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Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients

BACKGROUND: Electronic health record (EHR) systems contain a large volume of texts, including visit notes, discharge summaries, and various reports. To protect the confidentiality of patients, these records often need to be fully de-identified before circulating for secondary use. Machine learning (...

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Autores principales: Paul, Tanmoy, Rana, Md Kamruz Zaman, Tautam, Preethi Aishwarya, Kotapati, Teja Venkat Pavan, Jampani, Yaswitha, Singh, Nitesh, Islam, Humayera, Mandhadi, Vasanthi, Sharma, Vishakha, Barnes, Michael, Hammer, Richard D., Mosa, Abu Saleh Mohammad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8890696/
https://www.ncbi.nlm.nih.gov/pubmed/35252956
http://dx.doi.org/10.3389/fdgth.2022.728922
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author Paul, Tanmoy
Rana, Md Kamruz Zaman
Tautam, Preethi Aishwarya
Kotapati, Teja Venkat Pavan
Jampani, Yaswitha
Singh, Nitesh
Islam, Humayera
Mandhadi, Vasanthi
Sharma, Vishakha
Barnes, Michael
Hammer, Richard D.
Mosa, Abu Saleh Mohammad
author_facet Paul, Tanmoy
Rana, Md Kamruz Zaman
Tautam, Preethi Aishwarya
Kotapati, Teja Venkat Pavan
Jampani, Yaswitha
Singh, Nitesh
Islam, Humayera
Mandhadi, Vasanthi
Sharma, Vishakha
Barnes, Michael
Hammer, Richard D.
Mosa, Abu Saleh Mohammad
author_sort Paul, Tanmoy
collection PubMed
description BACKGROUND: Electronic health record (EHR) systems contain a large volume of texts, including visit notes, discharge summaries, and various reports. To protect the confidentiality of patients, these records often need to be fully de-identified before circulating for secondary use. Machine learning (ML) based named entity recognition (NER) model has emerged as a popular technique of automatic de-identification. OBJECTIVE: The performance of a machine learning model highly depends on the selection of appropriate features. The objective of this study was to investigate the usability of multiple features in building a conditional random field (CRF) based clinical de-identification NER model. METHODS: Using open-source natural language processing (NLP) toolkits, we annotated protected health information (PHI) in 1,500 pathology reports and built supervised NER models using multiple features and their combinations. We further investigated the dependency of a model's performance on the size of training data. RESULTS: Among the 10 feature extractors explored in this study, n-gram, prefix–suffix, word embedding, and word shape performed the best. A model using combination of these four feature sets yielded precision, recall, and F1-score for each PHI as follows: NAME (0.80; 0.79; 0.80), LOCATION (0.85; 0.83; 0.84), DATE (0.86; 0.79; 0.82), HOSPITAL (0.96; 0.93; 0.95), ID (0.99; 0.82; 0.90), and INITIALS (0.97; 0.49; 0.65). We also found that the model's performance becomes saturated when the training data size is beyond 200. CONCLUSION: Manual de-identification of large-scale data is an impractical procedure since it is time-consuming and subject to human errors. Analysis of the NER model's performance in this study sheds light on a semi-automatic clinical de-identification pipeline for enterprise-wide data warehousing.
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spelling pubmed-88906962022-03-03 Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients Paul, Tanmoy Rana, Md Kamruz Zaman Tautam, Preethi Aishwarya Kotapati, Teja Venkat Pavan Jampani, Yaswitha Singh, Nitesh Islam, Humayera Mandhadi, Vasanthi Sharma, Vishakha Barnes, Michael Hammer, Richard D. Mosa, Abu Saleh Mohammad Front Digit Health Digital Health BACKGROUND: Electronic health record (EHR) systems contain a large volume of texts, including visit notes, discharge summaries, and various reports. To protect the confidentiality of patients, these records often need to be fully de-identified before circulating for secondary use. Machine learning (ML) based named entity recognition (NER) model has emerged as a popular technique of automatic de-identification. OBJECTIVE: The performance of a machine learning model highly depends on the selection of appropriate features. The objective of this study was to investigate the usability of multiple features in building a conditional random field (CRF) based clinical de-identification NER model. METHODS: Using open-source natural language processing (NLP) toolkits, we annotated protected health information (PHI) in 1,500 pathology reports and built supervised NER models using multiple features and their combinations. We further investigated the dependency of a model's performance on the size of training data. RESULTS: Among the 10 feature extractors explored in this study, n-gram, prefix–suffix, word embedding, and word shape performed the best. A model using combination of these four feature sets yielded precision, recall, and F1-score for each PHI as follows: NAME (0.80; 0.79; 0.80), LOCATION (0.85; 0.83; 0.84), DATE (0.86; 0.79; 0.82), HOSPITAL (0.96; 0.93; 0.95), ID (0.99; 0.82; 0.90), and INITIALS (0.97; 0.49; 0.65). We also found that the model's performance becomes saturated when the training data size is beyond 200. CONCLUSION: Manual de-identification of large-scale data is an impractical procedure since it is time-consuming and subject to human errors. Analysis of the NER model's performance in this study sheds light on a semi-automatic clinical de-identification pipeline for enterprise-wide data warehousing. Frontiers Media S.A. 2022-02-16 /pmc/articles/PMC8890696/ /pubmed/35252956 http://dx.doi.org/10.3389/fdgth.2022.728922 Text en Copyright © 2022 Paul, Rana, Tautam, Kotapati, Jampani, Singh, Islam, Mandhadi, Sharma, Barnes, Hammer and Mosa. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Digital Health
Paul, Tanmoy
Rana, Md Kamruz Zaman
Tautam, Preethi Aishwarya
Kotapati, Teja Venkat Pavan
Jampani, Yaswitha
Singh, Nitesh
Islam, Humayera
Mandhadi, Vasanthi
Sharma, Vishakha
Barnes, Michael
Hammer, Richard D.
Mosa, Abu Saleh Mohammad
Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients
title Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients
title_full Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients
title_fullStr Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients
title_full_unstemmed Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients
title_short Investigation of the Utility of Features in a Clinical De-identification Model: A Demonstration Using EHR Pathology Reports for Advanced NSCLC Patients
title_sort investigation of the utility of features in a clinical de-identification model: a demonstration using ehr pathology reports for advanced nsclc patients
topic Digital Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8890696/
https://www.ncbi.nlm.nih.gov/pubmed/35252956
http://dx.doi.org/10.3389/fdgth.2022.728922
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