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Healthier and Independent Living of the Elderly: Interoperability in a Cross-Project Pilot., , , , , , , , , and 5 other author(s). I-ESA Workshops, volume 3214 of CEUR Workshop Proceedings, CEUR-WS.org, (2022)Medical data quality assessment: On the development of an automated framework for medical data curation., , , , , , , , , and 1 other author(s). Comput. Biol. Medicine, (2019)HEARTEN KMS - A knowledge management system targeting the management of patients with heart failure., , , , , , and . J. Biomed. Informatics, (2019)A federated AI-empowered platform for disease management across a Pan-European data driven hub., , , , , and . BHI, page 1-4. IEEE, (2022)A generalized methodology for the gridding of microarray images with rectangular or hexagonal grid., , , and . Signal Image Video Process., 10 (4): 719-728 (2016)Segmentation of microarray images using pixel classification - Comparison with clustering-based methods., , , , and . Comput. Biol. Medicine, 43 (6): 705-716 (2013)A federated AI strategy for the classification of patients with Mucosa Associated Lymphoma Tissue (MALT) lymphoma across multiple harmonized cohorts., , , , , , , , and . EMBC, page 1666-1669. IEEE, (2021)A preliminary presentation of a mobile co-operative platform for Heart Failure self-management., , , , , , , , , and 5 other author(s). BIBE, page 1-4. IEEE Computer Society, (2015)A computational approach for the estimation of heart failure patients status using saliva biomarkers., , , , , , , , , and 6 other author(s). EMBC, page 3648-3651. IEEE, (2017)FHBF: Federated hybrid boosted forests with dropout rates for supervised learning tasks across highly imbalanced clinical datasets., , , , , and . Patterns, 5 (1): 100893 (January 2024)