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An enhanced pattern detection and segmentation of brain tumors in MRI images using deep learning technique

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posted on 2024-08-09, 05:33 authored by L Kiran, A Zeb, QNU Rehman, T Rahman, M Shehzad Khan, S Ahmad, M Irfan, M Naeem, Shamsul HudaShamsul Huda, H Mahmoud
Neuroscience is a swiftly progressing discipline that aims to unravel the intricate workings of the human brain and mind. Brain tumors, ranging from non-cancerous to malignant forms, pose a significant diagnostic challenge due to the presence of more than 100 distinct types. Effective treatment hinges on the precise detection and segmentation of these tumors early. We introduce a cutting-edge deep-learning approach employing a binary convolutional neural network (BCNN) to address this. This method is employed to segment the 10 most prevalent brain tumor types and is a significant improvement over current models restricted to only segmenting four types. Our methodology begins with acquiring MRI images, followed by a detailed preprocessing stage where images undergo binary conversion using an adaptive thresholding method and morphological operations. This prepares the data for the next step, which is segmentation. The segmentation identifies the tumor type and classifies it according to its grade (Grade I to Grade IV) and differentiates it from healthy brain tissue. We also curated a unique dataset comprising 6,600 brain MRI images specifically for this study. The overall performance achieved by our proposed model is 99.36%. The effectiveness of our model is underscored by its remarkable performance metrics, achieving 99.40% accuracy, 99.32% precision, 99.45% recall, and a 99.28% F-Measure in segmentation tasks.

History

Journal

Frontiers in Computational Neuroscience

Volume

18

Article number

ARTN 1418280

Pagination

1-17

Location

Lausanne, Switzerland

Open access

  • Yes

ISSN

1662-5188

eISSN

1662-5188

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Publisher

Frontiers Media