Linkoping University, Department of Biomedical Engineering, Linkoping, 58183, Sweden.
Fukushima Medical University, Department of Regenerative Surgery, Fukushima City, 960-1295, Japan.
Sci Rep. 2017 Feb 24;7:43209. doi: 10.1038/srep43209.
Texture analysis of computed tomography (CT) imaging has been found useful to distinguish subtle differences, which are in- visible to human eyes, between malignant and benign tissues in cancer patients. This study implemented two complementary methods of texture analysis, known as the gray-level co-occurrence matrix (GLCM) and the experimental semivariogram (SV) with an aim to improve the predictive value of evaluating mediastinal lymph nodes in lung cancer. The GLCM was explored with the use of a rich set of its derived features, whereas the SV feature was extracted on real and synthesized CT samples of benign and malignant lymph nodes. A distinct advantage of the computer methodology presented herein is the alleviation of the need for an automated precise segmentation of the lymph nodes. Using the logistic regression model, a sensitivity of 75%, specificity of 90%, and area under curve of 0.89 were obtained in the test population. A tenfold cross-validation of 70% accuracy of classifying between benign and malignant lymph nodes was obtained using the support vector machines as a pattern classifier. These results are higher than those recently reported in literature with similar studies.
计算机断层扫描(CT)成像的纹理分析已被证明有助于区分癌症患者中恶性和良性组织之间肉眼难以察觉的细微差异。本研究实施了两种互补的纹理分析方法,即灰度共生矩阵(GLCM)和实验半变异函数(SV),旨在提高评估肺癌纵隔淋巴结的预测价值。GLCM 采用了一组丰富的衍生特征进行了探索,而 SV 特征则是从良性和恶性淋巴结的真实和合成 CT 样本中提取的。本文提出的计算机方法的一个明显优势是减轻了对淋巴结自动精确分割的需求。在测试人群中,逻辑回归模型获得了 75%的敏感性、90%的特异性和 0.89 的曲线下面积。使用支持向量机作为模式分类器进行的十折交叉验证得到了良性和恶性淋巴结之间分类的 70%准确率。这些结果高于最近在类似研究中报道的文献中的结果。