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Home / Archives / Volume-6 / Issue-2 / Article-4

Volume - 6 | Issue - 2 | june 2024

FCM and CBAC based Brain Tumor Identification and Segmentation
K. Nagalakshmi  , R. Maheswari, T. C. Jaanu Priya, J. Francy Therese, M. Devi Durga
Pages: 155-168
Cite this article
Nagalakshmi, K., R. Maheswari, T. C. Jaanu Priya, J. Francy Therese, and M. Devi Durga. "FCM and CBAC based Brain Tumor Identification and Segmentation." Journal of Soft Computing Paradigm 6, no. 2 (2024): 155-168
Published
08 June, 2024
Abstract

A brain tumor are an abnormal growth of cells within the brain, forming a mass that can be either cancerous (malignant) or non-cancerous (benign). Despite their differences, both types of tumors can pose serious health risks. As these tumors grow, they can increase intracranial pressure, leading to potential brain damage. This increased pressure can result in various symptoms such as headaches, seizures, vision problems, and changes in cognitive function. The potential for life-threatening consequences makes early detection and treatment crucial. The objective of the research is to develop a system or algorithm capable of accurately identifying the presence of brain tumors within medical imaging data (CT or MRI scans) and subsequently segmenting the tumor regions from the surrounding healthy brain tissue. This research aims at building an automated multi stage reliable system for classifying MRI images as tumor or non-tumor images. However, the research aims to diagnose brain tumor by extracting the tumor region accurately. The main contribution of this work is to automatically segment the tumor region from the MRI brain images, using Fuzzy C-Means (FCM) Clustering and the Content-Based Active Contour (CBAC) method. The CBAC method helps to resolve the issues of saddle points and broken edges in the extracted tumor region.

Keywords

CBAC FCM MRI Images Segmentation Classification

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