SIMULATION OF INTERVAL CENSORED DATA IN MEDICAL AND BIOLOGICAL STUDIES
Author(s) -
Kaveh Kiani,
Jayanthi Arasan
Publication year - 2012
Publication title -
international journal of modern physics conference series
Language(s) - English
Resource type - Journals
ISSN - 2010-1945
DOI - 10.1142/s2010194512005168
Subject(s) - interval (graph theory) , statistics , gompertz function , event (particle physics) , mean squared error , survival analysis , survival function , function (biology) , confidence interval , computer science , data set , mathematics , physics , quantum mechanics , combinatorics , evolutionary biology , biology
This research looks at the simulation of interval censored data when the survivor function of the survival time is known and attendance probability of the subjects for follow-ups can take any number between 0 to 1. Interval censored data often arise in the medical and biological follow-up studies where the event of interest occurs somewhere between two known times. Regardless of the methods used to analyze these types of data, simulation of interval censored data is an important and challenging step toward model building and prediction of survival time. The simulation itself is rather tedious and very computer intensive due to the interval monitoring of subjects at prescheduled times and subject's incomplete attendance to follow-ups. In this paper the simulated data by the proposed method were assessed using the bias, standard error and root mean square error (RMSE) of the parameter estimates where the survival time T is assumed to follow the Gompertz distribution function.
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