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Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing

BACKGROUND: Tuberculosis (TB) is a major cause of death worldwide. TB research draws heavily on clinical cohorts which can be generated using electronic health records (EHR), but granular information extracted from unstructured EHR data is limited. The St. Michael’s Hospital TB database (SMH-TB) was...

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Autores principales: Landsman, David, Abdelbasit, Ahmed, Wang, Christine, Guerzhoy, Michael, Joshi, Ujash, Mathew, Shaun, Pou-Prom, Chloe, Dai, David, Pequegnat, Victoria, Murray, Joshua, Chokar, Kamalprit, Banning, Michaelia, Mamdani, Muhammad, Mishra, Sharmistha, Batt, Jane
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7928444/
https://www.ncbi.nlm.nih.gov/pubmed/33657184
http://dx.doi.org/10.1371/journal.pone.0247872
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author Landsman, David
Abdelbasit, Ahmed
Wang, Christine
Guerzhoy, Michael
Joshi, Ujash
Mathew, Shaun
Pou-Prom, Chloe
Dai, David
Pequegnat, Victoria
Murray, Joshua
Chokar, Kamalprit
Banning, Michaelia
Mamdani, Muhammad
Mishra, Sharmistha
Batt, Jane
author_facet Landsman, David
Abdelbasit, Ahmed
Wang, Christine
Guerzhoy, Michael
Joshi, Ujash
Mathew, Shaun
Pou-Prom, Chloe
Dai, David
Pequegnat, Victoria
Murray, Joshua
Chokar, Kamalprit
Banning, Michaelia
Mamdani, Muhammad
Mishra, Sharmistha
Batt, Jane
author_sort Landsman, David
collection PubMed
description BACKGROUND: Tuberculosis (TB) is a major cause of death worldwide. TB research draws heavily on clinical cohorts which can be generated using electronic health records (EHR), but granular information extracted from unstructured EHR data is limited. The St. Michael’s Hospital TB database (SMH-TB) was established to address gaps in EHR-derived TB clinical cohorts and provide researchers and clinicians with detailed, granular data related to TB management and treatment. METHODS: We collected and validated multiple layers of EHR data from the TB outpatient clinic at St. Michael’s Hospital, Toronto, Ontario, Canada to generate the SMH-TB database. SMH-TB contains structured data directly from the EHR, and variables generated using natural language processing (NLP) by extracting relevant information from free-text within clinic, radiology, and other notes. NLP performance was assessed using recall, precision and F(1) score averaged across variable labels. We present characteristics of the cohort population using binomial proportions and 95% confidence intervals (CI), with and without adjusting for NLP misclassification errors. RESULTS: SMH-TB currently contains retrospective patient data spanning 2011 to 2018, for a total of 3298 patients (N = 3237 with at least 1 associated dictation). Performance of TB diagnosis and medication NLP rulesets surpasses 93% in recall, precision and F(1) metrics, indicating good generalizability. We estimated 20% (95% CI: 18.4–21.2%) were diagnosed with active TB and 46% (95% CI: 43.8–47.2%) were diagnosed with latent TB. After adjusting for potential misclassification, the proportion of patients diagnosed with active and latent TB was 18% (95% CI: 16.8–19.7%) and 40% (95% CI: 37.8–41.6%) respectively CONCLUSION: SMH-TB is a unique database that includes a breadth of structured data derived from structured and unstructured EHR data by using NLP rulesets. The data are available for a variety of research applications, such as clinical epidemiology, quality improvement and mathematical modeling studies.
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spelling pubmed-79284442021-03-10 Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing Landsman, David Abdelbasit, Ahmed Wang, Christine Guerzhoy, Michael Joshi, Ujash Mathew, Shaun Pou-Prom, Chloe Dai, David Pequegnat, Victoria Murray, Joshua Chokar, Kamalprit Banning, Michaelia Mamdani, Muhammad Mishra, Sharmistha Batt, Jane PLoS One Research Article BACKGROUND: Tuberculosis (TB) is a major cause of death worldwide. TB research draws heavily on clinical cohorts which can be generated using electronic health records (EHR), but granular information extracted from unstructured EHR data is limited. The St. Michael’s Hospital TB database (SMH-TB) was established to address gaps in EHR-derived TB clinical cohorts and provide researchers and clinicians with detailed, granular data related to TB management and treatment. METHODS: We collected and validated multiple layers of EHR data from the TB outpatient clinic at St. Michael’s Hospital, Toronto, Ontario, Canada to generate the SMH-TB database. SMH-TB contains structured data directly from the EHR, and variables generated using natural language processing (NLP) by extracting relevant information from free-text within clinic, radiology, and other notes. NLP performance was assessed using recall, precision and F(1) score averaged across variable labels. We present characteristics of the cohort population using binomial proportions and 95% confidence intervals (CI), with and without adjusting for NLP misclassification errors. RESULTS: SMH-TB currently contains retrospective patient data spanning 2011 to 2018, for a total of 3298 patients (N = 3237 with at least 1 associated dictation). Performance of TB diagnosis and medication NLP rulesets surpasses 93% in recall, precision and F(1) metrics, indicating good generalizability. We estimated 20% (95% CI: 18.4–21.2%) were diagnosed with active TB and 46% (95% CI: 43.8–47.2%) were diagnosed with latent TB. After adjusting for potential misclassification, the proportion of patients diagnosed with active and latent TB was 18% (95% CI: 16.8–19.7%) and 40% (95% CI: 37.8–41.6%) respectively CONCLUSION: SMH-TB is a unique database that includes a breadth of structured data derived from structured and unstructured EHR data by using NLP rulesets. The data are available for a variety of research applications, such as clinical epidemiology, quality improvement and mathematical modeling studies. Public Library of Science 2021-03-03 /pmc/articles/PMC7928444/ /pubmed/33657184 http://dx.doi.org/10.1371/journal.pone.0247872 Text en © 2021 Landsman 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 (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Landsman, David
Abdelbasit, Ahmed
Wang, Christine
Guerzhoy, Michael
Joshi, Ujash
Mathew, Shaun
Pou-Prom, Chloe
Dai, David
Pequegnat, Victoria
Murray, Joshua
Chokar, Kamalprit
Banning, Michaelia
Mamdani, Muhammad
Mishra, Sharmistha
Batt, Jane
Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing
title Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing
title_full Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing
title_fullStr Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing
title_full_unstemmed Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing
title_short Cohort profile: St. Michael’s Hospital Tuberculosis Database (SMH-TB), a retrospective cohort of electronic health record data and variables extracted using natural language processing
title_sort cohort profile: st. michael’s hospital tuberculosis database (smh-tb), a retrospective cohort of electronic health record data and variables extracted using natural language processing
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7928444/
https://www.ncbi.nlm.nih.gov/pubmed/33657184
http://dx.doi.org/10.1371/journal.pone.0247872
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