The Use of Decomposition Methods in Real-World Treatment Benefits Evaluation for Patients With Type 2 Diabetes Initiating Different Injectable Therapies: Findings From the Initiator Study

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2017

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Abstract

Background: Determining characteristics of patients likely to benefit from a particular treatment could help physicians set personalized targets. OBJECTIVES: To use decomposition methodology on real-world data to identify the relative contributions of treatment effects and patients' baseline characteristics. METHODS: Decomposition analyses were performed on data from the Initiation of New Injectable Treatment Introduced after Antidiabetic Therapy with Oral-only Regimens (INITIATOR) study, a real-world study of patients with type 2 diabetes started on insulin glargine (GLA) or liraglutide (LIRA). These analyses investigated relative contributions of differences in baseline characteristics and treatment effects to observed differences in 1-year outcomes for reduction in glycated hemoglobin A1c (HbA1c) and treatment persistence. RESULTS: The greater HbA1c reduction seen with GLA compared with LIRA (-1.39% vs. -0.74%) was primarily due to differences in baseline characteristics (HbA1c and endocrinologist as prescribing physician; P < 0.050). Patients with baseline HbA1c of 9.0% or more or evidence of diagnosis codes related to mental illness achieved greater HbA1c reductions with GLA, whereas patients with baseline polypharmacy (6-10 classes) or hypogylcemia achieved greater reductions with LIRA. Decomposition analyses also showed that the higher persistence seen with GLA (65% vs. 49%) was mainly caused by differences in treatment effects (P < 0.001). Patients 65 years and older, those with HbA1c of 9.0% or more, those taking three oral antidiabetes drugs, and those with polypharmacy of more than 10 classes had higher persistence with GLA; patients 18 to 39 years and those with HbA1c of 7.0% to less than 8.0% had higher persistence with LIRA. CONCLUSIONS: Although decomposition does not demonstrate causal relationships, this method could be useful for examining the source of differences in outcomes between treatments in a real-world setting and could help physicians identify patients likely to respond to a particular treatment. Copyright (C) 2017 International Society for Pharmacoeconomics and Outcomes Research (ISPOR). Published by Elsevier Inc. All rights reserved.

Description

Onur Başer (MEF Author)

Keywords

Real-world, Type 2 diabetes, Personalized medicine, Liraglutide, Insulin glargine, Choice, Decomposition analysis, Adult, Male, Adolescent, Insulin Glargine, Injections, Young Adult, Choice, Humans, Hypoglycemic Agents, Aged, Retrospective Studies, Glycated Hemoglobin, Assessment of Medication Adherence, Personalized Medicine, Age Factors, Liraglutide, Middle Aged, Type 2 Diabetes, Decomposition Analysis, Treatment Outcome, Real-world, Diabetes Mellitus, Type 2, Polypharmacy, Regression Analysis, Female

Turkish CoHE Thesis Center URL

Fields of Science

03 medical and health sciences, 0302 clinical medicine, 0502 economics and business, 05 social sciences

Citation

Brekke, L., Buysman, E., Grabner, M., Ke, X., Xie, L., Baser, O., & Wei, W. (January 01, 2017). The Use of Decomposition Methods in Real-World Treatment Benefits Evaluation for Patients with Type 2 Diabetes Initiating Different Injectable Therapies: Findings from the INITIATOR Study. Value in Health : the Journal of the International Society for Pharmacoeconomics and Outcomes Research, 20, 10, 1252-1259.

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Value In Health

Volume

20

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10

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1252

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1259
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PubMed : 5

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