The Trustworthy-AI Medical Image Analysis group at the University of Brescia is a team dedicated to advancing the field of medical image analysis through collaborative research activities. The group's efforts are concentrated on the development of innovative systems and solutions to address complex image interpretation challenges, specifically within two imaging modalities: Brain MRI and Chest X-ray, and their corresponding anatomical districts. The group's research efforts are aimed at improving the accuracy, speed, and efficiency of image interpretation, with a focus on ensuring the reliability and safety of AI-assisted medical decision-making processes. By leveraging advanced deep learning techniques, the group aims to develop cutting-edge algorithms that can accurately and efficiently analyze medical images, aiding in the detection, diagnosis, and treatment of various medical conditions.

Medical image interpretation challenges and research activities of the tAImedIA group at UniBS

Signoroni A.;Savardi M.;Farina D.;Benini S.;Coppola E.;Ferrari D.;Massussi M.;Curello S.;Svanera M.;
2023-01-01

Abstract

The Trustworthy-AI Medical Image Analysis group at the University of Brescia is a team dedicated to advancing the field of medical image analysis through collaborative research activities. The group's efforts are concentrated on the development of innovative systems and solutions to address complex image interpretation challenges, specifically within two imaging modalities: Brain MRI and Chest X-ray, and their corresponding anatomical districts. The group's research efforts are aimed at improving the accuracy, speed, and efficiency of image interpretation, with a focus on ensuring the reliability and safety of AI-assisted medical decision-making processes. By leveraging advanced deep learning techniques, the group aims to develop cutting-edge algorithms that can accurately and efficiently analyze medical images, aiding in the detection, diagnosis, and treatment of various medical conditions.
2023
CEUR Workshop Proceedings
Ateneo di appartenenza
PE6_11 Machine learning, statistical data processing and applications using signal processing (eg. speech, image, video)
Inglese
2023 Italia Intelligenza Artificiale - Thematic Workshops, Ital-IA 2023
2023
ita
3486
118
123
6
CEUR-WS
Brain segmentation; Cardiovascular risk factors; Chest X-ray; Cortical thickness; COVID-19 prognosis; Deep learning; Magnetic Resonance Imaging
Not applicable
restricted
Signoroni, A.; Savardi, M.; Farina, D.; Benini, S.; Coppola, E.; Ferrari, D.; Massussi, M.; Curello, S.; Svanera, M.; D'Ancona, G.
273
info:eu-repo/semantics/conferenceObject
10
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11379/593145
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