Natural language processing utilization in healthcare

The significance of consolidating Natural Language Processing (NLP) techniques in clinical informatics research has been progressively perceived over the previous years, and has prompted transformative advances. Ordinarily, clinical NLP frameworks are created and assessed on word, sentence, or recor...

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Main Authors: Hudaa S., Setiyadi D.B.P., Laxmi Lydia E., Shankar K., Nguyen P.T., Hashim W., Maseleno A.
Other Authors: 57211402461
Format: Article
Published: Blue Eyes Intelligence Engineering and Sciences Publication 2023
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spelling my.uniten.dspace-245112023-05-29T15:24:05Z Natural language processing utilization in healthcare Hudaa S. Setiyadi D.B.P. Laxmi Lydia E. Shankar K. Nguyen P.T. Hashim W. Maseleno A. 57211402461 57211407608 57196059278 56884031900 57216386109 11440260100 55354910900 The significance of consolidating Natural Language Processing (NLP) techniques in clinical informatics research has been progressively perceived over the previous years, and has prompted transformative advances. Ordinarily, clinical NLP frameworks are created and assessed on word, sentence, or record level explanations that model explicit traits and highlights, for example, archive content (e.g., persistent status, or report type), record segment types (e.g., current meds, past restorative history, or release synopsis), named substances and ideas (e.g., analyses, side effects, or medicines) or semantic qualities (e.g., nullification, seriousness, or fleetingness). While some NLP undertakings consider expectations at the individual or gathering client level, these assignments still establish a minority. Here we give an expansive synopsis and layout of the difficult issues engaged with characterizing suitable natural and outward assessment strategies for NLP look into that will be utilized for clinical results research, and the other way around. A specific spotlight is set on psychological wellness investigate, a zone still generally understudied by the clinical NLP look into network, however where NLP techniques are of prominent importance. Ongoing advances in clinical NLP strategy improvement have been huge, yet we propose more accentuation should be put on thorough assessment for the field to progress further. To empower this, we give noteworthy recommendations, including an insignificant convention that could be utilized when announcing clinical NLP strategy improvement and its assessment. � BEIESP. Final 2023-05-29T07:24:05Z 2023-05-29T07:24:05Z 2019 Article 10.35940/ijeat.F1305.0886S219 2-s2.0-85073805006 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85073805006&doi=10.35940%2fijeat.F1305.0886S219&partnerID=40&md5=3962c23b9dd129c4e43715c1f240e1e1 https://irepository.uniten.edu.my/handle/123456789/24511 8 6 Special Issue 2 1117 1120 All Open Access, Bronze Blue Eyes Intelligence Engineering and Sciences Publication Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description The significance of consolidating Natural Language Processing (NLP) techniques in clinical informatics research has been progressively perceived over the previous years, and has prompted transformative advances. Ordinarily, clinical NLP frameworks are created and assessed on word, sentence, or record level explanations that model explicit traits and highlights, for example, archive content (e.g., persistent status, or report type), record segment types (e.g., current meds, past restorative history, or release synopsis), named substances and ideas (e.g., analyses, side effects, or medicines) or semantic qualities (e.g., nullification, seriousness, or fleetingness). While some NLP undertakings consider expectations at the individual or gathering client level, these assignments still establish a minority. Here we give an expansive synopsis and layout of the difficult issues engaged with characterizing suitable natural and outward assessment strategies for NLP look into that will be utilized for clinical results research, and the other way around. A specific spotlight is set on psychological wellness investigate, a zone still generally understudied by the clinical NLP look into network, however where NLP techniques are of prominent importance. Ongoing advances in clinical NLP strategy improvement have been huge, yet we propose more accentuation should be put on thorough assessment for the field to progress further. To empower this, we give noteworthy recommendations, including an insignificant convention that could be utilized when announcing clinical NLP strategy improvement and its assessment. � BEIESP.
author2 57211402461
author_facet 57211402461
Hudaa S.
Setiyadi D.B.P.
Laxmi Lydia E.
Shankar K.
Nguyen P.T.
Hashim W.
Maseleno A.
format Article
author Hudaa S.
Setiyadi D.B.P.
Laxmi Lydia E.
Shankar K.
Nguyen P.T.
Hashim W.
Maseleno A.
spellingShingle Hudaa S.
Setiyadi D.B.P.
Laxmi Lydia E.
Shankar K.
Nguyen P.T.
Hashim W.
Maseleno A.
Natural language processing utilization in healthcare
author_sort Hudaa S.
title Natural language processing utilization in healthcare
title_short Natural language processing utilization in healthcare
title_full Natural language processing utilization in healthcare
title_fullStr Natural language processing utilization in healthcare
title_full_unstemmed Natural language processing utilization in healthcare
title_sort natural language processing utilization in healthcare
publisher Blue Eyes Intelligence Engineering and Sciences Publication
publishDate 2023
_version_ 1806423377973346304
score 13.214268