Spline-based sieve semiparametric generalized estimating equation for panel count data

In this thesis, we propose to analyze panel count data using a spline-based sieve generalized estimating equation method with a semiparametric proportional mean model E(N(t)|Z) = Λ0(t) eβT0Z. The natural log of the baseline mean function, logΛ0(t), is approximated by a monotone cubic B-spline functi...

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Main Author: Hua, Lei
Other Authors: Zhang, Ying
Format: Others
Language:English
Published: University of Iowa 2010
Subjects:
Online Access:https://ir.uiowa.edu/etd/517
https://ir.uiowa.edu/cgi/viewcontent.cgi?article=1702&context=etd
id ndltd-uiowa.edu-oai-ir.uiowa.edu-etd-1702
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spelling ndltd-uiowa.edu-oai-ir.uiowa.edu-etd-17022019-10-13T04:36:35Z Spline-based sieve semiparametric generalized estimating equation for panel count data Hua, Lei In this thesis, we propose to analyze panel count data using a spline-based sieve generalized estimating equation method with a semiparametric proportional mean model E(N(t)|Z) = Λ0(t) eβT0Z. The natural log of the baseline mean function, logΛ0(t), is approximated by a monotone cubic B-spline function. The estimates of regression parameters and spline coefficients are the roots of the spline based sieve generalized estimating equations (sieve GEE). The proposed method avoids assumingany parametric structure of the baseline mean function and the underlying counting process. Selection of an appropriate covariance matrix that represents the true correlation between the cumulative counts improves estimating efficiency. In addition to the parameters existing in the proportional mean function, the estimation that accounts for the over-dispersion and autocorrelation involves an extra nuisance parameter σ2, which could be estimated using a method of moment proposed by Zeger (1988). The parameters in the mean function are then estimated by solving the pseudo generalized estimating equation with σ2 replaced by its estimate, σ2n. We show that the estimate of (β0,Λ0) based on this two-stage approach is still consistent and could converge at the optimal convergence rate in the nonparametric/semiparametric regression setting. The asymptotic normality of the estimate of β0 is also established. We further propose a spline-based projection variance estimating method and show its consistency. Simulation studies are conducted to investigate finite sample performance of the sieve semiparametric GEE estimates, as well as different variance estimating methods with different sample sizes. The covariance matrix that accounts for the overdispersion generally increases estimating efficiency when overdispersion is present in the data. Finally, the proposed method with different covariance matrices is applied to a real data from a bladder tumor clinical trial. 2010-05-01T07:00:00Z dissertation application/pdf https://ir.uiowa.edu/etd/517 https://ir.uiowa.edu/cgi/viewcontent.cgi?article=1702&context=etd Copyright 2010 Lei Hua Theses and Dissertations eng University of IowaZhang, Ying Counting process Generalized Estimating Equation Monotone polynomial splines Over-dispersion Semiparametric model Biostatistics
collection NDLTD
language English
format Others
sources NDLTD
topic Counting process
Generalized Estimating Equation
Monotone polynomial splines
Over-dispersion
Semiparametric model
Biostatistics
spellingShingle Counting process
Generalized Estimating Equation
Monotone polynomial splines
Over-dispersion
Semiparametric model
Biostatistics
Hua, Lei
Spline-based sieve semiparametric generalized estimating equation for panel count data
description In this thesis, we propose to analyze panel count data using a spline-based sieve generalized estimating equation method with a semiparametric proportional mean model E(N(t)|Z) = Λ0(t) eβT0Z. The natural log of the baseline mean function, logΛ0(t), is approximated by a monotone cubic B-spline function. The estimates of regression parameters and spline coefficients are the roots of the spline based sieve generalized estimating equations (sieve GEE). The proposed method avoids assumingany parametric structure of the baseline mean function and the underlying counting process. Selection of an appropriate covariance matrix that represents the true correlation between the cumulative counts improves estimating efficiency. In addition to the parameters existing in the proportional mean function, the estimation that accounts for the over-dispersion and autocorrelation involves an extra nuisance parameter σ2, which could be estimated using a method of moment proposed by Zeger (1988). The parameters in the mean function are then estimated by solving the pseudo generalized estimating equation with σ2 replaced by its estimate, σ2n. We show that the estimate of (β0,Λ0) based on this two-stage approach is still consistent and could converge at the optimal convergence rate in the nonparametric/semiparametric regression setting. The asymptotic normality of the estimate of β0 is also established. We further propose a spline-based projection variance estimating method and show its consistency. Simulation studies are conducted to investigate finite sample performance of the sieve semiparametric GEE estimates, as well as different variance estimating methods with different sample sizes. The covariance matrix that accounts for the overdispersion generally increases estimating efficiency when overdispersion is present in the data. Finally, the proposed method with different covariance matrices is applied to a real data from a bladder tumor clinical trial.
author2 Zhang, Ying
author_facet Zhang, Ying
Hua, Lei
author Hua, Lei
author_sort Hua, Lei
title Spline-based sieve semiparametric generalized estimating equation for panel count data
title_short Spline-based sieve semiparametric generalized estimating equation for panel count data
title_full Spline-based sieve semiparametric generalized estimating equation for panel count data
title_fullStr Spline-based sieve semiparametric generalized estimating equation for panel count data
title_full_unstemmed Spline-based sieve semiparametric generalized estimating equation for panel count data
title_sort spline-based sieve semiparametric generalized estimating equation for panel count data
publisher University of Iowa
publishDate 2010
url https://ir.uiowa.edu/etd/517
https://ir.uiowa.edu/cgi/viewcontent.cgi?article=1702&context=etd
work_keys_str_mv AT hualei splinebasedsievesemiparametricgeneralizedestimatingequationforpanelcountdata
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