Gianfrancesco Angelini

Dottorando

gian.angelini@hotmail.com

BiograFIA

Gianfrancesco Angelini ha conseguito una laurea in Ingegneria Chimica presso l’Università della Calabria e un master in Neuroingegneria e Bio-ICT presso l’Università di Genova. 

Ha svolto stage e corsi di formazione in intelligenza artificiale e ha lavorato come Data Scientist, Data Engineer, DevOps e Python Software Developer. 

Nel 2022 è entrato a far parte del Programma Nazionale di Dottorato in IA, concentrandosi sulle reti neurali di seconda e terza generazione ed esplorando autonomous agents, sentient agents, e knowledge extraction da big data.

ProfilI

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Scopus

Ultimi 5 articoli (Scopus)

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Unraveling sex differences in Parkinson's disease through explainable machine learning; Journal of the Neurological Sciences; 15 July 2024; DOI: 10.1016/j.jns.2024.123091
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Ultimi 5 articoli (PubMed)

  • Unraveling sex differences in Parkinson's disease through explainable machine learning
    on 13 Giugno 2024

    Sex differences affect Parkinson's disease (PD) development and manifestation. Yet, current PD identification and treatments underuse these distinctions. Sex-focused PD literature often prioritizes prevalence rates over feature importance analysis. However, underlying aspects could make a feature significant for predicting PD, despite its score. Interactions between features require consideration, as do distinctions between scoring disparities and actual feature importance. For instance, a...