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Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records

Background: Deep Phenotyping is the precise and comprehensive analysis of phenotypic features in which the individual components of the phenotype are observed and described. In UK mental health clinical practice, most clinically relevant information is recorded as free text in the Electronic Health...

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Autores principales: Jackson, Richard, Patel, Rashmi, Velupillai, Sumithra, Gkotsis, George, Hoyle, David, Stewart, Robert
Formato: Online Artículo Texto
Lenguaje:English
Publicado: F1000 Research Limited 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5968362/
https://www.ncbi.nlm.nih.gov/pubmed/29899974
http://dx.doi.org/10.12688/f1000research.13830.2
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author Jackson, Richard
Patel, Rashmi
Velupillai, Sumithra
Gkotsis, George
Hoyle, David
Stewart, Robert
author_facet Jackson, Richard
Patel, Rashmi
Velupillai, Sumithra
Gkotsis, George
Hoyle, David
Stewart, Robert
author_sort Jackson, Richard
collection PubMed
description Background: Deep Phenotyping is the precise and comprehensive analysis of phenotypic features in which the individual components of the phenotype are observed and described. In UK mental health clinical practice, most clinically relevant information is recorded as free text in the Electronic Health Record, and offers a granularity of information beyond what is expressed in most medical knowledge bases. The SNOMED CT nomenclature potentially offers the means to model such information at scale, yet given a sufficiently large body of clinical text collected over many years, it is difficult to identify the language that clinicians favour to express concepts. Methods: By utilising a large corpus of healthcare data, we sought to make use of semantic modelling and clustering techniques to represent the relationship between the clinical vocabulary of internationally recognised SMI symptoms and the preferred language used by clinicians within a care setting. We explore how such models can be used for discovering novel vocabulary relevant to the task of phenotyping Serious Mental Illness (SMI) with only a small amount of prior knowledge.  Results: 20 403 terms were derived and curated via a two stage methodology. The list was reduced to 557 putative concepts based on eliminating redundant information content. These were then organised into 9 distinct categories pertaining to different aspects of psychiatric assessment. 235 concepts were found to be expressions of putative clinical significance. Of these, 53 were identified having novel synonymy with existing SNOMED CT concepts. 106 had no mapping to SNOMED CT. Conclusions: We demonstrate a scalable approach to discovering new concepts of SMI symptomatology based on real-world clinical observation. Such approaches may offer the opportunity to consider broader manifestations of SMI symptomatology than is typically assessed via current diagnostic frameworks, and create the potential for enhancing nomenclatures such as SNOMED CT based on real-world expressions.
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spelling pubmed-59683622018-06-12 Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records Jackson, Richard Patel, Rashmi Velupillai, Sumithra Gkotsis, George Hoyle, David Stewart, Robert F1000Res Research Article Background: Deep Phenotyping is the precise and comprehensive analysis of phenotypic features in which the individual components of the phenotype are observed and described. In UK mental health clinical practice, most clinically relevant information is recorded as free text in the Electronic Health Record, and offers a granularity of information beyond what is expressed in most medical knowledge bases. The SNOMED CT nomenclature potentially offers the means to model such information at scale, yet given a sufficiently large body of clinical text collected over many years, it is difficult to identify the language that clinicians favour to express concepts. Methods: By utilising a large corpus of healthcare data, we sought to make use of semantic modelling and clustering techniques to represent the relationship between the clinical vocabulary of internationally recognised SMI symptoms and the preferred language used by clinicians within a care setting. We explore how such models can be used for discovering novel vocabulary relevant to the task of phenotyping Serious Mental Illness (SMI) with only a small amount of prior knowledge.  Results: 20 403 terms were derived and curated via a two stage methodology. The list was reduced to 557 putative concepts based on eliminating redundant information content. These were then organised into 9 distinct categories pertaining to different aspects of psychiatric assessment. 235 concepts were found to be expressions of putative clinical significance. Of these, 53 were identified having novel synonymy with existing SNOMED CT concepts. 106 had no mapping to SNOMED CT. Conclusions: We demonstrate a scalable approach to discovering new concepts of SMI symptomatology based on real-world clinical observation. Such approaches may offer the opportunity to consider broader manifestations of SMI symptomatology than is typically assessed via current diagnostic frameworks, and create the potential for enhancing nomenclatures such as SNOMED CT based on real-world expressions. F1000 Research Limited 2018-05-08 /pmc/articles/PMC5968362/ /pubmed/29899974 http://dx.doi.org/10.12688/f1000research.13830.2 Text en Copyright: © 2018 Jackson R et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Jackson, Richard
Patel, Rashmi
Velupillai, Sumithra
Gkotsis, George
Hoyle, David
Stewart, Robert
Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records
title Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records
title_full Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records
title_fullStr Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records
title_full_unstemmed Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records
title_short Knowledge discovery for Deep Phenotyping serious mental illness from Electronic Mental Health records
title_sort knowledge discovery for deep phenotyping serious mental illness from electronic mental health records
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5968362/
https://www.ncbi.nlm.nih.gov/pubmed/29899974
http://dx.doi.org/10.12688/f1000research.13830.2
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