Abstract

BackgroundMedical coding is used for a variety of activities, from observational studies to hospital billing. However, comorbidities tend to be under-reported by medical coders. The aim of this study was to develop an algorithm to detect comorbidities in electronic health records (EHR) by using a clinical data warehouse (CDW) and a knowledge database.MethodsWe enriched the Theriaque pharmaceutical database with the French national Comorbidities List to identify drugs associated with at least one major comorbid condition and diagnoses associated with a drug indication. Then, we compared the drug indications in the Theriaque database with the ICD-10 billing codes in EHR to detect potentially missing comorbidities based on drug prescriptions. Finally, we improved comorbidity detection by matching drug prescriptions and laboratory test results. We tested the obtained algorithm by using two retrospective datasets extracted from the Rennes University Hospital (RUH) CDW. The first dataset included all adult patients hospitalized in the ear, nose, throat (ENT) surgical ward between October and December 2014 (ENT dataset). The second included all adult patients hospitalized at RUH between January and February 2015 (general dataset). We reviewed medical records to find written evidence of the suggested comorbidities in current or past stays.ResultsAmong the 22,132 Common Units of Dispensation (CUD) codes present in the Theriaque database, 19,970 drugs (90.2%) were associated with one or several ICD-10 diagnoses, based on their indication, and 11,162 (50.4%) with at least one of the 4878 comorbidities from the comorbidity list. Among the 122 patients of the ENT dataset, 75.4% had at least one drug prescription without corresponding ICD-10 code. The comorbidity diagnoses suggested by the algorithm were confirmed in 44.6% of the cases. Among the 4312 patients of the general dataset, 68.4% had at least one drug prescription without corresponding ICD-10 code. The comorbidity diagnoses suggested by the algorithm were confirmed in 20.3% of reviewed cases.ConclusionsThis simple algorithm based on combining accessible and immediately reusable data from knowledge databases, drug prescriptions and laboratory test results can detect comorbidities.

Highlights

  • Medical coding is used for a variety of activities, from observational studies to hospital billing

  • Enrichment of the theriaque database with the comorbidity list and identification of the relevant ICD-10 codes Among the 22,132 Common Units of Dispensation (CUD) codes presents in the Theriaque database, 19,970 (90.2%) were associated with one or more ICD-10 codes, based on the drug indication(s)

  • Even if present in the medical record, these diagnoses will not be coded in the hospital stay

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Summary

Introduction

Medical coding is used for a variety of activities, from observational studies to hospital billing. Comorbidities tend to be under-reported by medical coders. Medical codes should match as much as possible the information of the patient’s medical record [4]. Several studies demonstrated that the agreement between medical records and medical codes is variable, if not suboptimal [5], and that comorbidities, tend to be under-reported. In this context, the term comorbidities includes all diagnoses beside the principal diagnosis (i.e., the main reason for the patient’s hospitalization) that required specific diagnostic and/or therapeutic interventions during the hospital stay [6]. Clinical coders need to have access to all the data contained in the medical record

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