Wavelet based texture analysis of Liver tumor from Computed Tomography images for characterization using Linear Vector Quantization Neural Network

K. Mala, Dr. V. Sadasivam
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引用次数: 28

Abstract

The use of medical imaging and tissue characterization techniques is popular in diagnosis, treatment and research. The objective of this work is to automatically extract the liver tumor from the liver region of the CT abdominal image and to characterize the liver tumor as benign or malignant using wavelet based texture analysis and Linear Vector Quantization (LVQ) neural network. The system is tested with 100 images. The accuracy obtained is 92%. Performance of the system for the different parameters of LVQ like learning rate, number of hidden neurons and the number of epochs are analyzed. To evaluate the performance of the system, parameters like sensitivity, specificity, positive predicting value and negative predicting value are calculated. The results are evaluated with radiologists.
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基于小波的肝肿瘤图像纹理分析及线性矢量量化神经网络表征
医学成像和组织表征技术的使用在诊断、治疗和研究中很受欢迎。本工作的目的是利用基于小波的纹理分析和线性向量量化(LVQ)神经网络,从腹部CT图像的肝脏区域自动提取肝脏肿瘤,并对肝脏肿瘤进行良性或恶性的表征。该系统用100张图片进行了测试。准确度为92%。分析了不同LVQ参数(学习率、隐藏神经元数和epoch数)对系统性能的影响。为了评价系统的性能,计算了灵敏度、特异度、正预测值和负预测值等参数。结果由放射科医生评估。
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