| Literature DB >> 25045715 |
Teresa Garcia-Valverde1, Andrés Muñoz1, Francisco Arcas1, Andrés Bueno-Crespo1, Alberto Caballero1.
Abstract
According to the World Health Organization, the world's leading cause of death is heart disease, with nearly two million deaths per year. Although some factors are not possible to change, there are some keys that help to prevent heart diseases. One of the most important keys is to keep an active daily life, with moderate exercise. However, deciding what a moderate exercise is or when a slightly abnormal heart rate value is a risk depends on the person and the activity. In this paper we propose a context-aware system that is able to determine the activity the person is performing in an unobtrusive way. Then, we have defined ontology to represent the available knowledge about the person (biometric data, fitness status, medical information, etc.) and her current activity (level of intensity, heart rate recommended for that activity, etc.). With such knowledge, a set of expert rules based on this ontology are involved in a reasoning process to infer levels of alerts or suggestions for the users when the intensity of the activity is detected as dangerous for her health. We show how this approach can be accomplished by using only everyday devices such as a smartphone and a smartwatch.Entities:
Mesh:
Year: 2014 PMID: 25045715 PMCID: PMC4082843 DOI: 10.1155/2014/959645
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1Overall architecture.
Performance measures.
| Full dataset | |||
|---|---|---|---|
| Classifier | Precision |
| Accuracy |
| Boosted C4.5 | 0.9997 | 0.9994 | 0.9995 |
| kNN | 1.00 | 1.00 | 1.00 |
|
| |||
| Reduced dataset | |||
| Classifier | Precision |
| Accuracy |
|
| |||
| Boosted C4.5 | 0.9968 | 0.997 | 0.997 |
| kNN | 0.993 | 0.993 | 0.993 |
Cardiovascular rules table.
| Minimum cardiovascular benefit | Aerobic limit | Anaerobic threshold | Severe exercise | |
|---|---|---|---|---|
| Borg scale RPE | 11 | 14 | 17 | 18–20 |
| % VO2max | 50% | 60–65% | 80–85% | ≥85% |
| % HRmax | 70% | 75–80% | 90–92% | 95–100% |
| Ventilatory responses | Unnoticeable change | Still barely noticeable | Difficult to speak | Exercise hyperpnea, cannot speak |
Figure 2Partial representation of SHCOntology. The main concepts of the ontology are person, physical activity, and medical context.
Figure 3Instantiation of the main concepts of SHCOntology for representing two persons performing cycling: Alice, an elderly woman without any specific medical context, and Bob, a male sportsperson affected by a cardiomyopathy.
Alert levels inferred by expert rules and their associated actions.
| Alert level | Action |
|---|---|
| Ignore | N/A |
| Low | Voice alert |
| Medium | Voice alert + recommendation |
| High | Emergency call |
Algorithm 1Several examples of general expert rules divided into levels according to the knowledge contained in them.
Algorithm 2Two examples of personalized expert rules.
Alert levels inferred by expert rules for two persons performing cycling: Alice, an elderly woman without any specific medical context, and Bob, a male sportsperson affected by a cardiomyopathy.
| Level I | Level II | Level III | Resulting alarm | |
|---|---|---|---|---|
| Alice | — | High | — | High |
| Bob | — | Low | High | High |