Classification of Brain Cancer using Artificial Neural Network

Dipali M. Joshi, N. Rana, Vishal Misra
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引用次数: 174

Abstract

A Brain Cancer Detection and Classification System has been designed and developed. The system uses computer based procedures to detect tumor blocks or lesions and classify the type of tumor using Artificial Neural Network in MRI images of different patients with Astrocytoma type of brain tumors. The image processing techniques such as histogram equalization, image segmentation, image enhancement, morphological operations and feature extraction have been developed for detection of the brain tumor in the MRI images of the cancer affected patients. The extraction of texture features in the detected tumor has been achieved by using Gray Level Co-occurrence Matrix (GLCM). These features are compared with the stored features in the Knowledge Base. Finally a Neuro Fuzzy Classifier has been developed to recognize different types of brain cancers. The whole system has been tested in two phases firstly Learning/Training Phase and secondly Recognition/Testing Phase. The known MRI images of affected brain cancer patients obtained from Radiology Department of Tata Memorial Hospital (TMH) were used to train the system. The unknown samples of brain cancer affected MRI images are also obtained from TMH and were used to test the system. The system was found efficient in classification of these samples and responds any abnormality.
人工神经网络在脑癌分类中的应用
设计并开发了脑癌检测与分类系统。该系统使用基于计算机的程序检测肿瘤块或病变,并使用人工神经网络对不同类型星形细胞瘤脑肿瘤患者的MRI图像进行肿瘤类型分类。直方图均衡化、图像分割、图像增强、形态学操作和特征提取等图像处理技术已发展到肿瘤患者MRI图像中脑肿瘤的检测。利用灰度共生矩阵(GLCM)实现了检测肿瘤的纹理特征提取。将这些特征与知识库中存储的特征进行比较。最后,开发了一种神经模糊分类器来识别不同类型的脑癌。整个系统经过了两个阶段的测试,首先是学习/训练阶段,其次是识别/测试阶段。从塔塔纪念医院(TMH)放射科获得的已知受影响脑癌患者的MRI图像用于训练系统。从TMH也获得了未知的脑癌影响的MRI图像样本,并用于测试该系统。结果表明,该系统能有效地对这些样本进行分类,并对异常情况做出反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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