Enhancing explainability in brain tumor detection: A novel DeepEBTDNet model with LIME on MRI images

Author:

Ullah Naeem1,Hassan Muhammad2ORCID,Khan Javed Ali3ORCID,Anwar Muhammad Shahid4,Aurangzeb Khursheed5

Affiliation:

1. University of Engineering and Technology Taxila Pakistan

2. University of Naples Federico II Naples Italy

3. Department of Computer Science, Faculty of Physics, Engineering, and Computer Science University of Hertfordshire Hatfield UK

4. Department of AI and Software, Gachon University Seongnam‐si South Korea

5. Department of Computer Engineering College of Computer and Information Sciences, King Saud University Riyadh Saudi Arabia

Abstract

AbstractEarly 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 for feature extraction, followed by a fully connected classification layer. Transparency and interpretability are emphasized through the application of the Local Interpretable Model‐Agnostic Explanations (LIME) method to explain model predictions. Results demonstrate DeepEBTDNet's efficacy in brain tumor detection, even across datasets, achieving a validation accuracy of 98.96% and testing accuracy of 94.0%. This study underscores the importance of explainable AI in healthcare, facilitating precise diagnoses and transparent decision‐making for early brain tumor identification and improved patient outcomes.

Funder

King Saud University

Publisher

Wiley

Subject

Electrical and Electronic Engineering,Computer Vision and Pattern Recognition,Software,Electronic, Optical and Magnetic Materials

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