| Literature DB >> 21709298 |
Patrick J O'Connor1, Noni L Bodkin, Judith Fradkin, Russell E Glasgow, Sheldon Greenfield, Edward Gregg, Eve A Kerr, L Gregory Pawlson, Joseph V Selby, John E Sutherland, Michael L Taylor, Carol H Wysham.
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Year: 2011 PMID: 21709298 PMCID: PMC3120200 DOI: 10.2337/dc11-0735
Source DB: PubMed Journal: Diabetes Care ISSN: 0149-5992 Impact factor: 19.112
Summary of selected opportunities for new or improved diabetes performance measures based on increasingly sophisticated electronic data systems and including patient-reported measures
| Opportunity for innovation | Goal of measure | Challenges | Examples or prototype |
| Measures for primary prevention of diabetes | Reinforce broad efforts to curb the epidemic of obesity and diabetes | Extends accountability beyond health care system to community, schools, and work sites | Percent of work sites that offer health risk appraisal and health coach; percent schools with healthy food and adequate physical activity |
| Measures that include resource use | Encourage efficient use of limited resources | Which providers are accountable for resource use when many provide care? | Percent of generics used when generic available; ratio of resource use to quality of care |
| Clinical action measures | Encourage timely treatments that are safe and beneficial | Validation of measures needed; require detailed integrated data systems | Percent of diabetes patients at LDL goal or on moderate-dose statin |
| Partial credit measures | Encourage providers to focus on patients in the worst control | Developing consensus calibration for partial credit | NCQA Diabetes Recognition Program |
| Adjust quality measures for patient characteristics | Avoid unintended consequences of lower pay for providers in low-SES settings, thus worsening health care disparities | Identify weighting factors such as patient health literacy or social deprivation index. Do not condone good poor care | HEDIS already adjusted by insurance type |
| Patient-reported measures | Integrate standard set of measures within EHR data structures | Measure selection and validation; efficiency of data collection | CAHPS, NHS, PROMIS |
| Personalized risk-based measures | Identify and prioritize clinical actions of greatest benefit to patients at encounter | Incomplete evidence base to assess reversible risk reduction in all scenarios | Prototype risk engines available (QRISK, UKPDS, Archimedes, Framingham, Wizard) |