| Literature DB >> 32959422 |
Amjad Rehman1, Muhammad Attique Khan2, Tanzila Saba1, Zahid Mehmood3, Usman Tariq4, Noor Ayesha5.
Abstract
Brain tumor is one of the most dreadful natures of cancer and caused a huge number of deaths among kids and adults from the past few years. According to WHO standard, the 700,000 humans are being with a brain tumor and around 86,000 are diagnosed since 2019. While the total number of deaths due to brain tumors is 16,830 since 2019 and the average survival rate is 35%. Therefore, automated techniques are needed to grade brain tumors precisely from MRI scans. In this work, a new deep learning-based method is proposed for microscopic brain tumor detection and tumor type classification. A 3D convolutional neural network (CNN) architecture is designed at the first step to extract brain tumor and extracted tumors are passed to a pretrained CNN model for feature extraction. The extracted features are transferred to the correlation-based selection method and as the output, the best features are selected. These selected features are validated through feed-forward neural network for final classification. Three BraTS datasets 2015, 2017, and 2018 are utilized for experiments, validation, and accomplished an accuracy of 98.32, 96.97, and 92.67%, respectively. A comparison with existing techniques shows the proposed design yields comparable accuracy.Entities:
Keywords: 3D CNN; World Health Organization (WHO); cancer; healthcare; public health
Year: 2020 PMID: 32959422 DOI: 10.1002/jemt.23597
Source DB: PubMed Journal: Microsc Res Tech ISSN: 1059-910X Impact factor: 2.769