Abstract
Brain tumor is a deathly disease and it is indispensable to point out the tumor immediately. Detection of brain tumor from MRI with higher accuracy has become a major research region for the medical sector. In this paper, an automatic brain tumor classification procedure applying fuzzy C-means and artificial neural network is proposed which provides higher precision. For this proposed technique, inputted MRI images are resized and then sharpening filter is used for preprocessing. After that, fuzzy C-means cluster process is chosen for image segmentation. At the next step, discreate wavelet transform is utilized for feature extraction and then features quantity are reduced by principal component analysis. Furthermore, reduced features are taken to artificial neural network for brain tumor classification. An effective training function Levenberg–Marquardt is used for neural network. This proposed method provides 99.8% accuracy, 100% sensitivity and 99.59% specificity which is comparatively better than other existing detection techniques.
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References
Brain Tumor (2020) American Society of Clinical Oncology (ASCO) Publication
Brain Cancer Types (2020) Cancer Treatment Centers of America
Gliomas (2020) Johns Hopkins Medicine
Mustafa R, Ikhlas A (2018) Brain tumor classification via statistical features and back-propagation neural network. IEEE Xplore
Gopal N, Karnan S (2011) Diagnose brain tumor through MRI using image processing clustering such as FCM along with intelligent optimization techniques. In: International conference on intelligence and computing research. IEEE Xplore, pp 112–116
Dipali J, Rana S, Misra T (2010) Classification of brain cancer using ANN. In: 2nd international conference on electronic technology (ICECT 2010). IEEE, pp 112–116
Heena Hooda F, Om Verma S, Tripti T (2014) Brain tumor segmentation: a performance analysis using K-Means, FCM and region growing algorithm. In: International conference on communication and computing technologies (ICACCCT). IEEE, pp 1621–1626
Parveen F, Amritpal S (2015) Detection of brain tumor in MRI images, using combination of FCM and SVM. In: 2nd international conference on signal processing and integrated networks (SPIN). IEEE, pp 98–102
Malathi MF, Sinthia P (2020) MRI brain tumor segmentation using hybrid clustering and classification by BPNN. Asian Pac J Cancer Prev 19
Rasel A, Md Foisal H (2016) Tumor detection in brain MRI image using template based K-means and fuzzy C-means clustering algorithm. In: 2016 international conference on computer communication and informatics (ICCCI-2016). IEEE
Preetha R, Suresh FG (2014) Performance analysis of FCM in automated detection of brain tumor. In: World congress on computing and technologies. IEEE, pp 30–33
Shasidhar MF, Raja SSV, Kumar BVT (2011) MRI brain image segmentation using modified fuzzy C-means clustering algorithm. In: 2011 international conference on communication systems and network technologies. IEEE, pp 473–478
Brundha BF, Nagendra MS (2015) MR image segmentation of brain to detect brain tumor and its area calculation using K-means clustering and fuzzy C-means algorithm. Int J Technol Res Eng 2(9)
Zhang Y, Wu LS (2012) An MR brain images classifier via principal component analysis and SVM. Prog Electromagnet Res 130:369–388
Deepak S, Ameer PM (2019) Brain tumor classification using deep CNN features via transfer learning. Comput Biol Med 111
Brain tumor dataset into figshare (2017) https://figshare.com/articles/brain_tumor_dataset/1512427
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Biswas, A., Islam, M.S. (2022). MRI Brain Tumor Classification Technique Using Fuzzy C-Means Clustering and Artificial Neural Network. In: Ibrahim, R., K. Porkumaran, Kannan, R., Mohd Nor, N., S. Prabakar (eds) International Conference on Artificial Intelligence for Smart Community. Lecture Notes in Electrical Engineering, vol 758. Springer, Singapore. https://doi.org/10.1007/978-981-16-2183-3_95
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DOI: https://doi.org/10.1007/978-981-16-2183-3_95
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