Mohammed-Amine ZyadMohamed GouskirBelaid Bouikhalene
Deep learning methods gained a huge popularity in segmentation and classification of medical imaging.In this paper we propose a Convolutional Neural Network (CNN) approach which is one of the top performing methods while also being extremely computationally efficient, a balance that existing methods have struggled to achieve, we use this method as a process for segmenting brain tumor regions from magnetic resonance imaging (MRI) using CNNs.The main task for this method is using a public dataset containing 3,064 T1-weighted contrast enhanced MRI (CE-MRI) with different abnormalities from different planes.This novel method of training neural networks on this dataset has proved to be efficient than well-known methods.
Liliam LealFrancisco das Chagas Alves LimaRicardo A. L. RabêloMarcelo Jânio Araújo Moraes
Agus Eko MinarnoAnisa Nur RahmawatiDidih Rizki Chandranegara
Rafael Martínez-Del-Río-OrtegaJavier Civit-MasotFrancisco Luna-PerejónManuel Domínguez-Morales
Nihal RemzanKarim TahiryAbdelmajid Farchi