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Missed opportunities mapping: computable healthcare quality improvement. Benjamin Brown Trainee General Practitioner and PhD student Richard Williams, John Ainsworth, Iain Buchan Medinfo , Copenhagen, 21 st August 2013. @ BenjaminCBrown. Benjamin.Brown@manchester.ac.uk. Current practice.
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Missed opportunities mapping: computable healthcare quality improvement Benjamin Brown Trainee General Practitioner and PhD student Richard Williams, John Ainsworth, Iain Buchan Medinfo, Copenhagen, 21st August 2013 @BenjaminCBrown Benjamin.Brown@manchester.ac.uk
Missed Opportunities Mapping “failure to deliver a quality standard of clinical care that likely contributes to an adverse outcome that may otherwise have been avoided if it had been achieved”
Software Ainsworth J, and Buchan I. COCPIT: A Tool for Integrated Care Pathway Variance Analysis. Studies in health technology and informatics. 2012: 180: 995–9.
Demo: hypertension and CVD World-leading cause of death More deaths <75 years that any other condition UK and NW England performs worse than anywhere in developed world 90% of MI risk attributable to modifiable risk factors One of most important is HTN 1/3 adult UK population have HTN - most prevalent risk factor and LTC Clear guidance abundant 2010 UK national health survey: >40% remain ↑BP 44% of patients do not receive guideline rx Therefore, when a hypertensive patient suffers a CVD event it is reasonable to ask: Was there a missed opportunity for this to have been prevented/postponed? What was the association with patient demographics, deprivation and co-morbidities?
Demo: methods • Salford, UK - 3rd highest preventable mortality from CVD • Fully integrated EHR > 232K people, 53 GPs and 1 hospital • All HTN patients suffering CVD events between 2007-12 • Whether or not achieved HTN management standards prior
Headline figures • 3718 patients with CVD events • 1186 (32%) – last BP ≥ 140/90 • 1323 (36%) – average BP ≥ 140/90 • 382 (10%) – unmeasured two years prior • Estimated cost £3.1M ($4.9M)
Age Ethnicity Gender Deprivation Multimorbidity Uncontrolled Unmeasured
Uncontrolled Unmeasured
Uncontrolled Unmeasured
Conclusions • A new model for QI • New computational approach • Translatable to multiple clinical scenarios • Demonstration study • Real-life data to test model • Directly implementable clinical information • Further work • Generalisability • Clinical significance • Virtuous circle
Thank you for listening Acknowledgements Dr Matthew Sperrin, Biostatistician Dr Tim Frank, Academic GP Dr WashikParkar, GP Dr Steve Little, Cardiologist Professor Simon Capewell, Cardiovascular epidemiologist Dr Artur Akbarov, Biostatisician @BenjaminCBrown Benjamin.Brown@manchester.ac.uk