Literature DB >> 17909374

Using propensity scores subclassification to estimate effects of longitudinal treatments: an example using a new diabetes medication.

Jodi B Segal1, Michael Griswold, Aristide Achy-Brou, Robert Herbert, Eric B Bass, Sydney M Dy, Anne E Millman, Albert W Wu, Constantine E Frangakis.   

Abstract

BACKGROUND: When using observational data to compare the effectiveness of medications, it is essential to account parsimoniously for patients' longitudinal characteristics that lead to changes in treatments over time.
OBJECTIVES: We developed a method of estimating effects of longitudinal treatments that uses subclassification on a longitudinal propensity score to compare outcomes between a new drug (exenatide) and established drugs (insulin and oral medications) assuming knowledge of the variables influencing the treatment assignment. RESEARCH DESIGN/
SUBJECTS: We assembled a retrospective cohort of patients with diabetes mellitus from among a population of employed persons and their dependents.
METHODS: The data, from i3Innovus, includes claims for utilization of medications and inpatient and outpatient services. We estimated a model for the longitudinal propensity score process of receiving a medication of interest. We used our methods to estimate the effect of the new versus established drugs on total health care charges and hospitalization.
RESULTS: We had data from 131,714 patients with diabetes filling prescriptions from June through December 2005. Within propensity score quintiles, the explanatory covariates were well-balanced. We estimated that the total health care charges per month that would have occurred if all patients had been continually on exenatide compared with if the same patients had been on insulin were minimally higher, with a mean monthly difference of $397 [95% confidence interval (CI), $218-$1054]. The odds of hospitalization were also comparable (relative odds, 1.02; 95% CI, 0.33-1.98).
CONCLUSIONS: We used subclassification of a longitudinal propensity score for reducing the multidimensionality of observational data, including treatments changing over time. In our example, evaluating a new diabetes drug, there were no demonstrable differences in outcomes relative to existing therapies.

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Year:  2007        PMID: 17909374     DOI: 10.1097/MLR.0b013e31804ffd6d

Source DB:  PubMed          Journal:  Med Care        ISSN: 0025-7079            Impact factor:   2.983


  4 in total

1.  Estimating treatment effects of longitudinal designs using regression models on propensity scores.

Authors:  Aristide C Achy-Brou; Constantine E Frangakis; Michael Griswold
Journal:  Biometrics       Date:  2010-09       Impact factor: 2.571

2.  Time-dependent propensity score and collider-stratification bias: an example of beta2-agonist use and the risk of coronary heart disease.

Authors:  M Sanni Ali; Rolf H H Groenwold; Wiebe R Pestman; Svetlana V Belitser; Arno W Hoes; A de Boer; Olaf H Klungel
Journal:  Eur J Epidemiol       Date:  2013-01-25       Impact factor: 8.082

3.  Medication utilization patterns among type 2 diabetes patients initiating Exenatide BID or insulin glargine: a retrospective database study.

Authors:  Manjiri Pawaskar; Machaon Bonafede; Barbara Johnson; Robert Fowler; Gregory Lenhart; Byron Hoogwerf
Journal:  BMC Endocr Disord       Date:  2013-06-22       Impact factor: 2.763

Review 4.  Preventing all-cause hospitalizations in type 2 diabetes with sodium-glucose cotransporter-2 inhibitors and glucagon-like peptide-1 receptor agonists: A narrative review and proposed clinical approach.

Authors:  Meir Schechter; Matan Fischer; Ofri Mosenzon
Journal:  Diabetes Obes Metab       Date:  2022-03-24       Impact factor: 6.408

  4 in total

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