SSRN Electronic Journal | 2021

A Deep Learning Based Dual Model Developed for Automated Detection of Glioma-brain Tumor

 
 

Abstract


Advances in machine learning (ML) and artificial intelligence (AI) are truly groundbreaking. We propose a fully automatic way to classify whether individuals contain lower-grade gliomas (brain tumors) using a deep-learning segmentation algorithm in this research paper. There are two deep-learning models in our paper. The first model detects whether the brain contains a tumor. The second model generalizes the tumor s location. In recent years, deep learning for automated brain segmentation has progressed to the level of success of a professional radiologist. Because of the class imbalance, we used the Tversky loss function. Experimental results show a better performance of the proposed model compared to the existing deep-learning models.

Volume None
Pages None
DOI 10.2139/ssrn.3869082
Language English
Journal SSRN Electronic Journal

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