首页> 外文会议>IEEE Nuclear Science Symposium;Medical Imaging Conference >A New Look at Gray-level Co-occurrence for Multi-scale Texture Descriptor with Applications to Characterize Colorectal Polyps via Computed Tomographic Colonography
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A New Look at Gray-level Co-occurrence for Multi-scale Texture Descriptor with Applications to Characterize Colorectal Polyps via Computed Tomographic Colonography

机译:多尺度纹理描述符的灰度共现的新外观及其通过计算机断层摄影结肠造影表征结直肠息肉的应用

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Characterizing colon polyps is clinically important but technically challenging. The gray-level co-occurrence matrix (GLCM)-based texture descriptor, proposed by Haralick et al., has shown the potential to relive the challenging. This study aims to increase the potential by exploring multiple-displacement GLCM descriptor (MDGLCM), multiple-stride GLCM descriptor (MSGLCM) and adaptive-sampling GLCM descriptor (ASGLCM). Both MDGLCM and MSGLCM use multiple step shifts to increase the texture information based on the Haralick model. ASGLCM investigates adaptive sampling on both direction and displacement for the purpose of increasing the texture patterns and minimizing the spatial variation and is the main contribution of this work. This method integrates the ranked texture descriptors via eliminating the redundant information to characterize 63 polyp masses, including 32 invasive adenocarcinoma and 31 benign adenomas. For comparison purpose, the texture descriptor from the Haralick model was implemented (in the same manner as the above presented texture descriptors) as baseline, which predicted the lesions by AUC (area under the curve of receiver operating characteristics) score of 0.8326 and standard deviation 0.0646. The ASGLCM improved the prediction power to 0.9023 with standard deviation 0.0362, and the improvement is statistically significant.
机译:表征结肠息肉在临床上很重要,但在技术上却具有挑战性。 Haralick等人提出的基于灰度共生矩阵(GLCM)的纹理描述符显示了重现挑战的潜力。本研究旨在通过探索多位移GLCM描述符(MDGLCM),多步GLCM描述符(MSGLCM)和自适应采样GLCM描述符(ASGLCM)来增加潜力。基于Haralick模型,MDGLCM和MSGLCM均使用多个步移来增加纹理信息。 ASGLCM研究了方向和位移的自适应采样,目的是增加纹理图案并最小化空间变化,这是这项工作的主要贡献。该方法通过消除冗余信息来整合排名的纹理描述符,以表征63个息肉肿块,包括32个浸润性腺癌和31个良性腺瘤。为了进行比较,采用Haralick模型的纹理描述符(以与上述纹理描述符相同的方式)作为基线,它通过AUC(接收器工作特性曲线下的面积)得分0.8326和标准偏差来预测病变。 0.0646。 ASGLCM将预测能力提高到0.9023,标准偏差为0.0362,该提高在统计上是显着的。

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