FAO AGRIS - International System for Agricultural Science and Technology

Potencial do machine learning como preditor da classificação PI-RADS™ v2.1

2023

Azevedo, Inês Alexandra Antunes de | De Francesco, Silvia | Carramate, Lara Filipa das Neves Dias


Bibliographic information
Other Subjects
Pi-rads™; Características radiómicas; Ressonância magnética multiparamétrica
Language
Portuguese
License
openAccess, https://creativecommons.org/licenses/by/4.0/
Type
Master Thesis; Thesis

2024-11-29
2025-10-25
Dublin Core
Data Provider
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