Ren Yanchen, Cao Yiyuan, Hu Weidong, Wei Xiaoxuan, Shen Xiaoyan
Department of Thoracic Surgical Oncology, Hubei Key Laboratory of Tumor Biological Behaviors and Hubei Cancer Clinical Study Center, Zhongnan Hospital of Wuhan University, 430071, Wuhan, People's Republic of China.
Department of Radiology, Medical Imaging Center, Zhongnan Hospital of Wuhan University, 430071, Wuhan, People's Republic of China.
Int J Clin Oncol. 2017 Oct;22(5):865-871. doi: 10.1007/s10147-017-1131-0. Epub 2017 May 9.
To evaluate the computed tomography features of peripheral small cell lung cancer and non-small cell lung cancer and to establish a predictive model to conveniently distinguish between them.
We retrospectively reviewed the computed tomography features of 51 patients with peripheral small cell lung cancer and 207 patients with peripheral non-small cell lung cancer after pathological diagnosis. Thirteen computed tomography morphologic findings were included and analyzed statistically. Meaningful features were analyzed by logistic regression for multivariate analysis. We then used β-coefficients as the basis to establish an image scoring prediction model.
The meaningful morphologic features for distinguishing between peripheral small cell lung cancer and other tumor types are multinodular shape and lymphadenectasis, with scores of 12 and 11, respectively. The scores ranged from -51 to 23, and the most reasonable cut-off was -24. The available area under the curve was 0.834 (95% confidence interval [CI] 0.783-0.877). Sensitivity and specificity were 86.3% (95% CI 0.737-0.943) and 69.6% (95% CI 0.628-0.758), respectively.
The image scoring predictive model that we constructed provides a simple and economical noninvasive method for distinguishing between peripheral small cell lung cancer and peripheral non-small cell lung cancer.
评估周围型小细胞肺癌和非小细胞肺癌的计算机断层扫描特征,并建立一个预测模型以方便区分它们。
我们回顾性分析了51例经病理诊断的周围型小细胞肺癌患者和207例周围型非小细胞肺癌患者的计算机断层扫描特征。纳入13项计算机断层扫描形态学表现并进行统计学分析。对有意义的特征进行逻辑回归多因素分析。然后以β系数为基础建立图像评分预测模型。
区分周围型小细胞肺癌与其他肿瘤类型的有意义形态学特征为多结节状和淋巴结肿大,评分分别为12分和11分。评分范围为-51至23分,最合理的截断值为-24分。曲线下有效面积为0.834(95%置信区间[CI]0.783-0.877)。敏感性和特异性分别为86.3%(95%CI 0.737-0.943)和69.6%(95%CI 0.628-0.758)。
我们构建的图像评分预测模型为区分周围型小细胞肺癌和周围型非小细胞肺癌提供了一种简单、经济的非侵入性方法。