TY - JOUR
T1 - Detection of brain tumour using machine learning based framework by classifying MRI images
AU - Nancy, P.
AU - Murugesan, G.
AU - Zamani, Abu Sarwar
AU - Kaliyaperumal, Karthikeyan
AU - Jawarneh, Malik
AU - Shukla, Surendra Kumar
AU - Ray, Samrat
AU - Raghuvanshi, Abhishek
N1 - Publisher Copyright:
Copyright © 2023 Inderscience Enterprises Ltd.
PY - 2023
Y1 - 2023
N2 - The fatality rate has risen in recent years due to an increase in the number of encephaloma tumours in each age group. Because of the complicated structure of tumours and the involution of noise in magnetic resonance (MR) imaging data, physical identification of tumours becomes a difficult and time-consuming operation for medical practitioners. As a result, recognising and locating the tumour’s location at an early stage is crucial. Cancer tumour areas at various levels may be followed and prognosticated using medical scans, which can be utilised in concert with segmentation and relegation techniques to provide a correct diagnosis at an early time. This paper aims to develop image processing and machine learning based framework for early and accurate detection of brain tumour. This framework includes image preprocessing, image segmentation, feature extraction, and classification using the support vector machine (SVM), K-nearest neighbour (KNN), and Naïve Bayes algorithms. Image preprocessing is performed using Gaussian Elimination, image enhancement using histogram equalisation, image segmentation using k-means and feature extraction performed using PCA algorithm. For performance comparison, parameters like: accuracy, sensitivity and specificity are used. Experimental results have shown that the KNN is getting better accuracy for classification of brain tumour related images. KNN is performing admirably in terms of accuracy. In terms of specificity, both SVM and KNN perform similarly well. KNN outperforms other algorithms in terms of sensitivity. Accuracy of KNN classifier is around 98% in brain tumour image classification.
AB - The fatality rate has risen in recent years due to an increase in the number of encephaloma tumours in each age group. Because of the complicated structure of tumours and the involution of noise in magnetic resonance (MR) imaging data, physical identification of tumours becomes a difficult and time-consuming operation for medical practitioners. As a result, recognising and locating the tumour’s location at an early stage is crucial. Cancer tumour areas at various levels may be followed and prognosticated using medical scans, which can be utilised in concert with segmentation and relegation techniques to provide a correct diagnosis at an early time. This paper aims to develop image processing and machine learning based framework for early and accurate detection of brain tumour. This framework includes image preprocessing, image segmentation, feature extraction, and classification using the support vector machine (SVM), K-nearest neighbour (KNN), and Naïve Bayes algorithms. Image preprocessing is performed using Gaussian Elimination, image enhancement using histogram equalisation, image segmentation using k-means and feature extraction performed using PCA algorithm. For performance comparison, parameters like: accuracy, sensitivity and specificity are used. Experimental results have shown that the KNN is getting better accuracy for classification of brain tumour related images. KNN is performing admirably in terms of accuracy. In terms of specificity, both SVM and KNN perform similarly well. KNN outperforms other algorithms in terms of sensitivity. Accuracy of KNN classifier is around 98% in brain tumour image classification.
KW - accuracy
KW - brain tumour detection
KW - feature extraction
KW - Gaussian elimination
KW - image classification
KW - image segmentation
KW - K-means
KW - K-nearest neighbour
KW - KNN
KW - machine learning
KW - MRI images
KW - support vector machine
KW - SVM
UR - https://www.scopus.com/pages/publications/85174291659
U2 - 10.1504/IJNT.2023.134040
DO - 10.1504/IJNT.2023.134040
M3 - Article
AN - SCOPUS:85174291659
SN - 1475-7435
VL - 20
SP - 880
EP - 896
JO - International Journal of Nanotechnology
JF - International Journal of Nanotechnology
IS - 5-10
ER -