Goodness-of-Fit for Length-Biased Survival Data with Right-Censoring

Cross-sectional surveys are often used in epidemiological studies to identify subjects with a disease. When estimating the survival function from onset of disease, this sampling mechanism introduces bias, which must be accounted for. If the onset times of the disease are assumed to be coming from a...

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Main Author: Younger, Jaime
Language:en
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/10393/20670
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OOU.#10393-206702013-10-04T04:23:02ZGoodness-of-Fit for Length-Biased Survival Data with Right-CensoringYounger, JaimeLength-biasRight-censoringLeft-TruncationKolmogorov-SmirnovPrevalent cohortCross-sectional samplingCross-sectional surveys are often used in epidemiological studies to identify subjects with a disease. When estimating the survival function from onset of disease, this sampling mechanism introduces bias, which must be accounted for. If the onset times of the disease are assumed to be coming from a stationary Poisson process, this bias, which is caused by the sampling of prevalent rather than incident cases, is termed length-bias. A one-sample Kolomogorov-Smirnov type of goodness-of-fit test for right-censored length-biased data is proposed and investigated with Weibull, log-normal and log-logistic models. Algorithms detailing how to efficiently generate right-censored length-biased survival data of these parametric forms are given. Simulation is employed to assess the effects of sample size and censoring on the power of the test. Finally, the test is used to evaluate the goodness-of-fit using length-biased survival data of patients with dementia from the Canadian Study of Health and Aging.2012-02-02T18:53:12Z2012-02-02T18:53:12Z20122012-02-02http://hdl.handle.net/10393/20670en
collection NDLTD
language en
sources NDLTD
topic Length-bias
Right-censoring
Left-Truncation
Kolmogorov-Smirnov
Prevalent cohort
Cross-sectional sampling
spellingShingle Length-bias
Right-censoring
Left-Truncation
Kolmogorov-Smirnov
Prevalent cohort
Cross-sectional sampling
Younger, Jaime
Goodness-of-Fit for Length-Biased Survival Data with Right-Censoring
description Cross-sectional surveys are often used in epidemiological studies to identify subjects with a disease. When estimating the survival function from onset of disease, this sampling mechanism introduces bias, which must be accounted for. If the onset times of the disease are assumed to be coming from a stationary Poisson process, this bias, which is caused by the sampling of prevalent rather than incident cases, is termed length-bias. A one-sample Kolomogorov-Smirnov type of goodness-of-fit test for right-censored length-biased data is proposed and investigated with Weibull, log-normal and log-logistic models. Algorithms detailing how to efficiently generate right-censored length-biased survival data of these parametric forms are given. Simulation is employed to assess the effects of sample size and censoring on the power of the test. Finally, the test is used to evaluate the goodness-of-fit using length-biased survival data of patients with dementia from the Canadian Study of Health and Aging.
author Younger, Jaime
author_facet Younger, Jaime
author_sort Younger, Jaime
title Goodness-of-Fit for Length-Biased Survival Data with Right-Censoring
title_short Goodness-of-Fit for Length-Biased Survival Data with Right-Censoring
title_full Goodness-of-Fit for Length-Biased Survival Data with Right-Censoring
title_fullStr Goodness-of-Fit for Length-Biased Survival Data with Right-Censoring
title_full_unstemmed Goodness-of-Fit for Length-Biased Survival Data with Right-Censoring
title_sort goodness-of-fit for length-biased survival data with right-censoring
publishDate 2012
url http://hdl.handle.net/10393/20670
work_keys_str_mv AT youngerjaime goodnessoffitforlengthbiasedsurvivaldatawithrightcensoring
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