Deep Learning Unveils Hidden Insights: Advancing Brain Tumor Diagnosis

Author:

Kaushik PriyankaORCID

Abstract

Timely detection and treatment are crucial in managing brain tumors, a severe medical condition. MRI is a commonly used diagnostic tool to detect brain tumors. However, because of the complex structure of the brain and the wide range of tumors sizes and forms, MRI scan interpretation can be time-consuming and error-prone. The automated detection and segmentation of brain tumors has shown encouraging results with to recent developments in DL techniques. We suggest a CNN-RNNs and GANs based DL technique for brain tumor identification in this paper. Transfer learning and data augmentation techniques are used in the suggested method to train the CNN on a sizable dataset of MRI images labelled with tumor areas. The suggested strategy, according to experimental findings, is more accurate than the most advanced techniques now available for finding brain tumors. The suggested strategy has the potential to help radiologists identify brain tumors quickly and reliably, improving patient outcomes.  

Publisher

International Consortium of Academic Professionals for Scientific Research

Reference10 articles.

1. Farooq, H., Iqbal, N., & Aslam, N. (2019). Brain tumor detection and classification using convolutional neural network and Radon transform. Journal of Ambient Intelligence and Humanized Computing, 10(8), 3163-3176.

2. Jaffar, Z. A., Hussain, M., Ali, S., & Hussain, M. (2018). Brain tumor detection using recurrent neural networks. International Journal of Engineering & Technology, 7(4.5), 31-33.

3. Brain tumor segmentation with Deep Neural Networks

4. Kamnitsas, K., Ledig, C., Newcombe, V. F., Simpson, J. P., Kane, A. D., Menon, D. K., & Rueckert, D. (2018). Deep convolutional neural networks for the detection of brain tumors on MRI: A systematic review. NeuroImage: Clinical, 17, 892-902.

5. Soltaninejad, H., Yang, G., Lambrou, T., Allinson, N., Jones, T. L., Barrick, T. R., & Ye, X. (2018). A fully convolutional neural network for intracranial hemorrhage detection. Medical Image Analysis, 43, 122-134.

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