EARLY-CAREER RESEARCHERS IN MEDICAL APPLICATIONS @ CERN – SHORT TALKS
Wednesday, 9 November 2022 -
16:30
Monday, 7 November 2022
Tuesday, 8 November 2022
Wednesday, 9 November 2022
16:30
Overview of Digital Technologies for Medical Applications at CERN
-
Alessandro Raimondo
(
CERN
)
Overview of Digital Technologies for Medical Applications at CERN
Alessandro Raimondo
(
CERN
)
16:30 - 16:35
Room: 30/7-018 - Kjell Johnsen Auditorium
16:35
CAFEIN project: A deep learning approach for diagnosis' support
-
Ioannis Stathopoulos
(
National and Kapodistrian University of Athens (GR)
)
CAFEIN project: A deep learning approach for diagnosis' support
Ioannis Stathopoulos
(
National and Kapodistrian University of Athens (GR)
)
16:35 - 16:50
Room: 30/7-018 - Kjell Johnsen Auditorium
A novel AI-based tool to assist clinicians, patients and caregivers in the analysis, diagnosis and prognosis of brain abnormalities based on the integration of clinical and imaging data. CAFEIN follows the 'life-cycle' of a radiology department and implements machine and deep learning tools using raw magnetic resonance images, X-ray images and patient data in order to improve clinical workflow's efficiency and performance. The tool focuses on strokes, brain tumors, multiply sclerosis and small vascular diseases while targets on detection, segmentation and classification tasks. Medical applications developed over the CAFEIN: a. Brain MRI anomaly screening b. Multi-pathology detection and classification
16:55
MARCHESE project – Remote Monitoring of Health Parameters
-
Roberto Cittadini
(
Universita Campus Bio-Medico (IT)
)
MARCHESE project – Remote Monitoring of Health Parameters
Roberto Cittadini
(
Universita Campus Bio-Medico (IT)
)
16:55 - 17:10
Room: 30/7-018 - Kjell Johnsen Auditorium
Intelligent robotic systems are becoming essential for space applications, medical applications, industries, nuclear plants, and for harsh environments in general, such as the CERN particles accelerator complex and experiments. Nowadays, mechatronic systems use mature technologies that allow their robust and safe use, even in collaboration with human workers. Specific for complex and hazardous environment, vital signals monitoring is expected to support people in their daily activities in the near future, following continuous strides in developing health technologies. As the industry 4.0 revolution grows, robotic systems are increasingly deployed to support health monitoring, like for example in search and rescue scenarios for disaster areas. This presentation introduces contactless human health monitoring methods explored using photoplethysmography methods and machine learning techniques. Experiments conducted on several people demonstrate that cardiac activity can be monitored from camera views to obtain non-invasive and reliable vital parameter measurements. This system could address several medical applications in the future to meet the required health and safety needs, also besides the CERN context.