Estimation of sensitivity depending on sojourn time and time spent in preclinical state.

Abstract:

:The probability model for periodic screening was extended to provide statistical inference for sensitivity depending on sojourn time, in which the sensitivity was modeled as a function of time spent in the preclinical state and the sojourn time. The likelihood function with the proposed sensitivity model was then evaluated with simulated data to check its reliability in terms of the mean estimation and the standard error. Simulation results showed that the maximum likelihood estimates of the proposed model have little bias and small standard errors. The extended probability model was further applied to the Johns Hopkins Lung Project data using both maximum likelihood estimation and Bayesian Markov chain Monte Carlo.

journal_name

Stat Methods Med Res

authors

Kim S,Wu D

doi

10.1177/0962280212465499

subject

Has Abstract

pub_date

2016-04-01 00:00:00

pages

728-40

issue

2

eissn

0962-2802

issn

1477-0334

pii

0962280212465499

journal_volume

25

pub_type

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