Ontology-Based Model to Support Ubiquitous Healthcare Systems for COPD Patients
Abstract
:1. Introduction
2. Related Works
3. Proposed Model
3.1. Data Acquisition Layer
- i.
- Demographic factors:
- i.1
- Age: Aging is often associated with gradual weakness in bodily functions. A statistical analysis using clinical data from 28 countries refers that the prevalence of COPD is approaching 12% threshold with people over 40 years of age [7].
- i.2
- Sex: As we know, certain diseases are more common among men than among women or the inverse. Gender plays an important role in COPD, where the prevalence is doubled in men compared with women.
- i.3
- Race: Many diseases differ in prevalence by race and ethnicity. Recent research is uncovering evidence that ethnicity may influence the development of chronic COPD [14].
- i.4
- Country of residence: The World Health Organization sheet on COPD in the last year shows that most COPD deaths occur in low- and middle-income countries [14].
- ii.
- Physiological factors:
- iii.
- Psychological factors:
- iv.
- Environmental factors:
- iv.1
- Ambient air: Ambient air has been considered as a risk factor for COPD [32] as the concentration of air components (O2, CO2, He, etc.) must be kept in proportion with patient status.
- iv.2
- Weather: Weather conditions are also one of the factors that can trigger COPD symptoms. According to [32], extreme temperature and humidity, atmospheric pressure, precipitation and wind chill have a direct impact on the patient’s life.
- iv.3
- Air pollution: Short- and long-term exposure to indoor and outdoor air pollution have adverse effects and may induce the acute exacerbation of COPD. There is a long list of atmospheric pollutants, such as arsenic, carbon monoxide, nickel, chromium, etc. [33].
- v.
- Physical activity: Regular exercise is part of healthy living, where moderate exercise can improve COPD symptoms and help the organs better use oxygen. on the other hand, excessive exercise may harm COPD patient [34].
- vi.
- vii.
- Comorbidities: Comorbidities are other chronic problems that independently coexist with COPD. There is a set of comorbidities commonly associated with COPD, including coronary heart disease, diabetes mellitus, heart failure, lung cancer, osteoporosis and muscle weakness [35]. Comorbidities of COPD can adversely affect the stage of disease and might lead to early death
- viii.
- Food: Some foods and drinks can exacerbate COPD symptoms. Therefore, it is important to avoid foods which can potentially make this condition worse [34].
- ix.
3.2. Semantic Layer (Ontology)
3.2.1. Classifications of Ontology
3.2.2. Methodologies for Building Ontologies
- ▪
- What is the domain that the ontology will cover?The chronic obstructive pulmonary disease is the domain of this ontology.
- ▪
- What is the purpose of this ontology?This ontology is designed for preventive management of COPD patients. The main purpose is to facilitate the systematic extraction of information from detailed observations. Our ontology is dedicated to support a personalized system for COPD patient. This ontology provides real-time monitoring and recommendations to help patients cease contact with risk factors and prevent progressive respiratory impairment and allows physicians to be kept informed of the patient’s condition.
- ▪
- Who will use the ontology?Potential users of this ontology are physicians and patients.
- ▪
- What types of questions should the information in the ontology provide answers for?The COPDology must provide answers to questions such as:
- What data should be collected to supervise the patient?
- How often should the patient take a measurement?
- Should the acquired data be transmitted to the healthcare site?
- How should the data be analyzed?
- Should an alarm be triggered according to the evaluation results?
- Which actions should be performed if an alarm is triggered?
- 1.
- Size of vocabulary (SOV): This metric includes the total number of created classes, instances and properties in the ontology; the SOV is defined as:
- 2.
- Edge node ratio (ENR): ENR represents the connectivity density which increases proportionally with the increment of the number of edges between nodes (classes and individuals). ENR is measured as follows:
- 3.
- Tree impurity (TIP): This indicator is mainly used to discover how far an ontology inheritance hierarchy digresses from a tree; the TIP is measured as in Equation (3):
- 4.
- Entropy of ontology graph (EOG): This norm is an indicator of the graph complexity [80]. It is calculated directly by the application of the logarithm function to a probability distribution over the ontology graph:
- 1.
- Number of classes (NOC): The NOC metric is simply a count of the defined classes in the ontology [85].
- 2.
- Number of instances (NOI): The NAO criterion is a census of the instances created in the ontology.
- 3.
- Number of properties (NOP): As its name implies, NOP is the number of properties found in an ontology [84].
- 4.
- Number of root classes (NORC): This metric corresponds to the number of non-rooted classes or the concepts that do not have super-classes in their upper layer. Let us consider C the classes in ontology:
- 5.
- Average Population (AP): This variable measures the mean distribution of instances across all classes. Theoretically, AP is defined as follow:According to the rules set [80], this metric has been proposed as an indication of whether there is sufficient information in the ontology.
- 6.
- Class Richness (CR): This value is the ratio between the number of non-empty classes that have instances and the total number of classes. CR percentage give us an idea of how many instances are related to classes defined in the graph.
- 7.
- Relationship Richness (RR): This metric represents the number of relationships divided by the sum of the number of subclasses and the number of relationships [80]:
- 8.
- Inheritance richness (IR): The IR describes the distribution of knowledge overall levels of the ontology’s inheritance tree. The inheritance richness of the schema (IRs) is known as the average number of subclasses per class. Formally, this value is calculated from the equation:
4. Processing and Reasoning Layer
4.1. Patient Chart Label
4.2. Patient Location Detector
4.3. Patient Activity Detector
4.4. Risk Factors Detector
4.5. Medical Services
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Albumin | Creatinine | Glomerular Filtration Rate |
Oxygen Consumption | Hematocrit | PH Level |
Systolic pressure | Oxygen saturation | Glucose |
Sodium level | Diastolic pressure | PaO2 |
Blood Urea Nitrogen | Respiration rate | FEV1 |
Temperature | Heartrate | PaCo2 |
Author | Metrics of Classification | Types |
---|---|---|
Mizoguchi (1995) | Typology | Content (task, domain and general ontologies), Communication, Indexing, and Meta-ontologies |
Uschold (1996) | Formality | Highly informal, Structured informal, Semi-formal, Rigorously formal ontologies |
Purpose | Communication among humans, Inter-operability among systems, System engineering benefits | |
Subject Matter | Domain, Task/Method/Problem solving, Representation/Meta ontologies | |
Heijst (1997) | Type of structure of the conceptualization | Terminological, Information, and Knowledge modeling ontologies |
Subject of the conceptualization | Representation, Generic, Domain, and Application ontologies | |
Guarino (1998) | level of dependence on a particular task | Top-level, Domain, Task, and Application ontologies |
Jurisica (1999) | Nature of issue | Static, Dynamic, Intentional ontologies, and Social ontologies |
Pérez (1999) | Content | Task, Domain and Representation ontologies |
Issue of the conceptualization | Application, Domain, Generic, and Representation Ontologies | |
Sowa (2000) | Level of axiomatization | Terminological and Formal ontologies |
Lassila (2001) | Richness of the internal structure | Controlled vocabulary, Glossary, Thesauri, Term hierarchies, Strict subclass hierarchies, Frames, Ontology with value restrictions, Ontology with logical constraints |
Fensel (2003) | Level of generality | Generic, Representational, Domain, Method and Task ontologies. |
Ruiz (2006) | Software engineering | Ontologies of Domain and Ontologies as software artifacts |
Berdier (2007) | Formalization | Highly informal, Semi-informal, Semi-formal and Rigorously formal |
Expressiveness | Heavyweight and Lightweight ontologies | |
Purpose | Application and Reference ontologies | |
Specificity | Generic, Core and Domain ontologies | |
Obrst (2010) | Level of generality | Upper, Mid-level, and Domain ontologies |
Roussey (2011) | Expressivity and formality | Information, Terminological, Software, and Formal ontologies |
Scope of the objects | Foundational, General, Core reference, Domain, Task, and Local or Application ontologies |
Class | SNOMED-CT | Class | SNOMED-CT |
---|---|---|---|
Patient | 116,154,003 | Systolic pressure | 271,649,006 |
Profile | 263,878,001 | Glomerular Filtration Rate | 802,740,01 |
Psychological status | 704,488,001 | Hematocrit | 365,616,005 |
Oxygen saturation | 449,171,008 | PH Level | 945,600,6 |
Temperature | 703,421,000 | Total lung capacity (TLC) | 575,660,09 |
Pulmonary circulation | 177,850,05 | Forced expiratory flow | 251,930,006 |
Forced vital capacity (FVC) | 508,340,05 | Blood Urea Nitrogen | 723,410,03 |
Diffusion capacity | 547,150,06 | Diastolic Pressure | 271,650,006 |
Object Property | Domain | Range | Datatype Property | Domain | Range |
---|---|---|---|---|---|
hasTemprature | Physiological | Temperature | hasFname | Profile | String |
hasHeartRate | Physiological | heartRate | hasLname | Profile | String |
hasFEV1 | Physiological | FEV1 | hasGender | Profile | String |
hasHematocrit | Physiological | Hematocrit | hasTelephone | Profile | String |
hasOxSaturation | Physiological | Oxygen saturation | hasHabits | Profile | String |
hasRespRate | Physiological | Respiration rate | hasMinNormalRange | vital signs | Float |
hasBodyWeight | Physiological | Weight | hasaxNormalRange | vital signs | Float |
hasBodyHeight | Physiological | Height | hasMinSevereRange | vital signs | Float |
hasGlucose | Physiological | Glucose | hasMaxSevereRange | vital signs | Float |
Metric | NOC | NOI | NOP | NORC | AP | CR | RR | IR |
---|---|---|---|---|---|---|---|---|
COPDology | 180 | 4K | 285 | 12 | 6.52 | 0.80 | 0.389 | 2.210 |
Degree | Example | Service | Recommendation |
---|---|---|---|
Low | Room temperature is one degree lower than the ideal indoor temperature | Notification message | The ambient temperature is out of range |
Mild | Patient intends to make a mountain trip to a high altitude (6000 feet above sea level) | Warning message | You need an oxygen mask and winter clothing. |
Moderate | Air quality index rises above 151 | Alert doctor | - |
Severe | Fever; increase in wheezes, an increase in coughing, increase in heart rate ≥ 20% | Call the emergency services | - |
© 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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Ajami, H.; Mcheick, H. Ontology-Based Model to Support Ubiquitous Healthcare Systems for COPD Patients. Electronics 2018, 7, 371. https://doi.org/10.3390/electronics7120371
Ajami H, Mcheick H. Ontology-Based Model to Support Ubiquitous Healthcare Systems for COPD Patients. Electronics. 2018; 7(12):371. https://doi.org/10.3390/electronics7120371
Chicago/Turabian StyleAjami, Hicham, and Hamid Mcheick. 2018. "Ontology-Based Model to Support Ubiquitous Healthcare Systems for COPD Patients" Electronics 7, no. 12: 371. https://doi.org/10.3390/electronics7120371
APA StyleAjami, H., & Mcheick, H. (2018). Ontology-Based Model to Support Ubiquitous Healthcare Systems for COPD Patients. Electronics, 7(12), 371. https://doi.org/10.3390/electronics7120371