4.0 Article

Automatic Human Brain Tumor Detection in MRI Image Using Template-Based K Means and Improved Fuzzy C Means Clustering Algorithm

期刊

BIG DATA AND COGNITIVE COMPUTING
卷 3, 期 2, 页码 -

出版社

MDPI
DOI: 10.3390/bdcc3020027

关键词

magnetic resonance imaging; T-means clustering; fuzzy C-means clustering; template-based K-means and modified fuzzy C-means (TKFCM); feature extraction; gray level intensity

资金

  1. Department of Information and Communication Engineering (ICE), Islamic University, Kushtia, Bangladesh

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In recent decades, human brain tumor detection has become one of the most challenging issues in medical science. In this paper, we propose a model that includes the template-based K means and improved fuzzy C means (TKFCM) algorithm for detecting human brain tumors in a magnetic resonance imaging (MRI) image. In this proposed algorithm, firstly, the template-based K-means algorithm is used to initialize segmentation significantly through the perfect selection of a template, based on gray-level intensity of image; secondly, the updated membership is determined by the distances from cluster centroid to cluster data points using the fuzzy C-means (FCM) algorithm while it contacts its best result, and finally, the improved FCM clustering algorithm is used for detecting tumor position by updating membership function that is obtained based on the different features of tumor image including Contrast, Energy, Dissimilarity, Homogeneity, Entropy, and Correlation. Simulation results show that the proposed algorithm achieves better detection of abnormal and normal tissues in the human brain under small detachment of gray-level intensity. In addition, this algorithm detects human brain tumors within a very short time-in seconds compared to minutes with other algorithms.

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