2017
DOI: 10.1007/s00500-017-2529-3
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Crowdsourced healthcare knowledge creation using patients’ health experience-ontologies

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Cited by 5 publications
(4 citation statements)
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References 29 publications
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“…Sohn et al introduced the Crowdsourced Health Experience-ontologies-based healthcare Knowledge Creation (CHEKC) framework, which leverages experience-ontologies to integrate healthcare knowledge and provides patients with healthcare information based on similar healthcare experiences, symptoms, and conditions, demonstrating superior efficiency and accuracy over the PatienstLikeMe.com (PLM) framework through two experiments, underscoring the potential of social media in research and data collection [41].…”
Section: Social Media In Healthcare Researchmentioning
confidence: 99%
“…Sohn et al introduced the Crowdsourced Health Experience-ontologies-based healthcare Knowledge Creation (CHEKC) framework, which leverages experience-ontologies to integrate healthcare knowledge and provides patients with healthcare information based on similar healthcare experiences, symptoms, and conditions, demonstrating superior efficiency and accuracy over the PatienstLikeMe.com (PLM) framework through two experiments, underscoring the potential of social media in research and data collection [41].…”
Section: Social Media In Healthcare Researchmentioning
confidence: 99%
“…To a lesser extent we found papers where ontologies supported data integration, for example, in the healthcare [43] and multimedia processing [7] domains (SW4HC-DataIntegr.). Automated reasoning on formally represented knowledge is harnessed (SW4HC-Reasoning) in order to optimize the collection of missing values with crowdsourcing [46] or to validate the quality of data collected through crowdsourcing [22].…”
Section: Semantic Web For Human Computationmentioning
confidence: 99%
“…SC addresses the derivation and matching of the semantics of computational content and that of naturally expressed user intentions and brings together those disciplines concerned with connecting the intentions of humans with computational content by retrieving, using and manipulating existing content according to user's goals, and by creating, rearranging and managing content that matches the author's intentions (cf., [42]). SC technologies have been classified into five classes, namely, Semantic Analysis, Semantic Integration, Semantic Services, Service Integration, Semantic Interface (cf., [17,42] for details) and shown useful in, Education [25], Business Intelligence [26], Healthcare [45], Internet of things [59], several branches of Computer Science and Biomedical System [17], Speech and Language Processing [10], spoken document summarization [15], Theoretical Computer Science [20,22,61], and in many more disciplines for details see references of these cited work.…”
Section: Introductionmentioning
confidence: 99%