Literature DB >> 27114456

Administrative data are not sensitive for the detection of peripheral artery disease in the community.

Yongzhe Hong1, Meghan Sebastianski2, Mark Makowsky3, Ross Tsuyuki4, M Sean McMurtry5.   

Abstract

We sought to evaluate whether case ascertainment using administrative health data would be a feasible way to identify peripheral artery disease (PAD) patients from the community. Subjects' ankle-brachial index (ABI) scores from two previous prospective observational studies were linked with International Classification of Diseases (ICD) and Canadian Classification of Interventions (CCI) codes from three administrative databases from April 2002 to March 2012, including the Alberta Inpatient Hospital Database (ICD-10-CA/CCI), Ambulatory Care Database (ICD-10-CA/CCI), and the Practitioner Payments Database (ICD-9-CM). We calculated diagnostic statistics for putative case definitions of PAD consisting of individual code or sets of codes, using an ABI score ⩽ 0.90 as the gold standard. Multivariate logistic regression was performed to investigate additional predictive factors for PAD. Different combinations of diagnostic codes and predictive factors were explored to find out the best algorithms for identifying a PAD study cohort. A total of 1459 patients were included in our analysis. The average age was 63.5 years, 66% were male, and the prevalence of PAD was 8.1%. The highest sensitivity of 34.7% was obtained using the algorithm of at least one ICD diagnostic or procedure code, with specificity 91.9%, positive predictive value (PPV) 27.5% and negative predictive value (NPV) 94.1%. The algorithm achieving the highest PPV of 65% was age ⩾ 70 years and at least one code within 443.9 (ICD-9-CM), I73.9, I79.2 (ICD-10-CA/CCI), or all procedure codes, validated with ABI < 1.0 (sensitivity 5.56%, specificity 99.4% and NPV 84.6%). In conclusion, ascertaining PAD using administrative data scores was insensitive compared with the ABI, limiting the use of administrative data in the community setting.
© The Author(s) 2016.

Entities:  

Keywords:  Canadian Classification of Interventions (CCI); International Classification of Diseases (ICD); administrative data; ankle–brachial index; peripheral artery disease

Mesh:

Year:  2016        PMID: 27114456     DOI: 10.1177/1358863X16631041

Source DB:  PubMed          Journal:  Vasc Med        ISSN: 1358-863X            Impact factor:   3.239


  8 in total

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2.  Clinician Specialty, Access to Care, and Outcomes Among Patients with Peripheral Artery Disease.

Authors:  E Hope Weissler; Cassie B Ford; Dennis I Narcisse; Steven J Lippmann; Michelle M Smerek; Melissa A Greiner; N Chantelle Hardy; Benjamin O'Brien; R Casey Sullivan; Adam J Brock; Chandler Long; Lesley H Curtis; Manesh R Patel; W Schuyler Jones
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3.  Use of Natural Language Processing to Improve Identification of Patients With Peripheral Artery Disease.

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4.  Risk for recurrent cardiovascular disease events among patients with diabetes and chronic kidney disease.

Authors:  Demetria Hubbard; Lisandro D Colantonio; Robert S Rosenson; Todd M Brown; Elizabeth A Jackson; Lei Huang; Kate K Orroth; Stephanie Reading; Mark Woodward; Vera Bittner; Orlando M Gutierrez; Monika M Safford; Michael E Farkouh; Paul Muntner
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5.  Variability in Annual Fasting Glucose and the Risk of Peripheral Artery Disease in Patients with Diabetes Mellitus.

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Review 6.  Epidemiology of Peripheral Artery Disease: Narrative Review.

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7.  Implementing Cardiovascular Risk Prediction in Clinical Practice: The Future Is Now.

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Journal:  J Am Heart Assoc       Date:  2017-04-24       Impact factor: 5.501

Review 8.  Burden of Coronary Artery Disease and Peripheral Artery Disease: A Literature Review.

Authors:  Rupert Bauersachs; Uwe Zeymer; Jean-Baptiste Brière; Caroline Marre; Kevin Bowrin; Maria Huelsebeck
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  8 in total

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