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  KEYWORD

Prediction of cardiovascular complications using multi-modal data

keywords CARDIOVASCULAR DISEASES, MACHINE LEARNING, SENSOR FUSION, SIGNAL PROCESSING, WEARABLE DEVICES

Reference persons LUIGI BORZI', GABRIELLA OLMO

Research Groups SYSTEM BIOLOGY GROUP - SYSBIO

Thesis type EXPERIMENTAL APPLIED

Description The thesis will focus on the development of robust and efficient processing algorithms for cardiovascular disease prediction and/or monitoring. Data recorded by wearable sensors, which include physical (motion) and physiological (heart activity, blood pressure) signals, will be analyzed. Machine learning models will be trained and extensively validated, with the ultimate goal of long-term, continuous, home monitoring in daily life.

Required skills - Matlab or Python programming
- Signal processing
- Basic knowledge of machine learning models


Deadline 06/10/2024      PROPONI LA TUA CANDIDATURA




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