基于反向传播神经网络的脑肿瘤检测

Iklas Sanubary
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引用次数: 1

摘要

利用灰度共生矩阵(GLCM)特征提取的反向传播神经网络进行了脑肿瘤检测研究。脑ct扫描图像由12张正常和13张异常(肿瘤)脑图像组成。预处理阶段首先将图像裁剪为256 x 256像素的图像,然后将彩色图像转换为灰度图像,并均衡直方图以提高图像质量。GLCM用于计算每个方向上由对比度、相关性、能量和均匀性5个参数决定的统计特征。在这些反向传播神经网络中,使用了[12 21]架构。训练数据的目标与输出的相关系数为0.999,测试数据的相关系数为0.959,准确率为70%。研究结果表明,反向传播神经网络可以用于脑肿瘤的检测。
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BRAIN TUMOR DETECTION USING BACKPROPAGATION NEURAL NETWORKS
A study of brain tumor detection has been done by making use of backpropagation neural networks with Gray Level Co-Occurrence Matrix (GLCM) feature extraction. CT-Scan images of the brain consist of 12 normal and 13 abnormal (tumor) brain images are analyzed. The preprocessing stage begins with cropping the image to a 256 x 256 pixels picture, then converting the colored images into grayscale images, and equalizing the histogram to improve the quality of the images. GLCM is used to calculate statistical features determined by 5 parameters i.e., contrast, correlation, energy and homogeneity for each direction. In these backpropagation neural networks, the [12 2 1] architecture is used. The correlation coefficient between the target and the output for the training data is 0.999, while the correlation coefficient for the testing data is 0.959 with an accuracy of 70%. The results of this research indicate that backpropagation neural networks can be used for the detection of brain tumors.
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