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CardioVAI: An automatic implementation of ACMG-AMP variant interpretation guidelines in the diagnosis of cardiovascular diseases 1-gen-2018 Nicora, Giovanna; Limongelli, Ivan; Gambelli, Patrick; Memmi, Mirella; Malovini, Alberto; Mazzanti, Andrea; Napolitano, Carlo; Priori, Silvia; Bellazzi, Riccardo
A rule-based expert system for automatic implementation of somatic variant clinical interpretation guidelines 1-gen-2019 Nicora, G.; Limongelli, I.; Cova, R.; Della Porta, M. G.; Malcovati, L.; Cazzola, M.; Bellazzi, R.
A semi-supervised learning approach for pan-cancer somatic genomic variant classification 1-gen-2019 Nicora, G.; Marini, S.; Limongelli, I.; Rizzo, E.; Montoli, S.; Tricomi, F. F.; Bellazzi, R.
Artificial intelligence and machine learning: just a hype or a new opportunity for pharmacometrics? 1-gen-2019 Bartolucci, R.; Grandoni, S.; Melillo, N.; Nicora, G.; Sauta, E.; Tosca, E. M.; Magni, P.
A comparison of eVai, CADD and VVP variant prediction results on the ICR639 hereditary cancer dataset 1-gen-2019 Nicora, G.; Limongelli, I.; Zucca, S.; Santolisier, R.; Magni, P.; Bellazzi, R.
Time-Lapse imaging combined with artificial neural-network analysis predicts oocytes and preimplantation embryos developmental competence. 1-gen-2019 Zuccotti, M; Coticchio, G; Fiorentino, Giulia; Cavalera, F; Nicora, G; Bellazzi, R; Sciajno, R; Borini, A; Garagna, S.
Integrated Multi-Omics Analyses in Oncology: A Review of Machine Learning Methods and Tools 1-gen-2020 Nicora, G.; Vitali, F.; Dagliati, A.; Geifman, N.; Bellazzi, R.
A continuous-time Markov model approach for modeling myelodysplastic syndromes progression from cross-sectional data 1-gen-2020 Nicora, G.; Moretti, F.; Sauta, E.; Della Porta, M.; Malcovati, L.; Cazzola, M.; Quaglini, S.; Bellazzi, R.
An automatic implementation of ACMG/ClinGen guidelines for constitutional Copy Number Variants annotation and interpretation 1-gen-2020 De Paoli, F.; Limongelli, I.; Rizzo, E.; Nicora, G.; Magni, P.
Cytoplasmic movements of the early human embryo: imaging and artificial intelligence to predict blastocyst development 1-gen-2021 Coticchio, Giovanni; Fiorentino, Giulia; Nicora, Giovanna; Sciajno, Raffaella; Cavalera, Federica; Bellazzi, Riccardo; Garagna, Silvia; Borini, Andrea; Zuccotti, Maurizio
Strategie di Intelligenza Artificiale per l'interpretazione delle varianti genomiche nelle neoplasie ematologiche 22-feb-2021 Nicora, Giovanna
eVai's Suggested Diagnosis feature: a new AI-based method to increase diagnostic yield in Rare Disease Patients 1-gen-2022 Nicora, G.; De Paoli, F.; Limongelli, I.; Rizzo, E.; Bellazzi, R.; Magni, P.; Zucca, Susanna
Correlation between PD-L1 Expression of Non-Small Cell Lung Cancer and Data from IVIM-DWI Acquired during Magnetic Resonance of the Thorax: Preliminary Results 1-gen-2022 Bortolotto, Chandra; Stella, Giulia Maria; Messana, Gaia; Lo Tito, Antonio; Podrecca, Chiara; Nicora, Giovanna; Bellazzi, Riccardo; Gerbasi, Alessia; Agustoni, Francesco; Grimm, Robert; Zacà, Domenico; Filippi, Andrea Riccardo; Bottinelli, Olivia Maria; Preda, Lorenzo
Evaluation of XAI on ALS 6-months mortality prediction 1-gen-2022 Buonocore, T. M.; Nicora, G.; Dagliati, A.; Parimbelli, E.
Dynamic Prediction of Non-Neutral SARS-Cov-2 Variants Using Incremental Machine Learning 1-gen-2022 Nicora, G.; Marini, S.; Salemi, M.; Bellazzi, R.
A machine learning approach based on ACMG/AMP guidelines for genomic variant classification and prioritization 1-gen-2022 Nicora, G.; Zucca, S.; Limongelli, I.; Bellazzi, R.; Magni, P.
Evaluating pointwise reliability of machine learning prediction 1-gen-2022 Nicora, G.; Rios, M.; Abu-Hanna, A.; Bellazzi, R.
Predicting emerging SARS-CoV-2 variants of concern through a One Class dynamic anomaly detection algorithm 1-gen-2022 Nicora, G.; Salemi, M.; Marini, S.; Bellazzi, R.
A machine learning approach for the detection of incidental findings in genetic testing 1-gen-2023 Berardelli, S.; De Paoli, F.; Nicora, G.; Limongelli, I.; Rizzo, E.; Magni, P.; Zucca, S.
A machine learning approach for the detection of incidental findings in genetic testing 1-gen-2023 Berardelli, S.; De Paoli, F.; Nicora, G.; Limongelli, I.; Rizzo, E.; Magni, P.; Zucca, S.
Mostrati risultati da 1 a 20 di 25
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