Literature DB >> 12679509

Using routine comparative data to assess the quality of health care: understanding and avoiding common pitfalls.

A E Powell1, H T O Davies, R G Thomson.   

Abstract

Measuring the quality of health care has become a major concern for funders and providers of health services in recent decades. One of the ways in which quality of care is currently assessed is by taking routinely collected data and analysing them quantitatively. The use of routine data has many advantages but there are also some important pitfalls. Collating numerical data in this way means that comparisons can be made--whether over time, with benchmarks, or with other healthcare providers (at individual or institutional levels of aggregation). Inevitably, such comparisons reveal variations. The natural inclination is then to assume that such variations imply rankings: that the measures reflect quality and that variations in the measures reflect variations in quality. This paper identifies reasons why these assumptions need to be applied with care, and illustrates the pitfalls with examples from recent empirical work. It is intended to guide not only those who wish to interpret comparative quality data, but also those who wish to develop systems for such analyses themselves.

Mesh:

Year:  2003        PMID: 12679509      PMCID: PMC1743685          DOI: 10.1136/qhc.12.2.122

Source DB:  PubMed          Journal:  Qual Saf Health Care        ISSN: 1475-3898


  52 in total

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Journal:  J Eval Clin Pract       Date:  1998-02       Impact factor: 2.431

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Journal:  Psychiatr Serv       Date:  1997-01       Impact factor: 3.084

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Journal:  J Healthc Qual       Date:  1996 Nov-Dec       Impact factor: 1.095

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Authors:  L I Iezzoni
Journal:  JAMA       Date:  1997-11-19       Impact factor: 56.272

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Journal:  Med Care       Date:  1995-03       Impact factor: 2.983

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Authors:  A H Leyland; F A Boddy
Journal:  Lancet       Date:  1998-02-21       Impact factor: 79.321

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Authors:  L I Iezzoni
Journal:  Ann Thorac Surg       Date:  1994-12       Impact factor: 4.330

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  57 in total

1.  Regional variations in quinolone use in France and associated factors.

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Journal:  Eur J Clin Microbiol Infect Dis       Date:  2012-05-29       Impact factor: 3.267

2.  The role of case mix in the relation of volume and outcome in phacoemulsification.

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Journal:  Br J Ophthalmol       Date:  2005-09       Impact factor: 4.638

3.  Short stay emergency admissions to a West Midlands NHS Trust: a longitudinal descriptive study, 2002 2005.

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Journal:  Emerg Med J       Date:  2007-08       Impact factor: 2.740

4.  Can an electronic prescribing system detect doctors who are more likely to make a serious prescribing error?

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5.  Mental health medication and service utilisation before, during and after war: a nested case-control study of exposed and non-exposed general population, 'at risk', and severely mentally ill cohorts.

Authors:  M Gelkopf; A Kodesh; N Werbeloff
Journal:  Epidemiol Psychiatr Sci       Date:  2015-01-30       Impact factor: 6.892

6.  Analysing the length of care episode after hip fracture: a nonparametric and a parametric Bayesian approach.

Authors:  Jaakko Riihimäki; Reijo Sund; Aki Vehtari
Journal:  Health Care Manag Sci       Date:  2010-06

7.  A Bias in the Evaluation of Bias Comparing Randomized Trials with Nonexperimental Studies.

Authors:  Jessica M Franklin; Sara Dejene; Krista F Huybrechts; Shirley V Wang; Martin Kulldorff; Kenneth J Rothman
Journal:  Epidemiol Methods       Date:  2017-04-22

8.  The quality of outpatient antimicrobial prescribing: a comparison between two areas of northern and southern Europe.

Authors:  Sara Malo; Lars Bjerrum; Cristina Feja; María Jesús Lallana; José María Abad; María José Rabanaque-Hernández
Journal:  Eur J Clin Pharmacol       Date:  2013-12-10       Impact factor: 2.953

9.  Modeling the volume-effectiveness relationship in the case of hip fracture treatment in Finland.

Authors:  Reijo Sund
Journal:  BMC Health Serv Res       Date:  2010-08-13       Impact factor: 2.655

10.  Analysing low-risk patient populations allows better discrimination between high-performing and low-performing hospitals: a case study using inhospital mortality from acute myocardial infarction.

Authors:  Michael Coory; Ian Scott
Journal:  Qual Saf Health Care       Date:  2007-10
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