From Images to Insights: Transforming Brain Cancer Diagnosis with Explainable AI
- URL: http://arxiv.org/abs/2501.05426v1
- Date: Thu, 09 Jan 2025 18:35:43 GMT
- Title: From Images to Insights: Transforming Brain Cancer Diagnosis with Explainable AI
- Authors: Md. Arafat Alam Khandaker, Ziyan Shirin Raha, Salehin Bin Iqbal, M. F. Mridha, Jungpil Shin,
- Abstract summary: This study conveys the Bangladesh Brain Cancer MRI dataset, containing 6,056 MRI images organized into three categories: Brain Tumor, Brain Glioma, and Brain Menin.
DenseNet169 achieved exceptional results, with accuracy, precision, recall, and F1-Score all reaching 0.9983.
- Score: 1.939732664561742
- License:
- Abstract: Brain cancer represents a major challenge in medical diagnostics, requisite precise and timely detection for effective treatment. Diagnosis initially relies on the proficiency of radiologists, which can cause difficulties and threats when the expertise is sparse. Despite the use of imaging resources, brain cancer remains often difficult, time-consuming, and vulnerable to intraclass variability. This study conveys the Bangladesh Brain Cancer MRI Dataset, containing 6,056 MRI images organized into three categories: Brain Tumor, Brain Glioma, and Brain Menin. The dataset was collected from several hospitals in Bangladesh, providing a diverse and realistic sample for research. We implemented advanced deep learning models, and DenseNet169 achieved exceptional results, with accuracy, precision, recall, and F1-Score all reaching 0.9983. In addition, Explainable AI (XAI) methods including GradCAM, GradCAM++, ScoreCAM, and LayerCAM were employed to provide visual representations of the decision-making processes of the models. In the context of brain cancer, these techniques highlight DenseNet169's potential to enhance diagnostic accuracy while simultaneously offering transparency, facilitating early diagnosis and better patient outcomes.
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