Debido al alto tráfico generado por robots, aplicamos límites en el número de peticiones permitidas por cliente y bloqueos por IP automáticos. Si haces un uso legítimo y estás teniendo problemas, avísanos para reevaluar nuestras políticas de bloqueo. Disculpa las molestias.

Resumen:
Towards Digital Health: Integrating Federated Learning and Crowdsensing through the Contigo App

bs.conference.acronymJCIS
bs.conference.nameJornadas de Ciencia e Ingeniería de Servicios (2025)
bs.edition.date2025-09-09
bs.edition.locationCórdoba
bs.edition.nameXX Jornadas de Ciencia e Ingeniería de Servicios (JCIS 2025)
bs.proceedings.editorBoubeta-Puig, J.
bs.proceedings.nameActas de las XX Jornadas de Ciencia e Ingeniería de Servicios (JCIS 2025)
dc.contributor.affiliationCOMPUTAEX. Extremadura Supercomputing Center, Spain
dc.contributor.affiliationUniversidad de Extremadura, Spain
dc.contributor.affiliationUniversity of Extremadura, Spain
dc.contributor.affiliationUniversity of Extremadura, Spain
dc.contributor.authorFlores-Martin, Daniel
dc.contributor.authorLaso, Sergio
dc.contributor.authorBerrocal, Javier
dc.contributor.authorMurillo, Juan M.
dc.contributor.emaildaniel.flores@computaex.es
dc.contributor.emailslasom@unex.es
dc.contributor.emailjberolm@unex.es
dc.contributor.emailjuanmamu@unex.es
dc.contributor.signatureFlores-Martin, Daniel
dc.contributor.signatureLaso, Sergio
dc.contributor.signatureBerrocal, Javier
dc.contributor.signatureMurillo, Juan Manuel
dc.date.accessioned2025-09-01T20:16:01Z
dc.date.issued2025-09-09
dc.description.abstractThe growing demand for effective healthcare has driven advances in digital health. This digitization supposes a challenge from the point of view of privacy and the treatment of sensitive personal data while providing non-intrusive and easy-to-use digital mechanisms. This paper presents Contigo: a health monitoring system that integrates a mobile application and a web platform for detecting anomalies using Federated Learning techniques. The mobile application collects health and personal data to train a personal predictive model. It is then anonymized and aggregated into a global model to improve efficiency, reducing adoption time for new users. At the same time, the web platform allows healthcare professionals to access the data for its analysis and validation. Contigo addresses the need for user-friendly digital mechanisms in healthcare, addressing privacy concerns while improving data-driven decision-making for professionals and personalized patient care. This approach ensures privacy and facilitates continuous model improvement, providing personalized, proactive, and non-intrusive patient health analytics.
dc.identifier.citationFlores-Martin, D., Laso, S., Berrocal, J., Murillo, J. M.: Towards Digital Health: Integrating Federated Learning and Crowdsensing through the Contigo App. In: Boubeta-Puig, J. (ed.) Actas de las XX Jornadas de Ciencia e Ingeniería de Servicios (JCIS 2025). Sistedes (2025). https://hdl.handle.net/11705/JCIS/2025/19
dc.identifier.citation-bibtex@inproceedings{11705:JCIS:2025:19, title = {{Towards Digital Health: Integrating Federated Learning and Crowdsensing through the Contigo App}}, author = {Flores-Martin, D. and Laso, S. and Berrocal, J. and Murillo, J. M.}, url = {https://hdl.handle.net/11705/JCIS/2025/19}, crossref = {11705:JCIS:2025} } @proceedings{11705:JCIS:2025, title = {{Actas de las XX Jornadas de Ciencia e Ingenier\'{i}a de Servicios (JCIS 2025)}}, author = {Boubeta-Puig, J.}, year = {2025}, publisher = {{Sistedes}}, }
dc.identifier.sistedes11705/JCIS/2025/19
dc.identifier.urihttps://hdl.handle.net/11705/3550
dc.publisherSistedes
dc.relation.ispartofActas de las XX Jornadas de Ciencia e Ingeniería de Servicios (JCIS 2025)
dc.rights.licenseCC BY-NC-ND 4.0
dc.rights.urihttps://creativecommons.org/licenses/by-nc-nd/4.0/
dc.subjectFederated Learning
dc.subjectHealthcare
dc.subjectMobile Device
dc.subjectMonitoring
dc.subjectCrowdsensing
dc.titleTowards Digital Health: Integrating Federated Learning and Crowdsensing through the Contigo App
dspace.entity.typeResumen
relation.isAuthorOfAbstract5ec6dcaa-00d0-4f0d-9801-a8bd647eac64
relation.isAuthorOfAbstractbc5b2d2f-3315-41b2-86ad-a2ee73870ac6
relation.isAuthorOfAbstract47d6dbcd-ef37-45a8-8e19-4a9e81698bd7
relation.isAuthorOfAbstract74dc5561-1dfa-4cba-bce1-73e3cab1cb8e
relation.isAuthorOfAbstract.latestForDiscovery5ec6dcaa-00d0-4f0d-9801-a8bd647eac64

Archivos

Bloque original

Mostrando 1 - 1 de 1
Cargando...
Miniatura
Nombre:
11705-JCIS-2025-19.pdf
Tamaño:
146.34 KB
Formato:
Adobe Portable Document Format