Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study

Abstract Background Aspirin has been considered to be beneficial in preventing cardiovascular diseases and cancer. Several pharmaco-epidemiology cohort studies have shown protective effects of aspirin on diseases using various statistical methods, with the Cox regression model being the most commonl...

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Main Authors: In Sung Cho, Ye Rin Chae, Ji Hyeon Kim, Hae Rin Yoo, Suk Yong Jang, Gyu Ri Kim, Chung Mo Nam
Format: Article
Language:English
Published: BMC 2017-08-01
Series:BMC Medical Research Methodology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12874-017-0405-6
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spelling doaj-046be2984b1c493cb8d08513b33c908c2020-11-24T23:51:50ZengBMCBMC Medical Research Methodology1471-22882017-08-011711710.1186/s12874-017-0405-6Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation studyIn Sung Cho0Ye Rin Chae1Ji Hyeon Kim2Hae Rin Yoo3Suk Yong Jang4Gyu Ri Kim5Chung Mo Nam6Yonsei University, College of MedicineYonsei University, College of MedicineDepartment of Biostatistics and Medical Informatics, Yonsei University College of MedicineDepartment of Biostatistics and Medical Informatics, Yonsei University College of MedicineDepartment of Preventive Medicine, Eulji University College of MedicineDepartment of Biostatistics, Graduate School of Public health, Yonsei UniversityDepartment of Biostatistics and Medical Informatics, Yonsei University College of MedicineAbstract Background Aspirin has been considered to be beneficial in preventing cardiovascular diseases and cancer. Several pharmaco-epidemiology cohort studies have shown protective effects of aspirin on diseases using various statistical methods, with the Cox regression model being the most commonly used approach. However, there are some inherent limitations to the conventional Cox regression approach such as guarantee-time bias, resulting in an overestimation of the drug effect. To overcome such limitations, alternative approaches, such as the time-dependent Cox model and landmark methods have been proposed. This study aimed to compare the performance of three methods: Cox regression, time-dependent Cox model and landmark method with different landmark times in order to address the problem of guarantee-time bias. Methods Through statistical modeling and simulation studies, the performance of the above three methods were assessed in terms of type I error, bias, power, and mean squared error (MSE). In addition, the three statistical approaches were applied to a real data example from the Korean National Health Insurance Database. Effect of cumulative rosiglitazone dose on the risk of hepatocellular carcinoma was used as an example for illustration. Results In the simulated data, time-dependent Cox regression outperformed the landmark method in terms of bias and mean squared error but the type I error rates were similar. The results from real-data example showed the same patterns as the simulation findings. Conclusions While both time-dependent Cox regression model and landmark analysis are useful in resolving the problem of guarantee-time bias, time-dependent Cox regression is the most appropriate method for analyzing cumulative dose effects in pharmaco-epidemiological studies.http://link.springer.com/article/10.1186/s12874-017-0405-6Cox regressionGuarantee-time biasLandmark methodTime-dependent Cox regression
collection DOAJ
language English
format Article
sources DOAJ
author In Sung Cho
Ye Rin Chae
Ji Hyeon Kim
Hae Rin Yoo
Suk Yong Jang
Gyu Ri Kim
Chung Mo Nam
spellingShingle In Sung Cho
Ye Rin Chae
Ji Hyeon Kim
Hae Rin Yoo
Suk Yong Jang
Gyu Ri Kim
Chung Mo Nam
Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study
BMC Medical Research Methodology
Cox regression
Guarantee-time bias
Landmark method
Time-dependent Cox regression
author_facet In Sung Cho
Ye Rin Chae
Ji Hyeon Kim
Hae Rin Yoo
Suk Yong Jang
Gyu Ri Kim
Chung Mo Nam
author_sort In Sung Cho
title Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study
title_short Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study
title_full Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study
title_fullStr Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study
title_full_unstemmed Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study
title_sort statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study
publisher BMC
series BMC Medical Research Methodology
issn 1471-2288
publishDate 2017-08-01
description Abstract Background Aspirin has been considered to be beneficial in preventing cardiovascular diseases and cancer. Several pharmaco-epidemiology cohort studies have shown protective effects of aspirin on diseases using various statistical methods, with the Cox regression model being the most commonly used approach. However, there are some inherent limitations to the conventional Cox regression approach such as guarantee-time bias, resulting in an overestimation of the drug effect. To overcome such limitations, alternative approaches, such as the time-dependent Cox model and landmark methods have been proposed. This study aimed to compare the performance of three methods: Cox regression, time-dependent Cox model and landmark method with different landmark times in order to address the problem of guarantee-time bias. Methods Through statistical modeling and simulation studies, the performance of the above three methods were assessed in terms of type I error, bias, power, and mean squared error (MSE). In addition, the three statistical approaches were applied to a real data example from the Korean National Health Insurance Database. Effect of cumulative rosiglitazone dose on the risk of hepatocellular carcinoma was used as an example for illustration. Results In the simulated data, time-dependent Cox regression outperformed the landmark method in terms of bias and mean squared error but the type I error rates were similar. The results from real-data example showed the same patterns as the simulation findings. Conclusions While both time-dependent Cox regression model and landmark analysis are useful in resolving the problem of guarantee-time bias, time-dependent Cox regression is the most appropriate method for analyzing cumulative dose effects in pharmaco-epidemiological studies.
topic Cox regression
Guarantee-time bias
Landmark method
Time-dependent Cox regression
url http://link.springer.com/article/10.1186/s12874-017-0405-6
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