A comparison of time dependent Cox regression, pooled logistic regression and cross sectional pooling with simulations and an application to the Framingham Heart Study
Background Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up. The Cox regression model has been used widely in the analyses of time to diagnosis or death from disease. The associations between t...
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Published in | BMC medical research methodology Vol. 16; no. 1; p. 148 |
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Main Authors | , , , , , , |
Format | Journal Article |
Language | English |
Published |
London
BioMed Central
03.11.2016
BMC |
Subjects | |
Online Access | Get full text |
ISSN | 1471-2288 1471-2288 |
DOI | 10.1186/s12874-016-0248-6 |
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Abstract | Background
Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up. The Cox regression model has been used widely in the analyses of time to diagnosis or death from disease. The associations between the survival outcome and time dependent measures may be biased unless they are modeled appropriately.
Methods
In this paper we explore the Time Dependent Cox Regression Model (TDCM), which quantifies the effect of repeated measures of covariates in the analysis of time to event data. This model is commonly used in biomedical research but sometimes does not explicitly adjust for the times at which time dependent explanatory variables are measured. This approach can yield different estimates of association compared to a model that adjusts for these times. In order to address the question of how different these estimates are from a statistical perspective, we compare the TDCM to Pooled Logistic Regression (PLR) and Cross Sectional Pooling (CSP), considering models that adjust and do not adjust for time in PLR and CSP.
Results
In a series of simulations we found that time adjusted CSP provided identical results to the TDCM while the PLR showed larger parameter estimates compared to the time adjusted CSP and the TDCM in scenarios with high event rates. We also observed upwardly biased estimates in the unadjusted CSP and unadjusted PLR methods. The time adjusted PLR had a positive bias in the time dependent Age effect with reduced bias when the event rate is low. The PLR methods showed a negative bias in the Sex effect, a subject level covariate, when compared to the other methods. The Cox models yielded reliable estimates for the Sex effect in all scenarios considered.
Conclusions
We conclude that survival analyses that explicitly account in the statistical model for the times at which time dependent covariates are measured provide more reliable estimates compared to unadjusted analyses. We present results from the Framingham Heart Study in which lipid measurements and myocardial infarction data events were collected over a period of 26 years. |
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AbstractList | Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up. The Cox regression model has been used widely in the analyses of time to diagnosis or death from disease. The associations between the survival outcome and time dependent measures may be biased unless they are modeled appropriately.
In this paper we explore the Time Dependent Cox Regression Model (TDCM), which quantifies the effect of repeated measures of covariates in the analysis of time to event data. This model is commonly used in biomedical research but sometimes does not explicitly adjust for the times at which time dependent explanatory variables are measured. This approach can yield different estimates of association compared to a model that adjusts for these times. In order to address the question of how different these estimates are from a statistical perspective, we compare the TDCM to Pooled Logistic Regression (PLR) and Cross Sectional Pooling (CSP), considering models that adjust and do not adjust for time in PLR and CSP.
In a series of simulations we found that time adjusted CSP provided identical results to the TDCM while the PLR showed larger parameter estimates compared to the time adjusted CSP and the TDCM in scenarios with high event rates. We also observed upwardly biased estimates in the unadjusted CSP and unadjusted PLR methods. The time adjusted PLR had a positive bias in the time dependent Age effect with reduced bias when the event rate is low. The PLR methods showed a negative bias in the Sex effect, a subject level covariate, when compared to the other methods. The Cox models yielded reliable estimates for the Sex effect in all scenarios considered.
We conclude that survival analyses that explicitly account in the statistical model for the times at which time dependent covariates are measured provide more reliable estimates compared to unadjusted analyses. We present results from the Framingham Heart Study in which lipid measurements and myocardial infarction data events were collected over a period of 26 years. Background Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up. The Cox regression model has been used widely in the analyses of time to diagnosis or death from disease. The associations between the survival outcome and time dependent measures may be biased unless they are modeled appropriately. Methods In this paper we explore the Time Dependent Cox Regression Model (TDCM), which quantifies the effect of repeated measures of covariates in the analysis of time to event data. This model is commonly used in biomedical research but sometimes does not explicitly adjust for the times at which time dependent explanatory variables are measured. This approach can yield different estimates of association compared to a model that adjusts for these times. In order to address the question of how different these estimates are from a statistical perspective, we compare the TDCM to Pooled Logistic Regression (PLR) and Cross Sectional Pooling (CSP), considering models that adjust and do not adjust for time in PLR and CSP. Results In a series of simulations we found that time adjusted CSP provided identical results to the TDCM while the PLR showed larger parameter estimates compared to the time adjusted CSP and the TDCM in scenarios with high event rates. We also observed upwardly biased estimates in the unadjusted CSP and unadjusted PLR methods. The time adjusted PLR had a positive bias in the time dependent Age effect with reduced bias when the event rate is low. The PLR methods showed a negative bias in the Sex effect, a subject level covariate, when compared to the other methods. The Cox models yielded reliable estimates for the Sex effect in all scenarios considered. Conclusions We conclude that survival analyses that explicitly account in the statistical model for the times at which time dependent covariates are measured provide more reliable estimates compared to unadjusted analyses. We present results from the Framingham Heart Study in which lipid measurements and myocardial infarction data events were collected over a period of 26 years. Abstract Background Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up. The Cox regression model has been used widely in the analyses of time to diagnosis or death from disease. The associations between the survival outcome and time dependent measures may be biased unless they are modeled appropriately. Methods In this paper we explore the Time Dependent Cox Regression Model (TDCM), which quantifies the effect of repeated measures of covariates in the analysis of time to event data. This model is commonly used in biomedical research but sometimes does not explicitly adjust for the times at which time dependent explanatory variables are measured. This approach can yield different estimates of association compared to a model that adjusts for these times. In order to address the question of how different these estimates are from a statistical perspective, we compare the TDCM to Pooled Logistic Regression (PLR) and Cross Sectional Pooling (CSP), considering models that adjust and do not adjust for time in PLR and CSP. Results In a series of simulations we found that time adjusted CSP provided identical results to the TDCM while the PLR showed larger parameter estimates compared to the time adjusted CSP and the TDCM in scenarios with high event rates. We also observed upwardly biased estimates in the unadjusted CSP and unadjusted PLR methods. The time adjusted PLR had a positive bias in the time dependent Age effect with reduced bias when the event rate is low. The PLR methods showed a negative bias in the Sex effect, a subject level covariate, when compared to the other methods. The Cox models yielded reliable estimates for the Sex effect in all scenarios considered. Conclusions We conclude that survival analyses that explicitly account in the statistical model for the times at which time dependent covariates are measured provide more reliable estimates compared to unadjusted analyses. We present results from the Framingham Heart Study in which lipid measurements and myocardial infarction data events were collected over a period of 26 years. Background Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up. The Cox regression model has been used widely in the analyses of time to diagnosis or death from disease. The associations between the survival outcome and time dependent measures may be biased unless they are modeled appropriately. Methods In this paper we explore the Time Dependent Cox Regression Model (TDCM), which quantifies the effect of repeated measures of covariates in the analysis of time to event data. This model is commonly used in biomedical research but sometimes does not explicitly adjust for the times at which time dependent explanatory variables are measured. This approach can yield different estimates of association compared to a model that adjusts for these times. In order to address the question of how different these estimates are from a statistical perspective, we compare the TDCM to Pooled Logistic Regression (PLR) and Cross Sectional Pooling (CSP), considering models that adjust and do not adjust for time in PLR and CSP. Results In a series of simulations we found that time adjusted CSP provided identical results to the TDCM while the PLR showed larger parameter estimates compared to the time adjusted CSP and the TDCM in scenarios with high event rates. We also observed upwardly biased estimates in the unadjusted CSP and unadjusted PLR methods. The time adjusted PLR had a positive bias in the time dependent Age effect with reduced bias when the event rate is low. The PLR methods showed a negative bias in the Sex effect, a subject level covariate, when compared to the other methods. The Cox models yielded reliable estimates for the Sex effect in all scenarios considered. Conclusions We conclude that survival analyses that explicitly account in the statistical model for the times at which time dependent covariates are measured provide more reliable estimates compared to unadjusted analyses. We present results from the Framingham Heart Study in which lipid measurements and myocardial infarction data events were collected over a period of 26 years. BACKGROUNDTypical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up. The Cox regression model has been used widely in the analyses of time to diagnosis or death from disease. The associations between the survival outcome and time dependent measures may be biased unless they are modeled appropriately.METHODSIn this paper we explore the Time Dependent Cox Regression Model (TDCM), which quantifies the effect of repeated measures of covariates in the analysis of time to event data. This model is commonly used in biomedical research but sometimes does not explicitly adjust for the times at which time dependent explanatory variables are measured. This approach can yield different estimates of association compared to a model that adjusts for these times. In order to address the question of how different these estimates are from a statistical perspective, we compare the TDCM to Pooled Logistic Regression (PLR) and Cross Sectional Pooling (CSP), considering models that adjust and do not adjust for time in PLR and CSP.RESULTSIn a series of simulations we found that time adjusted CSP provided identical results to the TDCM while the PLR showed larger parameter estimates compared to the time adjusted CSP and the TDCM in scenarios with high event rates. We also observed upwardly biased estimates in the unadjusted CSP and unadjusted PLR methods. The time adjusted PLR had a positive bias in the time dependent Age effect with reduced bias when the event rate is low. The PLR methods showed a negative bias in the Sex effect, a subject level covariate, when compared to the other methods. The Cox models yielded reliable estimates for the Sex effect in all scenarios considered.CONCLUSIONSWe conclude that survival analyses that explicitly account in the statistical model for the times at which time dependent covariates are measured provide more reliable estimates compared to unadjusted analyses. We present results from the Framingham Heart Study in which lipid measurements and myocardial infarction data events were collected over a period of 26 years. |
ArticleNumber | 148 |
Author | LaValley, Michael P. Cabral, Howard J. Cupples, L. Adrienne Gagnon, David R. Cheng, Debbie M. Pencina, Michael J. Ngwa, Julius S. |
Author_xml | – sequence: 1 givenname: Julius S. surname: Ngwa fullname: Ngwa, Julius S. email: ngwaj@bu.edu organization: Department of Biostatistics, Boston University, School of Public Health, Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health – sequence: 2 givenname: Howard J. surname: Cabral fullname: Cabral, Howard J. organization: Department of Biostatistics, Boston University, School of Public Health – sequence: 3 givenname: Debbie M. surname: Cheng fullname: Cheng, Debbie M. organization: Department of Biostatistics, Boston University, School of Public Health – sequence: 4 givenname: Michael J. surname: Pencina fullname: Pencina, Michael J. organization: Department of Biostatistics and Bioinformatics, Duke University, School of Medicine – sequence: 5 givenname: David R. surname: Gagnon fullname: Gagnon, David R. organization: Department of Biostatistics, Boston University, School of Public Health – sequence: 6 givenname: Michael P. surname: LaValley fullname: LaValley, Michael P. organization: Department of Biostatistics, Boston University, School of Public Health – sequence: 7 givenname: L. Adrienne surname: Cupples fullname: Cupples, L. Adrienne email: adrienne@bu.edu organization: Department of Biostatistics, Boston University, School of Public Health, National Heart, Lung, and Blood Institute’s Framingham Heart Study |
BackLink | https://www.ncbi.nlm.nih.gov/pubmed/27809784$$D View this record in MEDLINE/PubMed |
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Cites_doi | 10.1093/acprof:oso/9780195152968.001.0001 10.1161/01.CIR.0000054612.26458.B2 10.1093/oxfordjournals.aje.a114019 10.2307/2530355 10.1016/0021-9681(83)90165-0 10.1111/j.2517-6161.1972.tb00899.x 10.1097/HJH.0b013e3282fcbc22 10.1146/annurev.publhealth.20.1.145 10.1007/978-1-4757-3294-8 10.2307/2529588 10.1016/j.ahj.2012.01.010 10.1161/CIRCULATIONAHA.106.613828 10.1002/sim.2673 10.1002/sim.4780091214 10.1080/01621459.1988.10478612 10.1201/9781420074086 10.2215/CJN.03691106 10.1056/NEJMoa0804742 10.1016/S0029-7844(97)00534-6 10.1016/S0140-6736(09)60443-8 10.1080/01621459.1993.10476346 10.1016/j.ahj.2013.02.025 10.2337/dc10-1265 10.1002/sim.4780080502 10.1002/sim.4780070122 |
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Keywords | Time dependent covariate model (TDCM) Longitudinal and survival data Pooled logistic regression (PLR) Cross sectional pooling (CSP) |
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References | LH Ficociello (248_CR22) 2007; 2 RD Abbott (248_CR9) 1985; 121 RB Schnabel (248_CR25) 2009; 373 LA Cupples (248_CR5) 1988; 7 248_CR12 MS Pepe (248_CR7) 1993; 88 248_CR14 248_CR16 248_CR17 CS Fox (248_CR21) 2006; 113 JW Magnani (248_CR26) 2012; 163 DH Solomon (248_CR24) 2003; 107 JB Meigs (248_CR20) 2008; 359 M Rienstra (248_CR27) 2013; 166 A Burton (248_CR18) 2006; 25 RL Prentice (248_CR8) 1978; 34 RB D'Agostino (248_CR28) 2008; 26 JM Miguel-Yanes De (248_CR19) 2011; 34 248_CR4 B Efron (248_CR15) 1988; 83 248_CR2 248_CR3 DD Ingram (248_CR11) 1989; 8 M Wu (248_CR13) 1979; 35 RB D'Agostino (248_CR6) 1990; 9 MS Green (248_CR10) 1983; 36 LM Marshall (248_CR23) 1997; 90 LD Fisher (248_CR1) 1999; 20 |
References_xml | – ident: 248_CR17 doi: 10.1093/acprof:oso/9780195152968.001.0001 – volume: 107 start-page: 1303 issue: 9 year: 2003 ident: 248_CR24 publication-title: Circulation doi: 10.1161/01.CIR.0000054612.26458.B2 – volume: 121 start-page: 465 issue: 3 year: 1985 ident: 248_CR9 publication-title: Am J Epidemiol doi: 10.1093/oxfordjournals.aje.a114019 – volume: 35 start-page: 513 year: 1979 ident: 248_CR13 publication-title: Biometrics doi: 10.2307/2530355 – volume: 36 start-page: 715 issue: 10 year: 1983 ident: 248_CR10 publication-title: J Chron Dis doi: 10.1016/0021-9681(83)90165-0 – ident: 248_CR4 doi: 10.1111/j.2517-6161.1972.tb00899.x – volume: 26 start-page: 639 issue: 4 year: 2008 ident: 248_CR28 publication-title: J Hypertens doi: 10.1097/HJH.0b013e3282fcbc22 – volume: 20 start-page: 145 issue: 1 year: 1999 ident: 248_CR1 publication-title: Annu Rev Public Health doi: 10.1146/annurev.publhealth.20.1.145 – ident: 248_CR3 doi: 10.1007/978-1-4757-3294-8 – volume: 34 start-page: 57 year: 1978 ident: 248_CR8 publication-title: Biometrics doi: 10.2307/2529588 – volume: 163 start-page: 729 issue: 4 year: 2012 ident: 248_CR26 publication-title: Am Heart J doi: 10.1016/j.ahj.2012.01.010 – ident: 248_CR2 – volume: 113 start-page: 2914 issue: 25 year: 2006 ident: 248_CR21 publication-title: Circulation doi: 10.1161/CIRCULATIONAHA.106.613828 – volume: 25 start-page: 4279 issue: 24 year: 2006 ident: 248_CR18 publication-title: Stat Med doi: 10.1002/sim.2673 – volume: 9 start-page: 1501 issue: 12 year: 1990 ident: 248_CR6 publication-title: Stat Med doi: 10.1002/sim.4780091214 – volume: 83 start-page: 414 issue: 402 year: 1988 ident: 248_CR15 publication-title: J Am Stat Assoc doi: 10.1080/01621459.1988.10478612 – ident: 248_CR14 doi: 10.1201/9781420074086 – volume: 2 start-page: 461 issue: 3 year: 2007 ident: 248_CR22 publication-title: Clin J Am Soc Nephrol doi: 10.2215/CJN.03691106 – volume: 359 start-page: 2208 issue: 21 year: 2008 ident: 248_CR20 publication-title: N Engl J Med doi: 10.1056/NEJMoa0804742 – ident: 248_CR16 – volume: 90 start-page: 967 issue: 6 year: 1997 ident: 248_CR23 publication-title: Obstet Gynecol doi: 10.1016/S0029-7844(97)00534-6 – volume: 373 start-page: 739 issue: 9665 year: 2009 ident: 248_CR25 publication-title: Lancet doi: 10.1016/S0140-6736(09)60443-8 – ident: 248_CR12 – volume: 88 start-page: 811 issue: 423 year: 1993 ident: 248_CR7 publication-title: J Am Stat Assoc doi: 10.1080/01621459.1993.10476346 – volume: 166 start-page: 171 issue: 1 year: 2013 ident: 248_CR27 publication-title: Am Heart J doi: 10.1016/j.ahj.2013.02.025 – volume: 34 start-page: 121 issue: 1 year: 2011 ident: 248_CR19 publication-title: Diabetes Care doi: 10.2337/dc10-1265 – volume: 8 start-page: 525 issue: 5 year: 1989 ident: 248_CR11 publication-title: Stat Med doi: 10.1002/sim.4780080502 – volume: 7 start-page: 205 issue: 1–2 year: 1988 ident: 248_CR5 publication-title: Stat Med doi: 10.1002/sim.4780070122 |
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Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of... Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of follow up.... Background Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of... BACKGROUNDTypical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the course of... Abstract Background Typical survival studies follow individuals to an event and measure explanatory variables for that event, sometimes repeatedly over the... |
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SubjectTerms | Biomarkers - blood Confidence intervals Consent Cross sectional pooling (CSP) Cross-Sectional Studies Data analysis Female Health Sciences Heart attacks Heart Diseases - blood Heart Diseases - mortality Humans Logistic Models Logistics Longitudinal and survival data Longitudinal Studies Male Medicine Medicine & Public Health Pooled logistic regression (PLR) Proportional Hazards Models Research Article Researchers Risk Factors Statistical Theory and Methods statistics and modelling Statistics for Life Sciences Studies Survival Analysis Theory of Medicine/Bioethics Time dependent covariate model (TDCM) Triglycerides - blood |
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Title | A comparison of time dependent Cox regression, pooled logistic regression and cross sectional pooling with simulations and an application to the Framingham Heart Study |
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