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Missed opportunities mapping: computable healthcare quality improvement.

作者信息

Brown Benjamin, Williams Richard, Ainsworth John, Buchan Iain

机构信息

Centre for Health Informatics, Institute of Population Health, University of Manchester and Manchester Academic Health Science Centre, UK.

出版信息

Stud Health Technol Inform. 2013;192:387-91.

PMID:23920582
Abstract

INTRODUCTION

Analysing variance from care pathways in situations when adverse health outcomes have occurred may identify missed opportunities for healthcare improvement.

METHODS

We developed a computational model for contrasting observed with expected care in pathway searches of coded electronic health records (EHRs). The model was applied in Salford, UK, looking at blood pressure (BP) control and cardiovascular disease (CVD) events. BP was summarised as the integral of serial measurements.

RESULTS

A missed opportunities mapping (MOM) model consisting of a collection of disease Events and pathophysiologic States was used to articulate all CVD scenarios conceived. In 3718 patients suffering CVD events in Salford (2007-2012), 1186 (32%) had suboptimal BP control. This missed opportunity detection rose to 36% using the integral instead of the most recent BP record.

CONCLUSIONS

MOM provides a useful, computable model for encoding care pathways and searching EHRs to detect variations from expected care. Further research is needed in other disease areas. The indications however, are that this model could be used to embed healthcare quality improvement at both patient and population levels.

摘要

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