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Computerized Text Analysis to Enhance Automated Pneumonia Detection

OBJECTIVE: To improve the surveillance for pneumonia using the free-text of electronic medical records (EMR). INTRODUCTION: Information about disease severity could help with both detection and situational awareness during outbreaks of acute respiratory infections (ARI). In this work, we use data fr...

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Autores principales: DeLisle, Sylvain, Siddiqui, Tariq, Gundlapalli, Adi, Samore, Matthew, D’Avolio, Leonard
Formato: Online Artículo Texto
Lenguaje:English
Publicado: University of Illinois at Chicago Library 2013
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Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3692922/
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author DeLisle, Sylvain
Siddiqui, Tariq
Gundlapalli, Adi
Samore, Matthew
D’Avolio, Leonard
author_facet DeLisle, Sylvain
Siddiqui, Tariq
Gundlapalli, Adi
Samore, Matthew
D’Avolio, Leonard
author_sort DeLisle, Sylvain
collection PubMed
description OBJECTIVE: To improve the surveillance for pneumonia using the free-text of electronic medical records (EMR). INTRODUCTION: Information about disease severity could help with both detection and situational awareness during outbreaks of acute respiratory infections (ARI). In this work, we use data from the EMR to identify patients with pneumonia, a key landmark of ARI severity. We asked if computerized analysis of the free-text of clinical notes or imaging reports could complement structured EMR data to uncover pneumonia cases. METHODS: A previously validated ARI case-detection algorithm (CDA) (sensitivity, 99%; PPV, 14%) [1] flagged VAMHCS outpatient visits with associated chest imaging (n = 2737). Manually categorized imaging reports (Non-Negative if they could support the diagnosis of pneumonia, Negative otherwise; kappa = 0.88), served as a reference for the development of an automated report classifier through machine-learning [2]. EMR entries related to visits with Non-Negative chest imaging were manually reviewed to identify cases with Possible Pneumonia (new symptom(s) of cough, sputum, fever/chills/night sweats, dyspnea, pleuritic chest pain) or with Pneumonia-in-Plan (pneumonia listed as one of two most likely diagnoses in a physician’s note). These cases were used as reference for the development of the EMR-based CDAs. CDA components included ICD-9 codes for the full spectrum of ARI [1] or for the pneumonia subset, text analysis aimed at non-negated ARI symptoms in the clinical note [1] and the above-mentioned imaging report text classifier. RESULTS: The manual review identified 370 reference cases with Possible Pneumonia and 250 with Pneumonia-in-Plan. Statistical performance for illustrative CDAs that combined structured EMR parameters with or without text analyses are shown in the Table. Addition of the “Text of Imaging Report” analyses increased PPV by 38–70% in absolute terms. Despite attendant losses in sensitivity, this classifier increased the F-Measure of all CDAs based on a broad ARI ICD-9 codeset. With the possible exception is CDA 6, whose F-measure was the highest achieved in this study, the text analysis seeking ARI symptoms in the clinical note did not add further value to those CDAs that also included analyses of the chest imaging reports. CONCLUSIONS: Automated text analysis of chest imaging reports can improve our ability to separate outpatients with pneumonia from those with a milder form of ARI. [Table: see text]
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spelling pubmed-36929222013-06-26 Computerized Text Analysis to Enhance Automated Pneumonia Detection DeLisle, Sylvain Siddiqui, Tariq Gundlapalli, Adi Samore, Matthew D’Avolio, Leonard Online J Public Health Inform ISDS 2012 Conference Abstracts OBJECTIVE: To improve the surveillance for pneumonia using the free-text of electronic medical records (EMR). INTRODUCTION: Information about disease severity could help with both detection and situational awareness during outbreaks of acute respiratory infections (ARI). In this work, we use data from the EMR to identify patients with pneumonia, a key landmark of ARI severity. We asked if computerized analysis of the free-text of clinical notes or imaging reports could complement structured EMR data to uncover pneumonia cases. METHODS: A previously validated ARI case-detection algorithm (CDA) (sensitivity, 99%; PPV, 14%) [1] flagged VAMHCS outpatient visits with associated chest imaging (n = 2737). Manually categorized imaging reports (Non-Negative if they could support the diagnosis of pneumonia, Negative otherwise; kappa = 0.88), served as a reference for the development of an automated report classifier through machine-learning [2]. EMR entries related to visits with Non-Negative chest imaging were manually reviewed to identify cases with Possible Pneumonia (new symptom(s) of cough, sputum, fever/chills/night sweats, dyspnea, pleuritic chest pain) or with Pneumonia-in-Plan (pneumonia listed as one of two most likely diagnoses in a physician’s note). These cases were used as reference for the development of the EMR-based CDAs. CDA components included ICD-9 codes for the full spectrum of ARI [1] or for the pneumonia subset, text analysis aimed at non-negated ARI symptoms in the clinical note [1] and the above-mentioned imaging report text classifier. RESULTS: The manual review identified 370 reference cases with Possible Pneumonia and 250 with Pneumonia-in-Plan. Statistical performance for illustrative CDAs that combined structured EMR parameters with or without text analyses are shown in the Table. Addition of the “Text of Imaging Report” analyses increased PPV by 38–70% in absolute terms. Despite attendant losses in sensitivity, this classifier increased the F-Measure of all CDAs based on a broad ARI ICD-9 codeset. With the possible exception is CDA 6, whose F-measure was the highest achieved in this study, the text analysis seeking ARI symptoms in the clinical note did not add further value to those CDAs that also included analyses of the chest imaging reports. CONCLUSIONS: Automated text analysis of chest imaging reports can improve our ability to separate outpatients with pneumonia from those with a milder form of ARI. [Table: see text] University of Illinois at Chicago Library 2013-04-04 /pmc/articles/PMC3692922/ Text en ©2013 the author(s) http://www.uic.edu/htbin/cgiwrap/bin/ojs/index.php/ojphi/about/submissions#copyrightNotice This is an Open Access article. Authors own copyright of their articles appearing in the Online Journal of Public Health Informatics. Readers may copy articles without permission of the copyright owner(s), as long as the author and OJPHI are acknowledged in the copy and the copy is used for educational, not-for-profit purposes.
spellingShingle ISDS 2012 Conference Abstracts
DeLisle, Sylvain
Siddiqui, Tariq
Gundlapalli, Adi
Samore, Matthew
D’Avolio, Leonard
Computerized Text Analysis to Enhance Automated Pneumonia Detection
title Computerized Text Analysis to Enhance Automated Pneumonia Detection
title_full Computerized Text Analysis to Enhance Automated Pneumonia Detection
title_fullStr Computerized Text Analysis to Enhance Automated Pneumonia Detection
title_full_unstemmed Computerized Text Analysis to Enhance Automated Pneumonia Detection
title_short Computerized Text Analysis to Enhance Automated Pneumonia Detection
title_sort computerized text analysis to enhance automated pneumonia detection
topic ISDS 2012 Conference Abstracts
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3692922/
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