Application of texture analysis of CT and MR images to determine the histologic grade of hepatocellular cancer and it’s differential diagnosis: a review

M. Y. Shantarevich, G. Karmazanovsky
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引用次数: 2

Abstract

In recent years, more foreign publications are devoted to the use of texture analysis or radiomics in solving certain diagnostic problems, including the diagnosis of hepatocellular cancer (HCC). This method of processing medical images allows for a comprehensive assessment of the structure of neoplasms by extracting a large number of quantitative features from medical images.The purpose of the study was to determine the role of texture analysis of CT and MR images in differential diagnosis and determination of the degree of differentiation of HCC based on a review and analysis of the results of publications.We searched for scientific publications in the PubMed information and analytical system for 2015–2021. by keywords: “HCC”, “texture analysis” (texture analysis), “radiomics”, “CT”, “MRI”, “grade”, “differential diagnosis”. After excluding reviews of publications and studying the full text of articles, 21 articles were selected for analysis.Despite the growing number of publications devoted to the successful use of textural analysis of CT and MR images, including non-invasive assessment of the histological grade of HCC and in the differential diagnosis of HCC with hypervascular neoplasms, metastases, regenerative and dysplastic nodes, the use of such type of analysis in routine practice is limited due to the lack of standardized methods for performing texture analysis, which leads to low reproducibility of the results. The parameters of image acquisition and methods of image preprocessing and segmentation affect the reproducibility of the obtained texture features. In addition, the presented studies were performed using different MR sequences and phases of contrast enhancement, as well as different software, which makes it difficult to compare the obtained data.The use of texture analysis certainly demonstrates promising results and requires further investigation to systematize and standardize the obtained data in order to develop an optimal diagnostic model for wide clinical use.
CT和MR图像纹理分析在肝细胞癌组织学分级及鉴别诊断中的应用综述
近年来,越来越多的国外出版物致力于使用结构分析或放射组学来解决某些诊断问题,包括肝细胞癌(HCC)的诊断。这种处理医学图像的方法可以通过从医学图像中提取大量定量特征来全面评估肿瘤的结构。本研究的目的是在回顾和分析文献结果的基础上,确定CT和MR图像的纹理分析在鉴别诊断和确定HCC分化程度中的作用。我们在PubMed信息和分析系统中检索了2015-2021年的科学出版物。关键词:“HCC”、“质地分析”(texture analysis)、“放射组学”、“CT”、“MRI”、“分级”、“鉴别诊断”。在排除对出版物的评论和研究文章全文后,我们选择了21篇文章进行分析。尽管越来越多的出版物致力于成功使用CT和MR图像的结构分析,包括HCC组织学分级的非侵入性评估以及HCC与高血管肿瘤、转移、再生和发育不良淋巴结的鉴别诊断,但由于缺乏执行结构分析的标准化方法,这种类型的分析在常规实践中的使用受到限制,这导致结果的可重复性低。图像采集参数以及图像预处理和分割的方法影响着所获得纹理特征的再现性。此外,本研究使用不同的MR序列和对比度增强阶段以及不同的软件进行,这使得难以比较所获得的数据。纹理分析的使用确实显示了有希望的结果,但需要进一步的研究来系统化和标准化所获得的数据,以便开发出广泛临床应用的最佳诊断模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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