| Literature DB >> 21278049 |
Luis Fernandez-Luque1, Randi Karlsen, Jason Bonander.
Abstract
In recent years the Web has come into its own as a social platform where health consumers are actively creating and consuming Web content. Moreover, as the Web matures, consumers are gaining access to personalized applications adapted to their health needs and interests. The creation of personalized Web applications relies on extracted information about the users and the content to personalize. The Social Web itself provides many sources of information that can be used to extract information for personalization apart from traditional Web forms and questionnaires. This paper provides a review of different approaches for extracting information from the Social Web for health personalization. We reviewed research literature across different fields addressing the disclosure of health information in the Social Web, techniques to extract that information, and examples of personalized health applications. In addition, the paper includes a discussion of technical and socioethical challenges related to the extraction of information for health personalization.Entities:
Mesh:
Year: 2011 PMID: 21278049 PMCID: PMC3221336 DOI: 10.2196/jmir.1432
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Relevant research areas in health informatics
| Research Area | Importance for Health Personalization |
| Tailored health education [ | Personalization of educational Web content to promote health and modify health behaviors |
| Personal health records [ | PHRs are a source of information about users. |
| Biomedical text mining | Data mining techniques to extract information from text, for example, automatic classification of forum posts [ |
| Consumer health vocabulary [ | Study of the vocabulary used by health consumers and how it maps with medical standardized vocabulary |
| Computer-aided diagnosis | Analysis of text, audio, and video for diagnosis, for example, speech analysis in neurology [ |
Relevant research areas in computer science
| Research Area | Importance for Health Personalization |
| User modeling and personalization | Adaptation of Web systems to users and user modeling [ |
| Computer vision | Extraction of information from images and videos, for example, age-group classification from facial images [ |
| Affective computing and social signaling | Extraction of information about users emotions [ |
| Collaborative computing | Use of collaborative techniques to build personalized systems and classify content, for example, tagging of Web content [ |
| Web data mining | Extracting information from the Web, for example, the analysis of the links to find relevant websites [ |
Figure 1The process of tailoring health education
Main sources of information for health personalization in the Social Web
| Sources | Examples of Information That Can Be Extracted for Health Personalization |
| Personal health records[ | Personal health information (eg, diagnoses and treatment) |
| Textual content | Textual content is present in most of the Web content, and it can contain information about the authors or about the content itself (eg, description of a video). |
| User profiles in online communities | Health risk behaviors (eg, smoking) |
| Forum posts and comments | Personal health information (eg, diagnoses and treatments) [ |
| Search queries | User interests [ |
| Tags | Topics of tagged content and users interests [ |
| Audio | Users emotional status [ |
| Facial photos | Emotions [ |
| Videos | Diagnosis (eg, neurological diseases) [ |
| Ratings | Users preferences and similarities [ |
| Social networks and links | Community discovery [ |
| Web usage data | Classification of users based on navigation patterns (eg, clicks and browsing data) [ |
Main technical challenges of extracting information from the Health Social Web
| Challenges | Description |
| Relevance [ | To determine which information is relevant for personalization is complex, and it depends on the objectives of the personalization. |
| Reliability and validity | The reliability and validity of the information used for personalizing is heterogeneous. Users can fake information about themselves [ |
| Integration | Many Health Social Web applications are not integrated. However, some platforms provide open APIs to integrate third party applications [ |
| Privacy-preserving extraction of personal information | Preserving privacy while user modeling and data mining [ |