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首页> 外文期刊>IEEE Transactions on Medical Imaging >A Novel Multiresolution-Statistical Texture Analysis Architecture: Radiomics-Aided Diagnosis of PDAC Based on Plain CT Images
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A Novel Multiresolution-Statistical Texture Analysis Architecture: Radiomics-Aided Diagnosis of PDAC Based on Plain CT Images

机译:一种新型多分辨率统计纹理分析架构:基于普通CT图像的PDAC辅助诊断

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摘要

Early screening of PDAC (pancreatic ductal adenocarcinoma) based on plain CT (computed tomography) images is of great significance. Therefore, this work conducted a radiomics-aided diagnosis analysis of PDAC based on plain CT images. We explored a novel MSTA (multiresolution-statistical texture analysis) architecture to extract texture features and built machine learning models to classify PDACs and HPs (healthy pancreases). We also performed significance tests of differences to analyze the relationships between histopathological characteristics and texture features. The MSTA architecture originates from the analysis of histopathological characteristics and combines multiresolution analysis and statistical analysis to extract texture features. The MSTA architecture achieved better experimental results than the traditional architecture that scales the coefficient matrices of the multiresolution analysis. In the validation of the classifications, the MSTA architecture achieved an accuracy of 81.19% and an AUC (area under the ROC (receiver operating characteristic) curve) of 0.88 (95% confidence interval: 0.84-0.92). In the test of the classifications, it achieved an accuracy of 77.66% and an AUC of 0.79 (95% confidence interval: 0.71-0.87). Moreover, the significance tests of differences showed that the extracted texture features may be relevant to the histopathological characteristics. The MSTA architecture is beneficial for the radiomics-aided diagnosis of PDAC based on plain CT images. Its texture features can potentially enhance radiologists' imaging interpretation abilities.
机译:基于普通CT(计算断层扫描)图像的PDAC(胰腺导管腺癌)的早期筛查具有重要意义。因此,这项工作对基于普通CT图像的PDAC进行了辐射诊断分析。我们探索了一种新的MSTA(多分辨率 - 统计纹理分析)架构,以提取纹理特征和内置的机器学习模型来分类PDAC和HPS(健康的胰腺)。我们还表现出差异的重要性,以分析组织病理特征和纹理特征之间的关系。 MSTA结构源自分析组织病理学特征,并结合了多分辨率分析和统计分析来提取纹理特征。 MSTA架构实现了比传统架构更好的实验结果,该架构规模了多分辨率分析的系数矩阵。在分类的验证中,MSTA架构实现了81.19%的准确性和AUC(ROC(接收器操作特性)曲线的AUC),为0.88(95%置信区间:0.84-0.92)。在分类的测试中,它达到了77.66%的准确性和0.79的AUC(95%置信区间:0.71-0.87)。此外,差异的重要性测试表明,提取的纹理特征可能与组织病理特征相关。 MSTA架构对基于普通CT图像的PDAC的辐射瘤辅助诊断有益。其纹理特征可能会提高放射科学家的成像解释能力。

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