Literature DB >> 29278142

A stratification approach using logit-based models for confounder adjustment in the study of continuous outcomes.

Chuen Seng Tan1, Nathalie C Støer2,3, Ying Chen1, Marielle Andersson2, Yilin Ning4,5, Hwee-Lin Wee1,6, Eric Yin Hao Khoo7,8, E-Shyong Tai7,8, Shih Ling Kao7,8, Marie Reilly2.   

Abstract

The control of confounding is an area of extensive epidemiological research, especially in the field of causal inference for observational studies. Matched cohort and case-control study designs are commonly implemented to control for confounding effects without specifying the functional form of the relationship between the outcome and confounders. This paper extends the commonly used regression models in matched designs for binary and survival outcomes (i.e. conditional logistic and stratified Cox proportional hazards) to studies of continuous outcomes through a novel interpretation and application of logit-based regression models from the econometrics and marketing research literature. We compare the performance of the maximum likelihood estimators using simulated data and propose a heuristic argument for obtaining the residuals for model diagnostics. We illustrate our proposed approach with two real data applications. Our simulation studies demonstrate that our stratification approach is robust to model misspecification and that the distribution of the estimated residuals provides a useful diagnostic when the strata are of moderate size. In our applications to real data, we demonstrate that parity and menopausal status are associated with percent mammographic density, and that the mean level and variability of inpatient blood glucose readings vary between medical and surgical wards within a national tertiary hospital. Our work highlights how the same class of regression models, available in most statistical software, can be used to adjust for confounding in the study of binary, time-to-event and continuous outcomes.

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Keywords:  Epidemiological designs; breast cancer; diabetes mellitus; extreme value type 1 distribution; glucometrics; linear model; mammographic density; normal errors; rank-ordered logit

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Year:  2017        PMID: 29278142     DOI: 10.1177/0962280217747309

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   3.021


  2 in total

1.  Robust estimation of the effect of an exposure on the change in a continuous outcome.

Authors:  Yilin Ning; Nathalie C Støer; Peh Joo Ho; Shih Ling Kao; Kee Yuan Ngiam; Eric Yin Hao Khoo; Soo Chin Lee; E-Shyong Tai; Mikael Hartman; Marie Reilly; Chuen Seng Tan
Journal:  BMC Med Res Methodol       Date:  2020-06-06       Impact factor: 4.615

2.  An open source tool to compute measures of inpatient glycemic control: translating from healthcare analytics research to clinical quality improvement.

Authors:  Ying Chen; Yilin Ning; Prem Thomas; Mark Salloway; Maudrene Luor Shyuan Tan; E-Shyong Tai; Shih Ling Kao; Chuen Seng Tan
Journal:  JAMIA Open       Date:  2021-06-16
  2 in total

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