Requirements, steps forward and remaining challenges for robust and useful composite indicators
Requirement | Steps forward | Remaining challenges |
Transparency The principles and theory underlying the composite indicator must be clear | Being clear about who is involved in making decisions in developing the composite indicator. | Many stakeholders may be involved. The design may evolve in unexpected ways over time. |
Fully describing the decision-making process, reporting the reasons and justifications for the decisions made. | ||
Purpose-led design The composite indicator must plausibly measure what it sets out to measure | Selecting individual measures to cover the full range of services intended to be measured by the composite. | Identifying appropriate individual measures. Appropriate measures may not exist for all areas included in the composite. |
Choosing weights that reflect the relative importance of the different quality measures. | Balancing the weighting system against competing priorities. | |
Technical reproducibility The composite indicator must be reproducible using the raw data and the published methodology | Providing clear and comprehensive technical documentation. | |
Reporting full definitions of the individual underlying measures and how they are combined. | Individual measures may only be available from sources that do not fully document the details, but these measures should not be used in the composite. | |
Publishing the code used in data processing and statistical analysis. | ||
Statistical fitness Individual measures must be adequately adjusted for case-mix, have acceptable statistical reliability and be appropriately standardised to consistent scales | Performing appropriate statistical case-mix adjustment. | Accurate patient-level data may not exist for important case-mix factors. Adequate statistical case-mix adjustment may not be possible. Interpretable results may require further processing. |
Using reporting periods long enough to give acceptable reliability. | Longer reporting periods may be necessary to increase reliability, but impedes use in driving quality improvement. | |
Standardising measures to consistent scales in a principled way that preserves the useful information in the underlying measures. | Understanding what good and bad performance in the real world looks like on each measure. |