Ameen ◽  
Adel Abdulkadhim Hussein

          In this paper, the survival function has been estimated for the patients with lung cancer using different parametric estimation methods depending on sample for completing real data which explain the period of survival for patients who were ill with the lung cancer based on the diagnosis of disease or the entire of patients in a hospital for a time of two years (starting with 2012 to the end of 2013). Comparisons between the mentioned estimation methods has been performed using statistical indicator mean squares error, concluding that the estimation of the survival function for the lung cancer by using pre-test singles stage shrinkage estimator method was the best   . 


Biostatistics ◽  
2019 ◽  
Vol 21 (4) ◽  
pp. 876-894
Author(s):  
Sedigheh Mirzaei Salehabadi ◽  
Debasis Sengupta ◽  
Rahul Ghosal

Summary In a cross-sectional study, adolescent and young adult females were asked to recall the time of menarche, if experienced. Some respondents recalled the date exactly, some recalled only the month or the year of the event, and some were unable to recall anything. We consider estimation of the menarcheal age distribution from this interval-censored data. A complicated interplay between age-at-event and calendar time, together with the evident fact of memory fading with time, makes the censoring informative. We propose a model where the probabilities of various types of recall would depend on the time since menarche. For parametric estimation, we model these probabilities using multinomial regression function. Establishing consistency and asymptotic normality of the parametric maximum likelihood estimator requires a bit of tweaking of the standard asymptotic theory, as the data format varies from case to case. We also provide a non-parametric maximum likelihood estimator, propose a computationally simpler approximation, and establish the consistency of both these estimators under mild conditions. We study the small sample performance of the parametric and non-parametric estimators through Monte Carlo simulations. Moreover, we provide a graphical check of the assumption of the multinomial model for the recall probabilities, which appears to hold for the menarcheal data set. Our analysis shows that the use of the partially recalled part of the data indeed leads to smaller confidence intervals of the survival function.


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