Cargando…

‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study

BACKGROUND: Diagnostic codes from electronic health records are widely used to assess patterns of disease. Infective endocarditis is an uncommon but serious infection, with objective diagnostic criteria. Electronic health records have been used to explore the impact of changing guidance on antibioti...

Descripción completa

Detalles Bibliográficos
Autores principales: Fawcett, Nicola, Young, Bernadette, Peto, Leon, Quan, T. Phuong, Gillott, Richard, Wu, Jianhua, Middlemass, Chris, Weston, Sheila, Crook, Derrick W., Peto, Tim E. A., Muller-Pebody, Berit, Johnson, Alan P., Walker, A. Sarah, Sandoe, Jonathan A. T.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6724235/
https://www.ncbi.nlm.nih.gov/pubmed/31481119
http://dx.doi.org/10.1186/s12916-019-1390-x
_version_ 1783448946455085056
author Fawcett, Nicola
Young, Bernadette
Peto, Leon
Quan, T. Phuong
Gillott, Richard
Wu, Jianhua
Middlemass, Chris
Weston, Sheila
Crook, Derrick W.
Peto, Tim E. A.
Muller-Pebody, Berit
Johnson, Alan P.
Walker, A. Sarah
Sandoe, Jonathan A. T.
author_facet Fawcett, Nicola
Young, Bernadette
Peto, Leon
Quan, T. Phuong
Gillott, Richard
Wu, Jianhua
Middlemass, Chris
Weston, Sheila
Crook, Derrick W.
Peto, Tim E. A.
Muller-Pebody, Berit
Johnson, Alan P.
Walker, A. Sarah
Sandoe, Jonathan A. T.
author_sort Fawcett, Nicola
collection PubMed
description BACKGROUND: Diagnostic codes from electronic health records are widely used to assess patterns of disease. Infective endocarditis is an uncommon but serious infection, with objective diagnostic criteria. Electronic health records have been used to explore the impact of changing guidance on antibiotic prophylaxis for dental procedures on incidence, but limited data on the accuracy of the diagnostic codes exists. Endocarditis was used as a clinically relevant case study to investigate the relationship between clinical cases and diagnostic codes, to understand discrepancies and to improve design of future studies. METHODS: Electronic health record data from two UK tertiary care centres were linked with data from a prospectively collected clinical endocarditis service database (Leeds Teaching Hospital) or retrospective clinical audit and microbiology laboratory blood culture results (Oxford University Hospitals Trust). The relationship between diagnostic codes for endocarditis and confirmed clinical cases according to the objective Duke criteria was assessed, and impact on estimations of disease incidence and trends. RESULTS: In Leeds 2006–2016, 738/1681(44%) admissions containing any endocarditis code represented a definite/possible case, whilst 263/1001(24%) definite/possible endocarditis cases had no endocarditis code assigned. In Oxford 2010–2016, 307/552(56%) reviewed endocarditis-coded admissions represented a clinical case. Diagnostic codes used by most endocarditis studies had good positive predictive value (PPV) but low sensitivity (e.g. I33-primary 82% and 43% respectively); one (I38-secondary) had PPV under 6%. Estimating endocarditis incidence using raw admission data overestimated incidence trends twofold. Removing records with non-specific codes, very short stays and readmissions improved predictive ability. Estimating incidence of streptococcal endocarditis using secondary codes also overestimated increases in incidence over time. Reasons for discrepancies included changes in coding behaviour over time, and coding guidance allowing assignment of a code mentioning ‘endocarditis’ where endocarditis was never mentioned in the clinical notes. CONCLUSIONS: Commonly used diagnostic codes in studies of endocarditis had good predictive ability. Other apparently plausible codes were poorly predictive. Use of diagnostic codes without examining sensitivity and predictive ability can give inaccurate estimations of incidence and trends. Similar considerations may apply to other diseases. Health record studies require validation of diagnostic codes and careful data curation to minimise risk of serious errors. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12916-019-1390-x) contains supplementary material, which is available to authorized users.
format Online
Article
Text
id pubmed-6724235
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-67242352019-09-10 ‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study Fawcett, Nicola Young, Bernadette Peto, Leon Quan, T. Phuong Gillott, Richard Wu, Jianhua Middlemass, Chris Weston, Sheila Crook, Derrick W. Peto, Tim E. A. Muller-Pebody, Berit Johnson, Alan P. Walker, A. Sarah Sandoe, Jonathan A. T. BMC Med Research Article BACKGROUND: Diagnostic codes from electronic health records are widely used to assess patterns of disease. Infective endocarditis is an uncommon but serious infection, with objective diagnostic criteria. Electronic health records have been used to explore the impact of changing guidance on antibiotic prophylaxis for dental procedures on incidence, but limited data on the accuracy of the diagnostic codes exists. Endocarditis was used as a clinically relevant case study to investigate the relationship between clinical cases and diagnostic codes, to understand discrepancies and to improve design of future studies. METHODS: Electronic health record data from two UK tertiary care centres were linked with data from a prospectively collected clinical endocarditis service database (Leeds Teaching Hospital) or retrospective clinical audit and microbiology laboratory blood culture results (Oxford University Hospitals Trust). The relationship between diagnostic codes for endocarditis and confirmed clinical cases according to the objective Duke criteria was assessed, and impact on estimations of disease incidence and trends. RESULTS: In Leeds 2006–2016, 738/1681(44%) admissions containing any endocarditis code represented a definite/possible case, whilst 263/1001(24%) definite/possible endocarditis cases had no endocarditis code assigned. In Oxford 2010–2016, 307/552(56%) reviewed endocarditis-coded admissions represented a clinical case. Diagnostic codes used by most endocarditis studies had good positive predictive value (PPV) but low sensitivity (e.g. I33-primary 82% and 43% respectively); one (I38-secondary) had PPV under 6%. Estimating endocarditis incidence using raw admission data overestimated incidence trends twofold. Removing records with non-specific codes, very short stays and readmissions improved predictive ability. Estimating incidence of streptococcal endocarditis using secondary codes also overestimated increases in incidence over time. Reasons for discrepancies included changes in coding behaviour over time, and coding guidance allowing assignment of a code mentioning ‘endocarditis’ where endocarditis was never mentioned in the clinical notes. CONCLUSIONS: Commonly used diagnostic codes in studies of endocarditis had good predictive ability. Other apparently plausible codes were poorly predictive. Use of diagnostic codes without examining sensitivity and predictive ability can give inaccurate estimations of incidence and trends. Similar considerations may apply to other diseases. Health record studies require validation of diagnostic codes and careful data curation to minimise risk of serious errors. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12916-019-1390-x) contains supplementary material, which is available to authorized users. BioMed Central 2019-09-04 /pmc/articles/PMC6724235/ /pubmed/31481119 http://dx.doi.org/10.1186/s12916-019-1390-x Text en © The Author(s). 2019 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research Article
Fawcett, Nicola
Young, Bernadette
Peto, Leon
Quan, T. Phuong
Gillott, Richard
Wu, Jianhua
Middlemass, Chris
Weston, Sheila
Crook, Derrick W.
Peto, Tim E. A.
Muller-Pebody, Berit
Johnson, Alan P.
Walker, A. Sarah
Sandoe, Jonathan A. T.
‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study
title ‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study
title_full ‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study
title_fullStr ‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study
title_full_unstemmed ‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study
title_short ‘Caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study
title_sort ‘caveat emptor’: the cautionary tale of endocarditis and the potential pitfalls of clinical coding data—an electronic health records study
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6724235/
https://www.ncbi.nlm.nih.gov/pubmed/31481119
http://dx.doi.org/10.1186/s12916-019-1390-x
work_keys_str_mv AT fawcettnicola caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT youngbernadette caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT petoleon caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT quantphuong caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT gillottrichard caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT wujianhua caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT middlemasschris caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT westonsheila caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT crookderrickw caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT petotimea caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT mullerpebodyberit caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT johnsonalanp caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT walkerasarah caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy
AT sandoejonathanat caveatemptorthecautionarytaleofendocarditisandthepotentialpitfallsofclinicalcodingdataanelectronichealthrecordsstudy