Abstract

BackgroundThe widespread use of electronic health records (EHRs) has generated massive clinical data storage. Association rules mining is a feasible technique to convert this large amount of data into usable knowledge for clinical decision making, research or billing. We present a data driven method to create a knowledge base linking medications to pathological conditions through their therapeutic indications from elements within the EHRs.MethodsAssociation rules were created from the data of patients hospitalised between May 2012 and May 2013 in the department of Cardiology at the University Hospital of Strasbourg. Medications were extracted from the medication list, and the pathological conditions were extracted from the discharge summaries using a natural language processing tool. Association rules were generated along with different interestingness measures: chi square, lift, conviction, dependency, novelty and satisfaction. All medication-disease pairs were compared to the Summary of Product Characteristics, which is the gold standard. A score based on the other interestingness measures was created to filter the best rules, and the indices were calculated for the different interestingness measures.ResultsAfter the evaluation against the gold standard, a list of accurate association rules was successfully retrieved. Dependency represents the best recall (0.76). Our score exhibited higher exactness (0.84) and precision (0.27) than all of the others interestingness measures. Further reductions in noise produced by this method must be performed to improve the classification precision.ConclusionsAssociation rules mining using the unstructured elements of the EHR is a feasible technique to identify clinically accurate associations between medications and pathological conditions.

Highlights

  • The widespread use of electronic health records (EHRs) has generated massive clinical data storage

  • The widespread use of EHRs has led to the massive storage of clinical data

  • Each of the medications received by the patient was identified by its International Non-proprietary Name (INN) and was further linked to the Anatomical Therapeutic Chemical (ATC) classification system

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Summary

Introduction

The widespread use of electronic health records (EHRs) has generated massive clinical data storage. Association rules mining is a feasible technique to convert this large amount of data into usable knowledge for clinical decision making, research or billing. We present a data driven method to create a knowledge base linking medications to pathological conditions through their therapeutic indications from elements within the EHRs. In hospitals, an electronic health record (EHR) contains documents pertaining to one or several episodes of care for each patient. The widespread use of EHRs has led to the massive storage of clinical data. Accurate and complete knowledge of a patient’s pathological conditions and diagnoses is essential to optimise clinical decision-making. Knowledge of a patient’s pathological conditions is critical for quality measurements, research and billing

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