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Histogram-based adaptive gray level scaling for texture feature classification of colorectal polyps

机译:基于直方图的纹理特征分类的基于直方图的自适应灰度缩放

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Texture features have played an ever increasing role in computer aided detection (CADe) and diagnosis (CADx) methods since their inception. Texture features are often used as a method of false positive reduction for CADe packages, especially for detecting colorectal polyps and distinguishing them from falsely tagged residual stool and healthy colon wall folds. While texture features have shown great success there, the performance of texture features for CADx have lagged behind primarily because of the more similar features among different polyps types. In this paper, we present an adaptive gray level scaling and compare it to the conventional equal-spacing of gray level bins. We use a dataset taken from computed tomography colonography patients, with 392 polyp regions of interest (ROIs) identified and have a confirmed diagnosis through pathology. Using the histogram information from the entire ROI dataset, we generate the gray level bins such that each bin contains roughly the same number of voxels Each image ROI is the scaled down to two different numbers of gray levels, using both an equal spacing of Hounsfield units for each bin, and our adaptive method. We compute a set of texture features from the scaled images including 30 gray level co-occurrence matrix (GLCM) features and 11 gray level run length matrix (GLRLM) features. Using a random forest classifier to distinguish between hyperplastic polyps and all others (adenomas and adenocarcinomas), we find that the adaptive gray level scaling can improve performance based on the area under the receiver operating characteristic curve by up to 4.6%.
机译:自成立以来,纹理特征在计算机辅助检测(CADE)和诊断(CADX)方法中发挥了不断增加的作用。纹理特征通常用作CADE包的假正减少的方法,特别是用于检测结直肠息肉并将它们区分离出虚假标记的残留粪便和健康的结肠壁折叠。虽然纹理功能在那里取得了巨大成功,但CADX的纹理特征的性能主要是由于不同息肉类型中的更类似的特征。在本文中,我们介绍了一个自适应灰度级缩放,并将其与灰度箱的传统等间距进行比较。我们使用从计算机断层扫描结肠摄影患者采取的数据集,鉴定了392名息肉(ROI)的息肉(ROI),并通过病理学进行了确认的诊断。使用来自整个ROI数据集的直方图信息,我们生成灰度级别,使得每个箱子含有大致相同的体素数量,每个图像ROI都是缩放到两个不同数量的灰度级,使用Hounsfield单元的等间距。对于每个垃圾箱,以及我们的自适应方法。我们计算来自缩放图像的一组纹理特征,包括30个灰度共发生矩阵(GLCM)功能和11个灰度级运行长度矩阵(GLRLM)功能。使用随机森林分类器区分增生息肉和所有其他(腺瘤和腺癌),我们发现自适应灰度级缩放可以根据接收器下的区域,操作特性曲线下的区域提高高达4.6%。

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