The Role of Taxonomies in Social Media and the Semantic Web for Health Education

BACKGROUND An increasing amount of health education resources for patients and professionals are distributed via social media channels. For example, thousands of health education videos are disseminated via YouTube. Often, tags are assigned by the disseminator. However, the lack of use of standardized terminologies in those tags and the presence of misleading videos make it particularly hard to retrieve relevant videos. OBJECTIVES i) Identify the use of standardized medical thesauri (SNOMED CT) in YouTube Health videos tags from preselected YouTube Channels and demonstrate an information technology (IT) architecture for treating the tags of these health (video) resources. ii) Investigate the relative percentage of the tags used that relate to SNOMED CT terms. As such resources may play a key role in educating professionals and patients, the use of standardized vocabularies may facilitate the sharing of such resources. iii) Demonstrate how such resources may be properly exploited within the new generation of semantically enriched content or learning management systems that allow for knowledge expansion through the use of linked medical data and numerous literature resources also described through the same vocabularies. METHODS We implemented a video portal integrating videos from 500 US Hospital channels. The portal integrated 4,307 YouTube videos regarding surgery as described by 64,367 tags. BioPortal REST services were used within our portal to match SNOMED CT terms with YouTube tags by both exact match and non-exact match. The whole architecture was complemented with a mechanism to enrich the retrieved video resources with other educational material residing in other repositories by following contemporary semantic web advances, in the form of Linked Open Data (LOD) principles. RESULTS The average percentage of YouTube tags that were expressed using SNOMED CT terms was about 22.5%, while one third of YouTube tags per video contained a SNOMED CT term in a loose search; this analogy became one tenth in the case of exact match. Retrieved videos were then linked further to other resources by using LOD compliant systems. Such results were exemplified in the case of systems and technologies used in the mEducator EC funded project. CONCLUSION YouTube Health videos can be searched for and retrieved using SNOMED CT terms with a high possibility of identifying health videos that users want based on their search criteria. Despite the fact that tagging of this information with SNOMED CT terms may vary, its availability and linked data capacity opens the door to new studies for personalized retrieval of content and linking with other knowledge through linked medical data and semantic advances in (learning) content management systems.

[1]  Kent A. Spackman,et al.  SNOMED RT: a reference terminology for health care , 1997, AMIA.

[2]  Alan R. Aronson,et al.  Effective mapping of biomedical text to the UMLS Metathesaurus: the MetaMap program , 2001, AMIA.

[3]  Stijn Heymans,et al.  Semantic validation of the use of SNOMED CT in HL7 clinical documents , 2011, J. Biomed. Semant..

[4]  A. Rector Thesauri and Formal Classifications: Terminologies for People and Machines , 1998, Methods of Information in Medicine.

[5]  Diane J. Skiba,et al.  Nursing Education 2.0: YouTubeTM , 2007 .

[6]  Panagiotis D. Bamidis,et al.  Web 2.0 Approaches for Active, Collaborative Learning in Medicine and Health , 2010 .

[7]  Genevieve B. Melton,et al.  HealthTrust: trust-based retrieval of you tube's diabetes channels , 2011, CIKM '11.

[8]  F Oemig,et al.  Semantic interoperability adheres to proper models and code systems. A detailed examination of different approaches for score systems. , 2010, Methods of information in medicine.

[9]  K. Buckley,et al.  An Untapped Resource: Using YouTube in Nursing Education , 2009, Nurse educator.

[10]  Qing Zeng-Treitler,et al.  Computer-Assisted Update of a Consumer Health Vocabulary Through Mining of Social Network Data , 2011, Journal of medical Internet research.

[11]  Schubert Foo,et al.  Upper tag ontology for integrating social tagging data , 2010, J. Assoc. Inf. Sci. Technol..

[12]  Tim Berners-Lee,et al.  Linked data on the web (LDOW2008) , 2008, WWW.

[13]  Luis Fernandez-Luque,et al.  HealthTrust: A Social Network Approach for Retrieving Online Health Videos , 2012, Journal of medical Internet research.

[14]  A Coenen,et al.  Evaluation of the Content Coverage of SNOMED CT Representing ICNP Seven-axis Version 1 Concepts , 2011, Methods of Information in Medicine.

[15]  S. Trent Rosenbloom,et al.  Experiences mapping a legacy interface terminology to SNOMED CT , 2008, BMC Medical Informatics Decis. Mak..

[16]  G Eysenbach,et al.  Experience in the use of social media in medical and health education. Contribution of the IMIA Social Media Working Group. , 2011, Yearbook of medical informatics.

[17]  Tim Berners-Lee,et al.  Linked Data - The Story So Far , 2009, Int. J. Semantic Web Inf. Syst..

[18]  Rita Kukafka,et al.  Healthy Harlem: empowering health consumers through social networking, tailoring and web 2.0 technologies. , 2007, AMIA ... Annual Symposium proceedings. AMIA Symposium.

[19]  Charalampos Bratsas,et al.  Federating learning management systems for medical education: A persuasive technologies perspective , 2011, 2011 24th International Symposium on Computer-Based Medical Systems (CBMS).

[20]  Timo Honkela,et al.  MedIEQ-Quality labelling of medical web content using multilingual information extraction. , 2006, Studies in health technology and informatics.

[21]  Peter L. Elkin,et al.  A controlled trial of automated classification of negation from clinical notes , 2005, BMC Medical Informatics Decis. Mak..

[22]  A. Clifton,et al.  Can YouTube enhance student nurse learning? , 2011, Nurse education today.

[23]  J. Powell,et al.  Empirical studies assessing the quality of health information for consumers on the world wide web: a systematic review. , 2002, JAMA.

[24]  Panagiotis D. Bamidis,et al.  Enabling Content Sharing in Contemporary Medical Education: A Review of Technical Standards , 2009 .

[25]  Dennis Lee,et al.  A method for encoding clinical datasets with SNOMED CT , 2010, BMC Medical Informatics Decis. Mak..

[26]  Diane J Skiba Nursing education 2.0: YouTube. , 2007, Nursing education perspectives.

[27]  Bettina Berendt,et al.  Tags are not metadata, but "just more content" - to some people , 2007, ICWSM.

[28]  Aviv Shachak,et al.  The use of tags and tag clouds to discern credible content in online health message forums , 2012, Int. J. Medical Informatics.

[29]  Panagiotis D. Bamidis,et al.  From taxonomies to folksonomies: a roadmap from formal to informal modeling of medical concepts and objects , 2009, 2009 9th International Conference on Information Technology and Applications in Biomedicine.

[30]  Luis Fernández-Luque,et al.  An Analysis of Personal Medical Information Disclosed in YouTube Videos Created by Patients with Multiple Sclerosis , 2009, MIE.

[31]  P. Elkin,et al.  The Role of Social Media for Patients and Consumer Health , 2011, Yearbook of Medical Informatics.

[32]  Gilad Mishne,et al.  Finding high-quality content in social media , 2008, WSDM '08.

[33]  Panagiotis D. Bamidis,et al.  Web Advances in Education: Interactive, Collaborative Learning via Web 2.0 , 2010 .

[34]  Tim Benson,et al.  SNOMED CT: Who Needs to Know What? , 2011 .

[35]  Daniela Giordano,et al.  Connecting Medical Educational Resources to the Linked Data Cloud: the mEducator RDF Schema, Store and API , 2011, Linked Learning@ESWC.

[36]  Catherine Arnott-Smith,et al.  PatientsLikeMe: Consumer Health Vocabulary as a Folksonomy , 2008, AMIA.

[37]  Panagiotis D. Bamidis,et al.  mEducator: A Best Practice Network for Repurposing and Sharing Medical Educational Multi-type Content , 2009, PRO-VE.

[38]  R Cornet,et al.  Construction of an Interface Terminology on SNOMED CT , 2010, Methods of Information in Medicine.

[39]  Jon D. Patrick,et al.  Bmc Medical Informatics and Decision Making a Computational Linguistics Motivated Mapping of Icpc-2 plus to Snomed Ct , 2008 .