A Novel Texture Analysis Method Based on Reverse Biorthogonal Wavelet and Co-Occurrence Matrix Applied for Classification of Hepatocellular Carcinoma and Hepatic Hemangioma

Jia-Jun Qiu, Yue Wu, Bei Hui, Jia Chen, Lin Ji, Min Wang
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引用次数: 6

Abstract

Purpose: To explore the feasibility of classifying hepatocellular carcinoma (HCC) and hepatic hemangioma (HEM) using texture features of non-enhanced computed tomography (CT) images, especially to investigate the effectiveness of a novel texture analysis method based on the combination of wavelet and co-occurrence matrix. Methods: 269 patients were retrospectively analyzed, including 129 HCCs and 140 HEMs. We cropped tumor regions of interest (ROIs) on non-enhanced CT images, and then used four texture analysis methods to extract quantitative data of the ROIs: gray-level histogram (GLH), gray-level co-occurrence matrix (GLCM), reverse biorthogonal wavelet transform (RBWT), and reverse biorthogonal wavelet co-occurrence matrix (RBCM). The RBCM was a novel method proposed in this study that combined wavelet transform and co-occurrence matrix. It discretized wavelet coefficient matrices based on the statistical characteristics of the training set. Thus, four sets of texture features were obtained. We then conducted classification studies using support vector machine on each set of texture features. 10-fold cross training and testing were used in the classifications, and their results were evaluated and compared. In addition, we tested the significant differences in the texture features of the RBCM method and explored the possible relationships between textures and lesion types. Results: The RBCM method achieved the best classification performance: its average accuracy was 82.14%; its average AUC (area under the receiver operating characteristic curve) was 0.8423. In addition, using the methods of GLH, GLCM, and RBWT, their average accuracies were 75.81%, 78.79%, and 78.8%, respectively. Conclusions: It indicates that the developed texture analysis methods are rewarding for computer-aided diagnosis of HCC and HEM based on non-enhanced CT images. Furthermore, the distinguishing ability of the proposed RBCM method is more pronounced.
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基于逆双正交小波和共现矩阵的纹理分析方法在肝细胞癌和肝血管瘤分类中的应用
目的:探讨利用非增强CT图像的纹理特征对肝细胞癌(HCC)和肝血管瘤(HEM)进行分类的可行性,特别是研究基于小波与共现矩阵相结合的纹理分析方法的有效性。方法:回顾性分析269例患者,其中hcc 129例,hem 140例。在非增强CT图像上裁剪肿瘤感兴趣区域(roi),然后采用灰度直方图(GLH)、灰度共生矩阵(GLCM)、反向双正交小波变换(RBWT)和反向双正交小波共生矩阵(RBCM)四种纹理分析方法提取roi的定量数据。RBCM是将小波变换与共现矩阵相结合的一种新方法。基于训练集的统计特征对小波系数矩阵进行离散化处理。从而得到四组纹理特征。然后使用支持向量机对每组纹理特征进行分类研究。采用10倍交叉训练和测试方法进行分类,并对分类结果进行评价和比较。此外,我们测试了RBCM方法在纹理特征上的显著差异,并探讨了纹理与病变类型之间可能的关系。结果:RBCM方法分类效果最佳,平均准确率为82.14%;平均AUC(受者工作特征曲线下面积)为0.8423。此外,GLH、GLCM和RBWT的平均准确率分别为75.81%、78.79%和78.8%。结论:所建立的纹理分析方法对基于非增强CT图像的HCC和HEM的计算机辅助诊断有一定的价值。此外,所提出的RBCM方法的识别能力更加明显。
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来源期刊
Journal of Medical Imaging and Health Informatics
Journal of Medical Imaging and Health Informatics MATHEMATICAL & COMPUTATIONAL BIOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
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6-12 weeks
期刊介绍: Journal of Medical Imaging and Health Informatics (JMIHI) is a medium to disseminate novel experimental and theoretical research results in the field of biomedicine, biology, clinical, rehabilitation engineering, medical image processing, bio-computing, D2H2, and other health related areas. As an example, the Distributed Diagnosis and Home Healthcare (D2H2) aims to improve the quality of patient care and patient wellness by transforming the delivery of healthcare from a central, hospital-based system to one that is more distributed and home-based. Different medical imaging modalities used for extraction of information from MRI, CT, ultrasound, X-ray, thermal, molecular and fusion of its techniques is the focus of this journal.
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