The use of deep learning in biomedical imaging and omics data has shown great potential for enhancing medical diagnosis and improving patient outcomes. In this paper, we present the deep learning and machine learning research activities of two research laboratories: EIDOS and qBio. Our research encompasses a broad range of topics, including digital pathology, integration of omics data, digital radiology, computational epidemiology and neuroimaging. We collaborate with several hospitals for the collection of relevant datasets and with international research centers and foreign universities to develop state-of-the-art techniques. Overall, we believe that the activities of these laboratories in deep and machine learning have the potential to improve the way we diagnose and treat various medical conditions.

Artificial intelligence methods for biomedical imaging and omics data

Barbano C. A.;Beccuti M.;Cordero F.;Ivanov D. N.;Licheri N.;Pernice S.;Presta A.;Renzulli R.;Grangetto M.
2023-01-01

Abstract

The use of deep learning in biomedical imaging and omics data has shown great potential for enhancing medical diagnosis and improving patient outcomes. In this paper, we present the deep learning and machine learning research activities of two research laboratories: EIDOS and qBio. Our research encompasses a broad range of topics, including digital pathology, integration of omics data, digital radiology, computational epidemiology and neuroimaging. We collaborate with several hospitals for the collection of relevant datasets and with international research centers and foreign universities to develop state-of-the-art techniques. Overall, we believe that the activities of these laboratories in deep and machine learning have the potential to improve the way we diagnose and treat various medical conditions.
2023
2023 Italia Intelligenza Artificiale - Thematic Workshops, Ital-IA 2023
italia
2023
CEUR Workshop Proceedings
Falchi F.
3486
154
159
Biomedical imaging; computational epidemiology; deep learning; histopathology; integration of omics data; machine learning; neuroimaging; radiology
Barbano C.A.; Beccuti M.; Cordero F.; Ivanov D.N.; Licheri N.; Pernice S.; Presta A.; Renzulli R.; Grangetto M.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1944291
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