Estimating misclassification error in a binary performance indicator: case study of low value care in Australian hospitals.
Tim Badgery-ParkerSallie-Anne PearsonAdam G ElshaugPublished in: BMJ quality & safety (2020)
Binary performance indicators have a potential for misclassification error, especially if they depend on clinical information extracted from administrative data. Indicators should be validated by chart review, but this is resource-intensive and costly. The modelling approach presented here can be used as an initial validation step to identify and revise indicators that may have issues before continuing to a full chart review validation.