A deep learning model to detect the brain tumor based on magnetic resonance images

Deep learning techniques have been widely used in everything from analyzing medical information to tools for making medical diagnoses. One of the most feared diseases in modern medicine is a brain tumor. MRI is a radiological method that can be used to identify brain tumors. However, manual segmenta...

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Bibliographic Details
Main Authors: Kelvin Leonardi Kohsasih, Muhammad Dipo Agung Rizky, Rika Rosnelly, Willy Wira Widjaja
Format: Article
Language:Indonesian
Published: LPPM Institut Teknologi Telkom Purwokerto 2022-08-01
Series:Jurnal Infotel
Subjects:
Online Access:https://ejournal.st3telkom.ac.id/index.php/infotel/article/view/793
Description
Summary:Deep learning techniques have been widely used in everything from analyzing medical information to tools for making medical diagnoses. One of the most feared diseases in modern medicine is a brain tumor. MRI is a radiological method that can be used to identify brain tumors. However, manual segmentation and analysis of MRI images is time-consuming and can only be performed by a professional neuroradiologist. Therefore automatic recognition is required. This study propose a deep learning method based on a hybrid multi-layer perceptron model with Inception-v3 to predict brain tumors using MRI images. The research was conducted by building the Inception-v3 and multilayer perceptron model, and comparing it with the proposed model. The results showed that the hybrid multilayer perceptron model with inception-v3 achieved accuracy, recall, precision, and fi-score of 92%. While the inception-v3 and multilayer perceptron models only obtained 66% and 56% accuracy, respectively. This research shows that the proposed model successfully predicts brain tumors and improves performance
ISSN:2085-3688
2460-0997