Abstract

BackgroundPopulation-level health administrative datasets such as hospital discharge data are used increasingly to evaluate health services and outcomes of care. However information about the accuracy of Australian discharge data in identifying cancer, associated procedures and comorbidity is limited. The Admitted Patients Data Collection (APDC) is a census of inpatient hospital discharges in the state of New South Wales (NSW). Our aim was to assess the accuracy of the APDC in identifying upper gastro-intestinal (upper GI) cancer cases, procedures for associated curative resection and comorbidities at the time of admission compared to data abstracted from medical records (the ‘gold standard’).MethodsWe reviewed the medical records of 240 patients with an incident upper GI cancer diagnosis derived from a clinical database in one NSW area health service from July 2006 to June 2007. Extracted case record data was matched to APDC discharge data to determine sensitivity, positive predictive value (PPV) and agreement between the two data sources (κ-coefficient).ResultsThe accuracy of the APDC diagnostic codes in identifying site-specific incident cancer ranged from 80-95% sensitivity. This was comparable to the accuracy of APDC procedure codes in identifying curative resection for upper GI cancer. PPV ranged from 42-80% for cancer diagnosis and 56-93% for curative surgery. Agreement between the data sources was >0.72 for most cancer diagnoses and curative resections. However, APDC discharge data was less accurate in reporting common comorbidities - for each condition, sensitivity ranged from 9-70%, whilst agreement ranged from κ = 0.64 for diabetes down to κ < 0.01 for gastro-oesophageal reflux disorder.ConclusionsIdentifying incident cases of upper GI cancer and curative resection from hospital administrative data is satisfactory but under-ascertained. Linkage of multiple population-health datasets is advisable to maximise case ascertainment and minimise false-positives. Consideration must be given when utilising hospital discharge data alone for generating comorbidity indices, as disease burden at the time of admission is under-reported.

Highlights

  • Population-level health administrative datasets such as hospital discharge data are used increasingly to evaluate health services and outcomes of care

  • We previously reported on patient outcomes following curable surgical resection for oesophageal cancer in New South Wales (NSW), the largest jurisdiction in Australia, using linked administrative health data [5]

  • Cohort characteristics Of the 472 potential cases identified in area health service (AHS) clinical database, 337 (71%) were available for review; due to mismatching errors during the data linkage process, four records did not link to the Admitted Patients Data Collection (APDC)

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Summary

Introduction

Population-level health administrative datasets such as hospital discharge data are used increasingly to evaluate health services and outcomes of care. Information about the accuracy of Australian discharge data in identifying cancer, associated procedures and comorbidity is limited. Our aim was to assess the accuracy of the APDC in identifying upper gastro-intestinal (upper GI) cancer cases, procedures for associated curative resection and comorbidities at the time of admission compared to data abstracted from medical records (the ‘gold standard’). Analyses using health administrative data is generally based on the assumption that the data sets have high levels of accuracy in identifying medical conditions and associated treatments and services. Some of the well documented limitations are missing data, abstraction errors and misclassification errors [10] Investigations using these data requires high level expertise from the perspective of the analysts and in the interpretation of findings [11,12]

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