2023
DOI: 10.1002/ima.23012
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Enhancing explainability in brain tumor detection: A novel DeepEBTDNet model with LIME on MRI images

Naeem Ullah,
Muhammad Hassan,
Javed Ali Khan
et al.

Abstract: Early detection of brain tumors is vital for improving patient survival rates, yet the manual analysis of the extensive 3D MRI images can be error‐prone and time‐consuming. This study introduces the Deep Explainable Brain Tumor Deep Network (DeepEBTDNet), a novel deep learning model for binary classification of brain MRIs as tumorous or normal. Employing sub‐image dualistic histogram equalization (DSIHE) for enhanced image quality, DeepEBTDNet utilizes 12 convolutional layers with leaky ReLU (LReLU) activation… Show more

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Cited by 4 publications
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