Literature DB >> 18693908

Unambiguous data modeling to ensure higher accuracy term binding to clinical terminologies.

Rahil Qamar1, Jay Kola, Alan L Rector.   

Abstract

Work in the field of recording standard, coded data is important to reduce medical errors caused by misinterpretation and misrepresentation of data. The paper discusses the need to ensure that the source of the data i.e. the clinical data model is unambiguous to increase the quality and accuracy of the data mapping to terminology codes. The study chooses one especially ambiguous data model and remodels it to make clearer both the structure of the data, as well as its intended use and semantics. By ensuring an unambiguous model, results of the data mapping increased in accuracy from 64.7% to 80.55%. The clinical experts evaluating the models found it easier working with the revised model and agreed on the mappings 93.1% times as against 48.57% times previously. The aim of the study is to encourage good modeling practice to enable clinicians to record and code patient data unambiguously and accurately.

Entities:  

Mesh:

Year:  2007        PMID: 18693908      PMCID: PMC2655827     

Source DB:  PubMed          Journal:  AMIA Annu Symp Proc        ISSN: 1559-4076


  2 in total

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2.  Semantic issues in integrating data from different models to achieve data interoperability.

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  2 in total
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4.  Comparison of Knowledge Levels Required for SNOMED CT Coding of Diagnosis and Operation Names in Clinical Records.

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Journal:  Healthc Inform Res       Date:  2012-09-30

5.  A unified structural/terminological interoperability framework based on LexEVS: application to TRANSFoRm.

Authors:  Jean-François Ethier; Olivier Dameron; Vasa Curcin; Mark M McGilchrist; Robert A Verheij; Theodoros N Arvanitis; Adel Taweel; Brendan C Delaney; Anita Burgun
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  5 in total

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