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首页> 外文期刊>Abdominal radiology. >Computed tomography-based texture analysis of bladder cancer: differentiating urothelial carcinoma from micropapillary carcinoma
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Computed tomography-based texture analysis of bladder cancer: differentiating urothelial carcinoma from micropapillary carcinoma

机译:基于结构的膀胱癌纹理分析:鉴别微小癌尿液癌的尿路上皮癌

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Purpose: The purpose of the study is to determine the feasibility of using computed tomography-based texture analysis (CTTA) in differentiating between urothelial carcinomas (UC) of the bladder from micropapillary carcinomas (MPC) of the bladder. Methods: Regions of interests (ROIs) of computerized tomography (CT) images of 33 MPCs and 33 UCs were manually segmented and saved. Custom MATLAB code was used to extract voxel information corresponding to the ROI. The segmented tumors were input to a preexisting radiomics platform with a CTTA panel. A total of 58 texture metrics were extracted using four different texture extraction techniques and statistically analyzed using a Wilcoxon rank-sum test to determine the differences between UCs and MPCs. Results: Of the 58 texture metrics extracted using the gray level co-occurrence matrix (GLCM) and gray level difference matrix (GLDM), 28 texture metrics were statistically significant (p < 0.05) for differences in tumor textures and 27 texture metrics were statistically significant (p < 0.05) for peritumoral fat textures. The remaining nine metrics extracted using histogram and fast Fourier transform analyses did not show significant differences between the textures of the tumors and their peritumoral fat. Conclusions: CTTA shows that MPC have a more heterogeneous texture compared to UC. As visual discrimination of MPC from UC from clinical CT scans are difficult, results from this study suggest that tumor heterogeneity extracted using GLCM and GLDM may be a good imaging aid in segregating MPC from UC. This tool can aid clinicians in further sub-classifying bladder cancers on routine imaging, a process which has potential to alter treatment and patient care.
机译:目的:该研究的目的是确定使用计算断层摄影的纹理分析(CTTA)在膀胱细胞癌(MPC)的膀胱尿路上癌(UC)之间的尿路上皮癌(UC)之间的可行性。方法:手动分割和保存计算机断层扫描(CT)图像的兴趣区(CT)图像和33个UCS的图像。自定义MATLAB代码用于提取与ROI对应的体素信息。将分段的肿瘤用CTTA面板输入到预先存在的射线瘤平台上。使用四种不同的纹理提取技术提取共58个纹理度量,并使用Wilcoxon Rank-Sum测试进行统计分析以确定UCS和MPC的差异。结果:使用灰度共发生矩阵(GLCM)提取的58个纹理指标和灰度差矩阵(GLDM),28个纹理度量差异(P <0.05),肿瘤纹理的差异和27个纹理度量在统计上对于Peritumoral脂肪纹理显着(p <0.05)。利用直方图和快速傅立叶变换分析提取的剩余九个度量没有显示肿瘤纹理与其腹部脂肪之间的显着差异。结论:CTTA表明,与UC相比,MPC具有更加异质的质地。由于来自临床CT扫描来自UC的MPC的视觉鉴别是困难的,因此来自该研究的结果表明使用GLCM和GLDM提取的肿瘤异质性可以是来自UC的偏析MPC的良好成像助剂。该工具可以帮助临床医生在常规成像上进一步分类膀胱癌,这是一种有可能改变治疗和患者护理的过程。

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