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Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records
OBJECTIVE: To optimally leverage the scalability and unique features of the electronic health records (EHR) for research that would ultimately improve patient care, we need to accurately identify patients and extract clinically meaningful measures. Using multiple sclerosis (MS) as a proof of princip...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2013
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3823928/ https://www.ncbi.nlm.nih.gov/pubmed/24244385 http://dx.doi.org/10.1371/journal.pone.0078927 |
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author | Xia, Zongqi Secor, Elizabeth Chibnik, Lori B. Bove, Riley M. Cheng, Suchun Chitnis, Tanuja Cagan, Andrew Gainer, Vivian S. Chen, Pei J. Liao, Katherine P. Shaw, Stanley Y. Ananthakrishnan, Ashwin N. Szolovits, Peter Weiner, Howard L. Karlson, Elizabeth W. Murphy, Shawn N. Savova, Guergana K. Cai, Tianxi Churchill, Susanne E. Plenge, Robert M. Kohane, Isaac S. De Jager, Philip L. |
author_facet | Xia, Zongqi Secor, Elizabeth Chibnik, Lori B. Bove, Riley M. Cheng, Suchun Chitnis, Tanuja Cagan, Andrew Gainer, Vivian S. Chen, Pei J. Liao, Katherine P. Shaw, Stanley Y. Ananthakrishnan, Ashwin N. Szolovits, Peter Weiner, Howard L. Karlson, Elizabeth W. Murphy, Shawn N. Savova, Guergana K. Cai, Tianxi Churchill, Susanne E. Plenge, Robert M. Kohane, Isaac S. De Jager, Philip L. |
author_sort | Xia, Zongqi |
collection | PubMed |
description | OBJECTIVE: To optimally leverage the scalability and unique features of the electronic health records (EHR) for research that would ultimately improve patient care, we need to accurately identify patients and extract clinically meaningful measures. Using multiple sclerosis (MS) as a proof of principle, we showcased how to leverage routinely collected EHR data to identify patients with a complex neurological disorder and derive an important surrogate measure of disease severity heretofore only available in research settings. METHODS: In a cross-sectional observational study, 5,495 MS patients were identified from the EHR systems of two major referral hospitals using an algorithm that includes codified and narrative information extracted using natural language processing. In the subset of patients who receive neurological care at a MS Center where disease measures have been collected, we used routinely collected EHR data to extract two aggregate indicators of MS severity of clinical relevance multiple sclerosis severity score (MSSS) and brain parenchymal fraction (BPF, a measure of whole brain volume). RESULTS: The EHR algorithm that identifies MS patients has an area under the curve of 0.958, 83% sensitivity, 92% positive predictive value, and 89% negative predictive value when a 95% specificity threshold is used. The correlation between EHR-derived and true MSSS has a mean R(2) = 0.38±0.05, and that between EHR-derived and true BPF has a mean R(2) = 0.22±0.08. To illustrate its clinical relevance, derived MSSS captures the expected difference in disease severity between relapsing-remitting and progressive MS patients after adjusting for sex, age of symptom onset and disease duration (p = 1.56×10(−12)). CONCLUSION: Incorporation of sophisticated codified and narrative EHR data accurately identifies MS patients and provides estimation of a well-accepted indicator of MS severity that is widely used in research settings but not part of the routine medical records. Similar approaches could be applied to other complex neurological disorders. |
format | Online Article Text |
id | pubmed-3823928 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2013 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-38239282013-11-15 Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records Xia, Zongqi Secor, Elizabeth Chibnik, Lori B. Bove, Riley M. Cheng, Suchun Chitnis, Tanuja Cagan, Andrew Gainer, Vivian S. Chen, Pei J. Liao, Katherine P. Shaw, Stanley Y. Ananthakrishnan, Ashwin N. Szolovits, Peter Weiner, Howard L. Karlson, Elizabeth W. Murphy, Shawn N. Savova, Guergana K. Cai, Tianxi Churchill, Susanne E. Plenge, Robert M. Kohane, Isaac S. De Jager, Philip L. PLoS One Research Article OBJECTIVE: To optimally leverage the scalability and unique features of the electronic health records (EHR) for research that would ultimately improve patient care, we need to accurately identify patients and extract clinically meaningful measures. Using multiple sclerosis (MS) as a proof of principle, we showcased how to leverage routinely collected EHR data to identify patients with a complex neurological disorder and derive an important surrogate measure of disease severity heretofore only available in research settings. METHODS: In a cross-sectional observational study, 5,495 MS patients were identified from the EHR systems of two major referral hospitals using an algorithm that includes codified and narrative information extracted using natural language processing. In the subset of patients who receive neurological care at a MS Center where disease measures have been collected, we used routinely collected EHR data to extract two aggregate indicators of MS severity of clinical relevance multiple sclerosis severity score (MSSS) and brain parenchymal fraction (BPF, a measure of whole brain volume). RESULTS: The EHR algorithm that identifies MS patients has an area under the curve of 0.958, 83% sensitivity, 92% positive predictive value, and 89% negative predictive value when a 95% specificity threshold is used. The correlation between EHR-derived and true MSSS has a mean R(2) = 0.38±0.05, and that between EHR-derived and true BPF has a mean R(2) = 0.22±0.08. To illustrate its clinical relevance, derived MSSS captures the expected difference in disease severity between relapsing-remitting and progressive MS patients after adjusting for sex, age of symptom onset and disease duration (p = 1.56×10(−12)). CONCLUSION: Incorporation of sophisticated codified and narrative EHR data accurately identifies MS patients and provides estimation of a well-accepted indicator of MS severity that is widely used in research settings but not part of the routine medical records. Similar approaches could be applied to other complex neurological disorders. Public Library of Science 2013-11-11 /pmc/articles/PMC3823928/ /pubmed/24244385 http://dx.doi.org/10.1371/journal.pone.0078927 Text en © 2013 Xia et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited. |
spellingShingle | Research Article Xia, Zongqi Secor, Elizabeth Chibnik, Lori B. Bove, Riley M. Cheng, Suchun Chitnis, Tanuja Cagan, Andrew Gainer, Vivian S. Chen, Pei J. Liao, Katherine P. Shaw, Stanley Y. Ananthakrishnan, Ashwin N. Szolovits, Peter Weiner, Howard L. Karlson, Elizabeth W. Murphy, Shawn N. Savova, Guergana K. Cai, Tianxi Churchill, Susanne E. Plenge, Robert M. Kohane, Isaac S. De Jager, Philip L. Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records |
title | Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records |
title_full | Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records |
title_fullStr | Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records |
title_full_unstemmed | Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records |
title_short | Modeling Disease Severity in Multiple Sclerosis Using Electronic Health Records |
title_sort | modeling disease severity in multiple sclerosis using electronic health records |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3823928/ https://www.ncbi.nlm.nih.gov/pubmed/24244385 http://dx.doi.org/10.1371/journal.pone.0078927 |
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