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基于 MRI 的强度和高阶导数图的三维纹理特征,用于区分膀胱肿瘤和壁组织。

Three-dimensional texture features from intensity and high-order derivative maps for the discrimination between bladder tumors and wall tissues via MRI.

机构信息

School of Biomedical Engineering, Fourth Military Medical University, Xi'an, 710032, China.

Department of Radiology, Tangdu Hospital, Fourth Military Medical University, Xi'an, 710038, China.

出版信息

Int J Comput Assist Radiol Surg. 2017 Apr;12(4):645-656. doi: 10.1007/s11548-017-1522-8. Epub 2017 Jan 21.

Abstract

PURPOSE

This study aims to determine the three-dimensional (3D) texture features extracted from intensity and high-order derivative maps that could reflect textural differences between bladder tumors and wall tissues, and propose a noninvasive, image-based strategy for bladder tumor differentiation preoperatively.

METHODS

A total of 62 cancerous and 62 wall volumes of interest (VOI) were extracted from T2-weighted MRI datasets of 62 patients with pathologically confirmed bladder cancer. To better reflect heterogeneous distribution of tumor tissues, 3D high-order derivative maps (the gradient and curvature maps) were calculated from each VOI. Then 3D Haralick features based on intensity and high-order derivative maps and Tamura features based on intensity maps were extracted from each VOI. Statistical analysis and recursive feature elimination-based support vector machine classifier (RFE-SVM) was proposed to first select the features with significant differences and then obtain a more predictive and compact feature subset to verify its differentiation performance.

RESULTS

From each VOI, a total of 58 texture features were derived. Among them, 37 features showed significant inter-class differences ([Formula: see text]). With 29 optimal features selected by RFE-SVM, the classification results namely the sensitivity, specificity, accuracy and area under the curve (AUC) of the receiver operating characteristics were 0.9032, 0.8548, 0.8790 and 0.9045, respectively. By using synthetic minority oversampling technique to augment the sample number of each group to 200, the sensitivity, specificity, accuracy an AUC value of the feature selection-based classification were improved to 0.8967, 0.8780, 0.8874 and 0.9416, respectively.

CONCLUSIONS

Our results suggest that 3D texture features derived from intensity and high-order derivative maps can better reflect heterogeneous distribution of cancerous tissues. Texture features optimally selected together with sample augmentation could improve the performance on differentiating bladder carcinomas from wall tissues, suggesting a potential way for tumor noninvasive staging of bladder cancer preoperatively.

摘要

目的

本研究旨在确定从强度和高阶导数图中提取的三维(3D)纹理特征,这些特征可反映膀胱肿瘤与壁组织之间的纹理差异,并提出一种基于图像的非侵入性膀胱肿瘤术前鉴别策略。

方法

从 62 例经病理证实的膀胱癌患者的 T2 加权 MRI 数据集提取 62 个癌性和 62 个壁感兴趣区(VOI)。为了更好地反映肿瘤组织的不均匀分布,从每个 VOI 计算三维高阶导数图(梯度和曲率图)。然后,从每个 VOI 提取基于强度和高阶导数图的 3D Haralick 特征和基于强度图的 Tamura 特征。提出了基于统计分析和递归特征消除支持向量机分类器(RFE-SVM)的方法,首先选择具有显著差异的特征,然后获得更具预测性和紧凑的特征子集来验证其鉴别性能。

结果

从每个 VOI 共提取了 58 个纹理特征。其中,37 个特征显示出显著的类间差异([公式:见正文])。使用 RFE-SVM 选择的 29 个最优特征,分类结果的灵敏度、特异性、准确性和受试者工作特征曲线下面积(AUC)分别为 0.9032、0.8548、0.8790 和 0.9045。通过使用合成少数过采样技术将每组样本数量扩充至 200 个,基于特征选择的分类的灵敏度、特异性、准确性和 AUC 值分别提高至 0.8967、0.8780、0.8874 和 0.9416。

结论

我们的结果表明,从强度和高阶导数图中提取的 3D 纹理特征可以更好地反映癌组织的不均匀分布。最佳选择的纹理特征与样本扩充相结合,可以提高区分膀胱癌与壁组织的性能,提示术前对膀胱癌进行肿瘤无创分期的一种潜在方法。

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