Ontology modeling for generation of clinical pathways

<p class="Abstract"><strong><em><span lang="EN-US">Purpose:</span></em></strong><span lang="EN-US"> Increasing costs of health care, fuelled by demand for high quality, cost-effective healthcare has drove hospitals to stre...

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Main Authors: Jasmine Tehrani, Kecheng Liu, Vaughan Michell
Format: Article
Language:English
Published: OmniaScience 2012-12-01
Series:Journal of Industrial Engineering and Management
Subjects:
Online Access:http://www.jiem.org/index.php/jiem/article/view/586
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spelling doaj-a8c5a533d7ef4febbf2e3349c30f4ee82020-11-25T00:29:27ZengOmniaScienceJournal of Industrial Engineering and Management2013-84232013-09532012-12-015244245610.3926/jiem.586143Ontology modeling for generation of clinical pathwaysJasmine Tehrani0Kecheng Liu1Vaughan Michell2Informatics Research Centre, University of Reading-Informatics Research Centre, University of Reading, UK -School of Information Management and Engineering, Shanghai University of Finance and Economics, CHINAInformatics Research Centre, University of Reading,UK<p class="Abstract"><strong><em><span lang="EN-US">Purpose:</span></em></strong><span lang="EN-US"> Increasing costs of health care, fuelled by demand for high quality, cost-effective healthcare has drove hospitals to streamline their patient care delivery systems. One such systematic approach is the adaptation of Clinical Pathways (CP) as a tool to increase the quality of healthcare delivery. However, most organizations still rely on are paper-based pathway guidelines or specifications, which have limitations in process management and as a result can influence patient safety outcomes. In this paper, we present a method for generating clinical pathways based on organizational semiotics by capturing knowledge from syntactic, semantic and pragmatic to social level. </span></p> <p class="Abstract"><strong><em><span lang="EN-US">Design/methodology/approach:</span></em></strong><span lang="EN-US"> The proposed modeling approach to generation of CPs adopts organizational semiotics and enables the generation of semantically rich representation of CP knowledge. Semantic Analysis Method (SAM) is applied to explicitly represent the semantics of the concepts, their relationships and patterns of behavior in terms of an ontology chart. Norm Analysis Method (NAM) is adopted to identify and formally specify patterns of behavior and rules that govern the actions identified on the ontology chart. Information collected during semantic and norm analysis is integrated to guide the generation of CPs using best practice represented in BPMN thus enabling the automation of CP.</span></p> <p class="Abstract"><strong><em><span lang="EN-US">Findings:</span></em></strong><span lang="EN-US"> This research confirms the necessity of taking into consideration social aspects in designing information systems and automating CP. The complexity of healthcare processes can be best tackled by analyzing stakeholders, which we treat as social agents, their goals and patterns of action within the agent network. </span></p> <p class="Abstract"><strong><em><span lang="EN-US">Originality/value:</span></em></strong><span lang="EN-US"> The current modeling methods describe CPs from a structural aspect comprising activities, properties and interrelationships. However, these methods lack a mechanism to describe possible patterns of human behavior and the conditions under which the behavior will occur. To overcome this weakness, a semiotic approach to generation of clinical pathway is introduced. The CP generated from SAM together with norms will enrich the knowledge representation of the domain through ontology modeling, which allows the recognition of human responsibilities and obligations and more importantly, the ultimate power of decision making in exceptional circumstances. </span></p>http://www.jiem.org/index.php/jiem/article/view/586Clinical pathways, process modeling, BPMN, organizational semiotics, ontology chart, semantic analysis method, medical quality improvement
collection DOAJ
language English
format Article
sources DOAJ
author Jasmine Tehrani
Kecheng Liu
Vaughan Michell
spellingShingle Jasmine Tehrani
Kecheng Liu
Vaughan Michell
Ontology modeling for generation of clinical pathways
Journal of Industrial Engineering and Management
Clinical pathways, process modeling, BPMN, organizational semiotics, ontology chart, semantic analysis method, medical quality improvement
author_facet Jasmine Tehrani
Kecheng Liu
Vaughan Michell
author_sort Jasmine Tehrani
title Ontology modeling for generation of clinical pathways
title_short Ontology modeling for generation of clinical pathways
title_full Ontology modeling for generation of clinical pathways
title_fullStr Ontology modeling for generation of clinical pathways
title_full_unstemmed Ontology modeling for generation of clinical pathways
title_sort ontology modeling for generation of clinical pathways
publisher OmniaScience
series Journal of Industrial Engineering and Management
issn 2013-8423
2013-0953
publishDate 2012-12-01
description <p class="Abstract"><strong><em><span lang="EN-US">Purpose:</span></em></strong><span lang="EN-US"> Increasing costs of health care, fuelled by demand for high quality, cost-effective healthcare has drove hospitals to streamline their patient care delivery systems. One such systematic approach is the adaptation of Clinical Pathways (CP) as a tool to increase the quality of healthcare delivery. However, most organizations still rely on are paper-based pathway guidelines or specifications, which have limitations in process management and as a result can influence patient safety outcomes. In this paper, we present a method for generating clinical pathways based on organizational semiotics by capturing knowledge from syntactic, semantic and pragmatic to social level. </span></p> <p class="Abstract"><strong><em><span lang="EN-US">Design/methodology/approach:</span></em></strong><span lang="EN-US"> The proposed modeling approach to generation of CPs adopts organizational semiotics and enables the generation of semantically rich representation of CP knowledge. Semantic Analysis Method (SAM) is applied to explicitly represent the semantics of the concepts, their relationships and patterns of behavior in terms of an ontology chart. Norm Analysis Method (NAM) is adopted to identify and formally specify patterns of behavior and rules that govern the actions identified on the ontology chart. Information collected during semantic and norm analysis is integrated to guide the generation of CPs using best practice represented in BPMN thus enabling the automation of CP.</span></p> <p class="Abstract"><strong><em><span lang="EN-US">Findings:</span></em></strong><span lang="EN-US"> This research confirms the necessity of taking into consideration social aspects in designing information systems and automating CP. The complexity of healthcare processes can be best tackled by analyzing stakeholders, which we treat as social agents, their goals and patterns of action within the agent network. </span></p> <p class="Abstract"><strong><em><span lang="EN-US">Originality/value:</span></em></strong><span lang="EN-US"> The current modeling methods describe CPs from a structural aspect comprising activities, properties and interrelationships. However, these methods lack a mechanism to describe possible patterns of human behavior and the conditions under which the behavior will occur. To overcome this weakness, a semiotic approach to generation of clinical pathway is introduced. The CP generated from SAM together with norms will enrich the knowledge representation of the domain through ontology modeling, which allows the recognition of human responsibilities and obligations and more importantly, the ultimate power of decision making in exceptional circumstances. </span></p>
topic Clinical pathways, process modeling, BPMN, organizational semiotics, ontology chart, semantic analysis method, medical quality improvement
url http://www.jiem.org/index.php/jiem/article/view/586
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