A deep transfer learning framework for multi class brain tumor classification using MRI
A deep transfer learning framework for multi class brain tumor classification using MRI
Recent researches proclaim that transfer learning on deep networks have performed deftly on medical diagnosis. The main intention of this work is to implement transfer learning on ResNet 50 for the classification of MR brain images to identify the type of tumors such as glioma, meningioma and pituitary. A pre-trained deep network -ResNet 50 extracts robust features and learns the structure of MR images in its convolutional layers. Then the fully connected (FC) layer of ResNet 50 is replaced with three new set of linear modules, two new set of Leaky Relu modules, two new set of dropout modules, and finally a softmax classification module to distinguish three tumor types. Thus the number of layers in ResNet 50 on transfer learning is increased from 174 to 181.This method is applied to a publically available Figshare MRI dataset, which consists of 3064 T1-weighted contrast-enhanced MR images from 233 patients with three disparate brain tumor types, which includes glioma, meningioma, and the pituitary tumors containing 1426, 708, and 930 images respectively. MR images in all the three planes such as axial, sagittal as well as coronal are incorporated in this dataset. The performance is evaluated by utilizing the five-fold cross-validation and the developed deep transfer learning framework obtained a maximum accuracy as 98.67% as compared to the state-of-art methods with hyperparameters such as dropout of 0.6, learning rate of 0.003 and optimizer as stochastic gradient descent.
Brain Tumor Classification, Deep Learning, Glioma, Meningioma, MRI, Pituitary, Resnet 50, Transfer Learning
Divya, S.
3ee4e63f-4f55-41da-80ae-18de34842645
Padma Suresh, L.
889c4801-773e-4d99-9638-f28436a99906
John, Ansamma
90d64164-ef20-4bc3-9f84-fd5d513a15b0
19 December 2020
Divya, S.
3ee4e63f-4f55-41da-80ae-18de34842645
Padma Suresh, L.
889c4801-773e-4d99-9638-f28436a99906
John, Ansamma
90d64164-ef20-4bc3-9f84-fd5d513a15b0
Divya, S., Padma Suresh, L. and John, Ansamma
(2020)
A deep transfer learning framework for multi class brain tumor classification using MRI.
Sharma, Vishnu, Srivastava, Ritesh and Singh, Manjeet
(eds.)
In Proceedings - IEEE 2020 2nd International Conference on Advances in Computing, Communication Control and Networking, ICACCCN 2020.
IEEE..
(doi:10.1109/ICACCCN51052.2020.9362908).
Record type:
Conference or Workshop Item
(Paper)
Abstract
Recent researches proclaim that transfer learning on deep networks have performed deftly on medical diagnosis. The main intention of this work is to implement transfer learning on ResNet 50 for the classification of MR brain images to identify the type of tumors such as glioma, meningioma and pituitary. A pre-trained deep network -ResNet 50 extracts robust features and learns the structure of MR images in its convolutional layers. Then the fully connected (FC) layer of ResNet 50 is replaced with three new set of linear modules, two new set of Leaky Relu modules, two new set of dropout modules, and finally a softmax classification module to distinguish three tumor types. Thus the number of layers in ResNet 50 on transfer learning is increased from 174 to 181.This method is applied to a publically available Figshare MRI dataset, which consists of 3064 T1-weighted contrast-enhanced MR images from 233 patients with three disparate brain tumor types, which includes glioma, meningioma, and the pituitary tumors containing 1426, 708, and 930 images respectively. MR images in all the three planes such as axial, sagittal as well as coronal are incorporated in this dataset. The performance is evaluated by utilizing the five-fold cross-validation and the developed deep transfer learning framework obtained a maximum accuracy as 98.67% as compared to the state-of-art methods with hyperparameters such as dropout of 0.6, learning rate of 0.003 and optimizer as stochastic gradient descent.
Text
A_Deep_Transfer_Learning_framework_for_Multi_Class_Brain_Tumor_Classification_using_MRI
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Published date: 19 December 2020
Venue - Dates:
2nd IEEE International Conference on Advances in Computing, Communication Control and Networking, ICACCCN 2020, , Greater Noida, India, 2020-12-18 - 2020-12-19
Keywords:
Brain Tumor Classification, Deep Learning, Glioma, Meningioma, MRI, Pituitary, Resnet 50, Transfer Learning
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Local EPrints ID: 500520
URI: http://eprints.soton.ac.uk/id/eprint/500520
PURE UUID: c0c169eb-4c79-4e91-af48-4002e5ca7890
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Date deposited: 02 May 2025 16:48
Last modified: 06 Jun 2025 02:13
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Contributors
Author:
S. Divya
Author:
L. Padma Suresh
Author:
Ansamma John
Editor:
Vishnu Sharma
Editor:
Ritesh Srivastava
Editor:
Manjeet Singh
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