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"A Machine Learning Approach for the Prediction of the Progression of ..."
Vassiliki I. Kigka et al. (2018)
- Vassiliki I. Kigka, Eleni I. Georga
, Antonis I. Sakellarios, Nikolaos S. Tachos
, Ioannis O. Andrikos, Panagiota Tsompou, Silvia Rocchiccioli, Gualtiero Pelosi, Oberdan Parodi, Lampros K. Michalis
, Dimitrios I. Fotiadis:
A Machine Learning Approach for the Prediction of the Progression of Cardiovascular Disease based on Clinical and Non-Invasive Imaging Data. EMBC 2018: 6108-6111
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