Abstract

BackgroundBig data research is important for studying uncommon diseases in real-world settings. Most big data studies in axial spondyloarthritis (axSpA) have been limited to populations identified with billing codes for ankylosing spondylitis (AS). axSpA is a more inclusive concept, and reliance on AS codes does not produce a comprehensive axSpA study population. The first objective was to describe our process for establishing an appropriate sample of patients with and without axSpA for developing accurate axSpA identification methods. The second objective was to determine the classification performance of AS billing codes against the chart-reviewed axSpA reference standard.MethodsVeteran Health Affairs clinical and administrative data, between January 2005 and June 2015, were used to randomly select patients with clinical phenotypes that represented high, moderate, and low likelihoods of an axSpA diagnosis. With chart review, the sampled patients were classified as Yes axSpA, No axSpA or Uncertain axSpA, and these classification assignments were used as the reference standard for determining the positive predictive value (PPV) and sensitivity of AS ICD-9 codes for axSpA.ResultsSix hundred patients were classified as Yes axSpA (26.8%), No axSpA (68.3%), or Uncertain axSpA (4.8%). The PPV and sensitivity of an AS ICD-9 code for axSpA were 83.3% and 57.3%, respectively.ConclusionsStandard methods of identifying axSpA patients in a large dataset lacked sensitivity. An appropriate sample of patients with and without axSpA was established and characterized for developing novel axSpA identification methods that are anticipated to enable previously impractical big data research.

Highlights

  • Big data research is important for studying uncommon diseases in real-world settings

  • Big data research is important for spondyloarthritis (SpA), since concepts of SpA have broadened in recent years [2]

  • The axial SpA concept was introduced in 2009 [3], when it became apparent from advances in imaging and treatment that nearly one-half of patients with an axial inflammatory arthritis phenotype were excluded from traditional axSpA definitions [4]

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Summary

Introduction

Big data research is important for studying uncommon diseases in real-world settings. Most big data studies in axial spondyloarthritis (axSpA) have been limited to populations identified with billing codes for ankylosing spondylitis (AS). The first objective was to describe our process for establishing an appropriate sample of patients with and without axSpA for developing accurate axSpA identification methods. Big data research is necessary for studying uncommon diseases and outcomes in real-world settings [1]. The ideal approach is to screen patients from the general population and classify them as having or not having axSpA. This approach is impractical for uncommon diseases, like axSpA, since

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