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Detection of liver metastisis using the backpropagation algorithm and linear discriminant analysis

机译:使用反向化算法和线性判别分析检测肝脏转移

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The purpose of this study was to compare the classification capabilities of the backpropagation algorithm and linear discriminant analysis for detecting liver metastisis using image texture features obtained from ultrasonic images of the liver. Twenty-one quantitative parameters were obtained from 134 regions of interest of equal size. The images were collected by the same radiologist on the same imager with the controls adjusted for variations in patient body size so as to produce images of consistent quality. Quantitative features were divided so that 13 were first-order statistics, 6 were second-order statistics, and 2 were image gradient parameters. The same features were processed by both the backpropagation algorithm and linear discriminant analysis using `jack-knife' testing and the results of each computer- generated classification was compared to the supplied diagnosis in an effort to determine which method could best identify patterns. For this particular application, the backpropagation neural network was found to have slightly superior classification results (87%) than linear discriminant analysis (83%).
机译:本研究的目的是比较反向衰减算法的分类能力和使用从肝脏超声图像获得的图像纹理特征来检测肝脏转移的线性判别分析。从134个相同的兴趣区域获得了二十一度的定量参数。通过对同一成像器的相同放射科医师收集图像,该控制器调节患者体尺寸的变化,以产生一致质量的图像。定量特征划分,使得13是一阶统计,6是二阶统计,2是图像梯度参数。通过使用“杰克刀”测试的反向化算法和线性判别分析处理相同的特征,并将每个计算机生成的分类的结果与提供的诊断进行比较,以确定哪种方法最好识别模式。对于该特定应用,发现睾丸衰减神经网络具有略高的分类结果(87%),而不是线性判别分析(83%)。

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