4.5 Article

Brain tumour classification using siamese neural network and neighbourhood analysis in embedded feature space

Journal

Publisher

WILEY
DOI: 10.1002/ima.22543

Keywords

brain tumour; classification; Mahalanobis distance; neighbourhood; Siamese networks

Ask authors/readers for more resources

The study focuses on developing accurate models for brain tumour classification using a siamese neural network trained effectively on a smaller number of data samples. The SNN features extracted from brain MRI images are found to be more effective than hand-designed features and deep transfer learned features, demonstrating high classification accuracy on cross-validation.
The application of deep transfer learning techniques has been successful in developing accurate systems for brain tumour classification on large-scale medical image databases. For small databases, feature learning by deep neural networks is not robust. The systems based on domain-specific hand-crafted features have limited accuracy. In this paper, the authors focus on developing accurate models that could be trained effectively using a smaller number of data samples. A siamese neural network (SNN) is designed to extract features from brain magnetic resonance imaging (MRI) images. The SNN is realised using a 3-layer, fully connected neural network. The designed SNN has lesser complexity and fewer parameters than deep transfer-learned convolutional neural networks (CNN). A nearest neighbourhood analysis, using Euclidean and Mahalanobis distances, is conducted on the SNN encoded feature space. The encoded feature space is two dimensional, such that the neighbourhood analysis is computationally less intensive. For the neighbourhood analysis, a k-nearest neighbour (k-NN) model is utilised. The proposed method is evaluated using three publicly available datasets, namely, Radiopaedia, Harvard and Figshare repositories. The respective classification accuracy on cross-validation is 92.6%, 98.5% and 92.6%. Other metrics used for the performance evaluation include F-score, Specificity and balanced accuracy. The underlying network architecture and the design choice of network layers allow the implementation of the SNN in environments with low computational resources. The SNN features are found to be more effective than the hand-designed features, and the deep transfer learned features for the stated problem.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.5
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available