Interrupted time series versus statistical process control in quality improvement projects

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Abstract

To measure the effect of quality improvement interventions, it is appropriate to use analysis methods that measure data over time. Examples of such methods include statistical process control analysis and interrupted time series with segmented regression analysis. This article compares the use of statistical process control analysis and interrupted time series with segmented regression analysis for evaluating the longitudinal effects of quality improvement interventions, using an example study on an evaluation of a computerized decision support system.

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APA

Hagiwara, M. A., Gare, B. A., & Elg, M. (2016). Interrupted time series versus statistical process control in quality improvement projects. Journal of Nursing Care Quality, 31(1), E1–E8. https://doi.org/10.1097/NCQ.0000000000000130

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