Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung Cancer

Background. Traditional methods for identifying comorbidity data in EMRs have relied primarily on costly and time-consuming manual chart review. The purpose of this study was to validate a strategy of electronically searching EMR data to identify comorbidities among cancer patients. Methods. Advance...

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Main Authors: Catherine E. Muehlenbein, J. Russell Hoverman, Stephen K. Gruschkus, Michael Forsyth, Clara Chen, William Lopez, Anthony Lawson, Heather J. Hartnett, Gerhardt Pohl
Format: Article
Language:English
Published: Hindawi Limited 2011-01-01
Series:Journal of Cancer Epidemiology
Online Access:http://dx.doi.org/10.1155/2011/983271
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spelling doaj-a7af86170c3b4e0a9d57405c6b219da02020-11-24T21:17:47ZengHindawi LimitedJournal of Cancer Epidemiology1687-85581687-85662011-01-01201110.1155/2011/983271983271Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung CancerCatherine E. Muehlenbein0J. Russell Hoverman1Stephen K. Gruschkus2Michael Forsyth3Clara Chen4William Lopez5Anthony Lawson6Heather J. Hartnett7Gerhardt Pohl8Lilly Corporate Center, Eli Lilly and Company, Indianapolis, IN 46285, USATexas Oncology, Dallas, TX 75251, USAHealthcare Informatics, US Oncology, The Woodlands, TX 77380, USAHealthcare Informatics, US Oncology, The Woodlands, TX 77380, USAHealthcare Informatics, US Oncology, The Woodlands, TX 77380, USAHealthcare Informatics, US Oncology, The Woodlands, TX 77380, USALilly Corporate Center, Eli Lilly and Company, Indianapolis, IN 46285, USAHealthcare Informatics, US Oncology, The Woodlands, TX 77380, USALilly Corporate Center, Eli Lilly and Company, Indianapolis, IN 46285, USABackground. Traditional methods for identifying comorbidity data in EMRs have relied primarily on costly and time-consuming manual chart review. The purpose of this study was to validate a strategy of electronically searching EMR data to identify comorbidities among cancer patients. Methods. Advanced stage NSCLC patients (N=2,513) who received chemotherapy from 7/1/2006 to 6/30/2008 were identified using iKnowMed, US Oncology's proprietary oncology-specific EMR system. EMR data were searched for documentation of comorbidities common to advanced stage cancer patients. The search was conducted by a series of programmatic queries on standardized information including concomitant illnesses, patient history, review of systems, and diagnoses other than cancer. The validity of the comorbidity information that we derived from the EMR search was compared to the chart review gold standard in a random sample of 450 patients for whom the EMR search yielded no indication of comorbidities. Negative predictive values were calculated. Results. The overall prevalence of comorbidities of 22%. Overall negative predictive value was 0.92 in the 450 patients randomly sampled patients (36 of 450 were found to have evidence of comorbidities on chart review). Conclusion. Results of this study suggest that efficient queries/text searches of EMR data may provide reliable data on comorbid conditions among cancer patients.http://dx.doi.org/10.1155/2011/983271
collection DOAJ
language English
format Article
sources DOAJ
author Catherine E. Muehlenbein
J. Russell Hoverman
Stephen K. Gruschkus
Michael Forsyth
Clara Chen
William Lopez
Anthony Lawson
Heather J. Hartnett
Gerhardt Pohl
spellingShingle Catherine E. Muehlenbein
J. Russell Hoverman
Stephen K. Gruschkus
Michael Forsyth
Clara Chen
William Lopez
Anthony Lawson
Heather J. Hartnett
Gerhardt Pohl
Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung Cancer
Journal of Cancer Epidemiology
author_facet Catherine E. Muehlenbein
J. Russell Hoverman
Stephen K. Gruschkus
Michael Forsyth
Clara Chen
William Lopez
Anthony Lawson
Heather J. Hartnett
Gerhardt Pohl
author_sort Catherine E. Muehlenbein
title Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung Cancer
title_short Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung Cancer
title_full Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung Cancer
title_fullStr Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung Cancer
title_full_unstemmed Evaluation of the Reliability of Electronic Medical Record Data in Identifying Comorbid Conditions among Patients with Advanced Non-Small Cell Lung Cancer
title_sort evaluation of the reliability of electronic medical record data in identifying comorbid conditions among patients with advanced non-small cell lung cancer
publisher Hindawi Limited
series Journal of Cancer Epidemiology
issn 1687-8558
1687-8566
publishDate 2011-01-01
description Background. Traditional methods for identifying comorbidity data in EMRs have relied primarily on costly and time-consuming manual chart review. The purpose of this study was to validate a strategy of electronically searching EMR data to identify comorbidities among cancer patients. Methods. Advanced stage NSCLC patients (N=2,513) who received chemotherapy from 7/1/2006 to 6/30/2008 were identified using iKnowMed, US Oncology's proprietary oncology-specific EMR system. EMR data were searched for documentation of comorbidities common to advanced stage cancer patients. The search was conducted by a series of programmatic queries on standardized information including concomitant illnesses, patient history, review of systems, and diagnoses other than cancer. The validity of the comorbidity information that we derived from the EMR search was compared to the chart review gold standard in a random sample of 450 patients for whom the EMR search yielded no indication of comorbidities. Negative predictive values were calculated. Results. The overall prevalence of comorbidities of 22%. Overall negative predictive value was 0.92 in the 450 patients randomly sampled patients (36 of 450 were found to have evidence of comorbidities on chart review). Conclusion. Results of this study suggest that efficient queries/text searches of EMR data may provide reliable data on comorbid conditions among cancer patients.
url http://dx.doi.org/10.1155/2011/983271
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