Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.

There is a paucity of studies applying Generalized Estimating Equations (GEE) for longitudinal analysis of smoking cessation outcomes within the framework of a cluster randomized trial, especially among tuberculosis (TB) patients. In this study, a GEE model which accounts for repeated measures and c...

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Published in:PLoS ONE
Main Authors: Vasantha Mahalingam, Ratnakar Singh, Ramesh Kumar Santhanakrishnan, Adhin Bhaskar, Ponnuraja Chinnaiyan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Online Access:https://doi.org/10.1371/journal.pone.0333992
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author Vasantha Mahalingam
Ratnakar Singh
Ramesh Kumar Santhanakrishnan
Adhin Bhaskar
Ponnuraja Chinnaiyan
author_facet Vasantha Mahalingam
Ratnakar Singh
Ramesh Kumar Santhanakrishnan
Adhin Bhaskar
Ponnuraja Chinnaiyan
author_sort Vasantha Mahalingam
collection DOAJ
container_title PLoS ONE
description There is a paucity of studies applying Generalized Estimating Equations (GEE) for longitudinal analysis of smoking cessation outcomes within the framework of a cluster randomized trial, especially among tuberculosis (TB) patients. In this study, a GEE model which accounts for repeated measures and cluster-level effects was implemented to identify factors associated with smoking cessation among TB patients. The data included 375 TB patients who were smokers and given TB treatment during 2013-2016 in Kanchipuram and Villupuram districts under a cluster randomized trial. GEE modeling provided robust, population-averaged estimates while accounting for intra-cluster correlation, confirming the sustained impact of these interventions. The model demonstrated that smoking cessation interventions, when integrated with TB treatment, had an impact on cessation outcomes in these populations.
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spelling doaj-art-901c244f9b4e48dba85bc02f67e2fb542025-10-15T05:31:26ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-012010e033399210.1371/journal.pone.0333992Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.Vasantha MahalingamRatnakar SinghRamesh Kumar SanthanakrishnanAdhin BhaskarPonnuraja ChinnaiyanThere is a paucity of studies applying Generalized Estimating Equations (GEE) for longitudinal analysis of smoking cessation outcomes within the framework of a cluster randomized trial, especially among tuberculosis (TB) patients. In this study, a GEE model which accounts for repeated measures and cluster-level effects was implemented to identify factors associated with smoking cessation among TB patients. The data included 375 TB patients who were smokers and given TB treatment during 2013-2016 in Kanchipuram and Villupuram districts under a cluster randomized trial. GEE modeling provided robust, population-averaged estimates while accounting for intra-cluster correlation, confirming the sustained impact of these interventions. The model demonstrated that smoking cessation interventions, when integrated with TB treatment, had an impact on cessation outcomes in these populations.https://doi.org/10.1371/journal.pone.0333992
spellingShingle Vasantha Mahalingam
Ratnakar Singh
Ramesh Kumar Santhanakrishnan
Adhin Bhaskar
Ponnuraja Chinnaiyan
Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.
title Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.
title_full Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.
title_fullStr Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.
title_full_unstemmed Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.
title_short Generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients.
title_sort generalized estimating equations for modeling cluster randomized trial data on smoking cessation among tuberculosis patients
url https://doi.org/10.1371/journal.pone.0333992
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