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首页> 外文期刊>Advances in Science, Technology and Engineering Systems >An Advanced Algorithm Combining SVM and ANN Classifiers to Categorize Tumor with Position from Brain MRI Images
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An Advanced Algorithm Combining SVM and ANN Classifiers to Categorize Tumor with Position from Brain MRI Images

机译:结合SVM和ANN分类器的高级算法,可根据脑MRI图像的位置对肿瘤进行分类

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Brain tumor is such an abnormality of brain tissue that causes brain hemorrhage. Therefore, apposite detections of brain tumor, its size, and position are the foremost condition for the remedy. To obtain better performance in brain tumor and its stages detection as well as its position in MRI images, this research work proposes an advanced hybrid algorithm combining statistical procedures and machine learning based system Support Vector Machine (SVM) and Artificial Neural Network (ANN). This proposal is initiated with the enhancement of the brain MRI images which are obtained from oncology department of University of Maryland Medical Center. An improved version of conventional K-means with Fuzzy C-means algorithm and temper based K-means & modified Fuzzy C-means (TKFCM) clustering are used to segment the MRI images. The value of K in the proposed method is more than the conventional K-means. Automatically updated membership of FCM eradicates the contouring problem in detection of tumor region. The set of statistical features obtained from the segmented images are used to detect and isolate tumor from normal brain MRI images by SVM. There is a second set of region based features extracted from segmented images those are used to classify the tumors into benign and four stages of the malignant tumor by ANN. Besides, the classified tumor images provide a feature like orientation that ensures exact tumor position in brain lobe. The classifying accuracy of the proposed method is up to 97.37% with Bit Error Rate (BER) of 0.0294 within 2 minutes which proves the proposal better than the others.
机译:脑瘤是导致脑出血的脑组织异常。因此,适当检测脑肿瘤,其大小和位置是治疗的首要条件。为了在脑肿瘤及其阶段检测以及在MRI图像中的位置中获得更好的性能,这项研究工作提出了一种先进的混合算法,将统计程序与基于机器学习的系统支持向量机(SVM)和人工神经网络(ANN)相结合。该建议是通过增强从马里兰大学医学中心的肿瘤科获得的脑部MRI图像而启动的。使用具有模糊C均值算法的常规K均值的改进版本以及基于脾气的K均值和改进的模糊C均值(TKFCM)聚类来分割MRI图像。所提出的方法中的K值比传统的K均值更大。自动更新的FCM成员资格消除了检测肿瘤区域中的轮廓问题。从分割图像中获得的一组统计特征用于通过SVM从正常脑MRI图像中检测和分离肿瘤。从分割图像中提取出第二组基于区域的特征,这些特征用于通过ANN将肿瘤分为良性和恶性四个阶段。此外,分类的肿瘤图像提供了类似方向的功能,可确保肿瘤在脑叶中的准确位置。所提方法的分类准确率在2分钟内高达97.37%,误码率(BER)为0.0294,证明了该方法优于其他方法。

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