Literature DB >> 14736348

Evaluating disease management program effectiveness: an introduction to time-series analysis.

Ariel Linden1, John L Adams, Nancy Roberts.   

Abstract

Currently, the most widely used method in the disease management (DM) industry for evaluating program effectiveness is referred to as the "total population approach." This model is a pretest-posttest design, with the most basic limitation being that without a control group, there may be sources of bias and/or competing extraneous confounding factors that offer a plausible rationale explaining the change from baseline. Furthermore, with the current inclination of DM programs to use financial indicators rather than program-specific utilization indicators as the principal measure of program success, additional biases are introduced that may cloud evaluation results. This paper presents a non-technical introduction to time-series analysis (using disease-specific utilization measures) as an alternative, and more appropriate, approach to evaluating DM program effectiveness than the current total population approach.

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Year:  2003        PMID: 14736348     DOI: 10.1089/109350703322682559

Source DB:  PubMed          Journal:  Dis Manag        ISSN: 1093-507X


  11 in total

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