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Systematic Construction of Texture Features for Hashimoto's Lymphocytic Thyroiditis Recognition from Sonographic Images

机译:从超声图像识别桥本淋巴甲状腺炎的纹理特征的系统构建

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The success of discrimination between normal and inflamed parenchyma of thyroid gland by means of automatic texture analysis is largely determined by selecting descriptive yet simple and independent sonographic image features. We replace the standard non-systematic process of feature selection by systematic feature construction based on the search for the separation distances among a clique of n pixels that minimise conditional entropy of class label given all data. The procedure is fairly general and does not require any assumptions about the form of the class probability density function. We show that a network of weak Bayes classifiers using 4-cliques as features and combined by majority vote achieves diagnosis recognition accuracy of 92%, as evaluated on a set of 741 B-mode sonographic images from 39 subjects. The results suggest the possibility to use this method in clinical diagnostic process.
机译:通过自动纹理分析来区分正常和发炎的甲状腺实质是否成功,很大程度上取决于选择描述性但简单且独立的超声图像特征。我们基于系统性特征构建来替换标准的非系统性特征选择过程,该系统性特征构建基于对n个像素群之间的分离距离的搜索,该距离将给定所有数据的类标签的条件熵最小化。该过程相当通用,不需要对类概率密度函数的形式进行任何假设。我们显示了一个弱的贝叶斯分类器网络,使用4-cliques作为特征并通过多数表决相结合,实现了92%的诊断识别准确率,这是对39个受试者的741个B模式超声图像进行评估的结果。结果表明可能在临床诊断过程中使用此方法。

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