Deep learning driven interpretable and informed decision making model for brain tumour prediction using explainable AI.

Journal: Scientific reports
Published Date:

Abstract

Brain Tumours are highly complex, particularly when it comes to their initial and accurate diagnosis, as this determines patient prognosis. Conventional methods rely on MRI and CT scans and employ generic machine learning techniques, which are heavily dependent on feature extraction and require human intervention. These methods may fail in complex cases and do not produce human-interpretable results, making it difficult for clinicians to trust the model's predictions. Such limitations prolong the diagnostic process and can negatively impact the quality of treatment. The advent of deep learning has made it a powerful tool for complex image analysis tasks, such as detecting brain Tumours, by learning advanced patterns from images. However, deep learning models are often considered "black box" systems, where the reasoning behind predictions remains unclear. To address this issue, the present study applies Explainable AI (XAI) alongside deep learning for accurate and interpretable brain Tumour prediction. XAI enhances model interpretability by identifying key features such as Tumour size, location, and texture, which are crucial for clinicians. This helps build their confidence in the model and enables them to make better-informed decisions. In this research, a deep learning model integrated with XAI is proposed to develop an interpretable framework for brain Tumour prediction. The model is trained on an extensive dataset comprising imaging and clinical data and demonstrates high AUC while leveraging XAI for model explainability and feature selection. The study findings indicate that this approach improves predictive performance, achieving an accuracy of 92.98% and a miss rate of 7.02%. Additionally, interpretability tools such as LIME and Grad-CAM provide clinicians with a clearer understanding of the decision-making process, supporting diagnosis and treatment. This model represents a significant advancement in brain Tumour prediction, with the potential to enhance patient outcomes and contribute to the field of neuro-oncology.

Authors

  • Khan Muhammad Adnan
    Department of Software, Faculty of Artificial Intelligence and Software, Gachon University, Seongnam-si, 13557, Republic of Korea. adnan@gachon.ac.kr.
  • Taher M Ghazal
    Center for Cyber Security, Faculty of Information Science and Technology, University Kebangsaan Malaysia (UKM), 43600 Bangi, Selangor, Malaysia.
  • Muhammad Saleem
    AKSW, University of Leipzig, Leipzig, Germany.
  • Muhammad Sajid Farooq
    Department of Cyber Security, NASTP Institute of Information Technology, Lahore, 58810, Pakistan.
  • Chan Yeob Yeun
    Department of Electrical Engineering and Computer Science, Khalifa University of Science and Technology, Abu Dhabi 127788, United Arab Emirates.
  • Munir Ahmad
    School of Computer Science, National College of Business Administration & Economics, Lahore 54000, Pakistan.
  • Sang-Woong Lee
    National Research Center for Dementia, Gwangju, Republic of Korea.