Bashir Usman, Siddique Muhammad Musib, Mclean Emma, Goh Vicky, Cook Gary J
1 Department of Cancer Imaging, Division of Imaging Sciences and Biomedical Engineering, King's College London, London SE1 7EH, UK.
2 Department of Histopathology, Guy's and St. Thomas' Hospitals, London, UK.
AJR Am J Roentgenol. 2016 Sep;207(3):534-43. doi: 10.2214/AJR.15.15864. Epub 2016 Jun 15.
Texture analysis involves the mathematic processing of medical images to derive sets of numeric quantities that measure heterogeneity. Studies on lung cancer have shown that texture analysis may have a role in characterizing tumors and predicting patient outcome. This article outlines the mathematic basis of and the most recent literature on texture analysis in lung cancer imaging. We also describe the challenges facing the clinical implementation of texture analysis.
Texture analysis of lung cancer images has been applied successfully to FDG PET and CT scans. Different texture parameters have been shown to be predictive of the nature of disease and of patient outcome. In general, it appears that more heterogeneous tumors on imaging tend to be more aggressive and to be associated with poorer outcomes and that tumor heterogeneity on imaging decreases with treatment. Despite these promising results, there is a large variation in the reported data and strengths of association.
纹理分析涉及对医学图像进行数学处理,以得出测量异质性的一系列数值量。肺癌研究表明,纹理分析在肿瘤特征描述和患者预后预测方面可能发挥作用。本文概述了肺癌成像中纹理分析的数学基础及最新文献。我们还描述了纹理分析临床应用面临的挑战。
肺癌图像的纹理分析已成功应用于FDG PET和CT扫描。不同的纹理参数已被证明可预测疾病性质和患者预后。总体而言,成像上显示出更多异质性的肿瘤往往更具侵袭性,与更差的预后相关,并且成像上的肿瘤异质性会随着治疗而降低。尽管有这些令人鼓舞的结果,但报告的数据和关联强度仍存在很大差异。