Sfoglia per Autore
Training Deep Neural Networks for Small and Highly Heterogeneous MRI Datasets for Cancer Grading
2020 Wodzinski, M.; Banzato, T.; Atzori, M.; Andrearczyk, V.; Cid, Y. D.; Muller, H.
Correlation between renal histopathology and renal ultrasound in dogs.
2020 Burti, Silvia; Zotti, A.; Bonsembiante, F.; Mastellaro, G.; Banzato, T.
Contrast-enhanced ultrasonography features of hepatobiliary neoplasms in cats.
2020 Banzato, T.; Burti, Silvia; Rubini, G.; Orlandi, R.; Bargellini, P.; Bonsembiante, F.; Zotti, A
Contrast-enhanced ultrasound features of hepatocellular carcinoma in dogs
2020 Banzato, T.; Rubini, G.; Orlandi, R.; Bargellini, P.; Bonsembiante, F.; Zotti, A.
Accuracy of deep learning to differentiate the histopathological grading of meningiomas on MR images: a preliminary study
2019 Banzato, Tommaso; Causin, Francesco; Della Puppa, Alessandro; Cester, Giacomo; Mazzai, Linda; Zotti, Alessandro
A Frailty Index based on clinical data to quantify mortality risk in dogs
2019 Banzato, T.; Franzo, G.; Di Maggio, R.; Nicoletto, E.; Burti, S.; Cesari, M.; Canevelli, M.
Automated computation of femoral angles in dogs from three-dimensional computed tomography reconstructions: Comparison with manual techniques
2018 Longo, F.; Nicetto, T.; Banzato, T.; Savio, G.; Drigo, M.; Meneghello, R.; Concheri, G.; Isola, M.
Development of a deep convolutional neural network to predict grading of canine meningiomas from magnetic resonance images
2018 Banzato, Tommaso; Cherubini Giunio, Bruto; Atzori, Manfredo; Zotti, Alessandro
Repeatability and reproducibility of an automated 3D technique for the measurement of canine femoral angles
2018 Longo, Federico; Nicetto, Tommaso; Banzato, Tommaso; Savio, Gianpaolo; Concheri, Gianmaria; Isola, Maurizio
A methodological approach for deep learning to distinguish between meningiomas and gliomas on canine MR-images
2018 Banzato, Tommaso; Bernardini, Marco; Bruto Cherubini, Giunio; Zotti, Alessandro
Use of transfer learning to detect diffuse degenerative hepatic disease from ultrasound images in dogs: a methodological study
2018 Banzato, Tommaso; Bonsembiante, Federico; Aresu, Luca; Gelain, MARIA ELENA; Burti, Silvia; Zotti, Alessandro
Relationship of diagnostic accuracy of renal cortical echogenicity with renal histopathology in dogs and cats, a quantitative study
2017 Banzato, Tommaso; Bonsembiante, Federico; Aresu, Luca; Zotti, Alessandro
Estimation of fetal lung development using quantitative analysis of ultrasonographic images in normal canine pregnancy
2017 Banzato, Tommaso; Zovi, Giulia; Milani, Chiara
Texture analysis of MR images to determine histological grading of meningioma in dogs
2017 Banzato, Tommaso; Bernardini, Marco; CHERUBINI GIUNIO, Bruto; Zotti, Alessandro
Normal ultrasonographic reference values for the gastrointestinal tract in developing puppies.
2017 Banzato, Tommaso; Milani, Chiara; Zambello, E; Zotti, Alessandro
Texture analysis of B-mode ultrasound images to stage hepatic lipidosis in the dairy cow: A methodological study
2016 Banzato, Tommaso; Fiore, Enrico; Morgante, Massimo; Manuali, Elisabetta; Zotti, Alessandro
Normal computed tomographic features and reference values for the coelomic cavity in pet parrots
2016 Veladiano, IRENE ALESSANDRA; Banzato, Tommaso; Bellini, Luca; Montani, Alessandro; Catania, Salvatore; Zotti, Alessandro
Radiographic anatomy of dwarf rabbit abdomen with normal measurements
2016 BALIKCI DOROTEA, Sema; Banzato, Tommaso; Bellini, Luca; Contiero, Barbara; Zotti, Alessandro
Quantitative evaluation of lung and liver echogenicity to assess pulmonary development of the canine fetus and to predict parturition
2016 Milani, Chiara; Banzato, Tommaso; Zovi, Giulia; Romagnoli, Stefano
GnRH stimulation increases testicular blood flow in dogs
2016 Kunik, B; Banzato, Tommaso; Milani, Chiara; Ferré Dolcet, L; Mollo, Antonio; Romagnoli, Stefano
Legenda icone
- file ad accesso aperto
- file disponibili sulla rete interna
- file disponibili agli utenti autorizzati
- file disponibili solo agli amministratori
- file sotto embargo
- nessun file disponibile