Biomedical Holistic Ontology for People with Rare Diseases
Abstract
:1. Introduction
2. Materials and Methods
2.1. Rare Diseases Scenarios
2.2. Methodology to Build the Ontology and to Perform the Sentiment Analysis
3. Results
- Number of classes: 14,558;
- Number of individuals: 85;
- Number of object properties: 69;
- Number of data properties: 32;
- Total classes MIEROTed: 27;
- Maximum depth: 4;
- Maximum number of children: 35;
- Average number of children: 7;
- Classes with a single child: 11;
- Classes with more than 25 children: 6.
- S: An abbreviation for ALC with transitive roles.
- AL: Attribute language. This is the base language which allows: atomic negation (negation of concepts that do not appear on the left-hand side of axioms), concept intersection, universal restrictions and limited existential quantification (restrictions that only have fillers of things).
- C: Complex concept negation.
- H: Role hierarchy (subproperties: rdfs:subPropertyOf).
- I: Inverse properties.
- (D): Use of datatype properties, data values or datatypes.
4. Discussion
5. Conclusions and Future Work
- A new holistic ontology about rare diseases has been built and shared. This ontology was composed by the integration of existing ontologies (medical and contextual) and includes information about 25 scenarios of people with rare diseases. The ontology has been validated and usefulness assessed. Depending on the user (a patient, a health professional, a policy maker, etc.) some parts of the ontology may be more interesting than others; thus, several views of the ontology should be generated.
- Code is shared openly to the community so that this research is partially reproducible.
- People are informed about the importance of supporting rare diseases and the problems of this collective. It is an objective to disseminate this study in Biomedical repositories such as Bioportal in order to inform the general public about problems involved in rare diseases. Therefore, these efforts aim to engage other people to work in this domain, helping the collective and providing it with more information.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
ADO | Alzheimer’s disease |
DALY | Disability-adjusted life year |
DMTO | Diabetes Mellitus treatment ontology |
FEDER | Spanish Federation of Rare Diseases |
HL7 | Health Level Seven International |
HORD | Holistic Ontology of people with Rare Diseases |
ICD | International Classification of Diseases |
ICF | International Classification of Functioning, Disability and Health |
ICHI | International Classification of Health Interventions |
MESH | Medical Subject Headings |
MIREOT | Minimum Information to Reference an External Ontology Term |
MSO | Multiple Sclerosis Ontology |
NLTK | Natural Language Toolkit |
OOPS | OntOlogy Pitfall Scanner |
ORDO | Orphanet Rare Disease Ontology |
PDON | Parkinson’s disease |
PMR | Physical Medicine and Rehabilitation Ontology |
QALY | Quality-adjusted life year |
RD | Rare disease |
SHA | Secure hash algorithm |
SIOC | Semantically-Interlinked Online Communities |
SNOMED CT | Systematized Nomenclature of Medicine—Clinical Terms |
WHO | World Health Organization |
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Attribute | Description |
---|---|
Time | UTC time when a Tweet was created |
Represents the geographic location of a Tweet as reported by the user or client application. The inner coordinates array is formatted as geoJSON (longitude first, then latitude) | |
Language used in the Tweet | |
SHA1 (Secure Hash Algorithm 1) of | If the represented Tweet is a reply, this field contains the string representation of the original Tweet’s author ID. This will not necessarily always be the user directly mentioned in the Tweet. |
SHA1 of | If the represented Tweet is a reply, this field contains the screen name of the original Tweet’s author. |
If the represented Tweet is a reply, this field contains the string representation of the original Tweet’s ID. | |
SHA1 of | Identifier of the user who authored the Tweet |
Count of the followers of the user | |
Count of the friends of the user | |
Location of the user | |
Hashtags, indices and other information of the user |
Category of Attribute | Attributes |
---|---|
Demographic and clinical information | Name, age, country, disease, age of diagnosis and treatment. |
Body functions | Emotional functions, consciousness, vomiting, respiratory functions, skin functions, hearing and vestibular functions, cognitive functions, and pain in head and neck. |
Activities and participation | Interests, remunerative employment, non-remunerative employment, higher education, sports, arts and culture, and walking. |
Environmental factors (facilitators and barriers) | Technological facilitators for communication, barrier regarding health professionals, barrier in financial assets, and barrier in health systems. |
Attribute [min, max] Mean (std) | Polarity | Subjectivity |
---|---|---|
Age [1, 45] 23 (11.2) | −0.15 | −0.02 |
Spain [0, 1] 0.7 (0.5) | 0.13 | −0.01 |
Iran [0, 1] 0.1 (0.3) | −0.12 | −0.23 |
Age of Diagnosis [0, 31] 9.3 (8.2) | −0.31 | 0.40 |
Emotional Functions [0, 4] 0.7 (1.0) | −0.47 | −0.07 |
Remunerative employment [0, 4] 0.7 (0.7) | −0.30 | 0.01 |
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Subirats, L.; Conesa, J.; Armayones, M. Biomedical Holistic Ontology for People with Rare Diseases. Int. J. Environ. Res. Public Health 2020, 17, 6038. https://doi.org/10.3390/ijerph17176038
Subirats L, Conesa J, Armayones M. Biomedical Holistic Ontology for People with Rare Diseases. International Journal of Environmental Research and Public Health. 2020; 17(17):6038. https://doi.org/10.3390/ijerph17176038
Chicago/Turabian StyleSubirats, Laia, Jordi Conesa, and Manuel Armayones. 2020. "Biomedical Holistic Ontology for People with Rare Diseases" International Journal of Environmental Research and Public Health 17, no. 17: 6038. https://doi.org/10.3390/ijerph17176038
APA StyleSubirats, L., Conesa, J., & Armayones, M. (2020). Biomedical Holistic Ontology for People with Rare Diseases. International Journal of Environmental Research and Public Health, 17(17), 6038. https://doi.org/10.3390/ijerph17176038