Investigating the capabilities of novel silk sericin-based electrodes to measure electrocardiogram signals by using machine learning techniques
Davide Vurro(Institute of Materials for Electronics and Magnetism), Riccardo Pecori(Università degli Studi eCampus), Luca Liparulo(Università degli Studi eCampus), Aris Liboà(University of Parma), Giuseppe De Giorgio(Institute of Materials for Electronics and Magnetism), Giuseppe Tarabella(Institute of Materials for Electronics and Magnetism), Marco Crepaldi(Italian Institute of Technology), Alessandro Barcellona(Italian Institute of Technology), Gianluca Zaza(University of Bari Aldo Moro), Pietro Squeri(Institute of Materials for Electronics and Magnetism), Pasquale D’Angelo(Institute of Materials for Electronics and Magnetism)
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