医学
接收机工作特性
逻辑回归
粘液表皮样癌
边距(机器学习)
放射科
单变量分析
多项式logistic回归
单变量
基底细胞
核医学
病理
癌
内科学
多元分析
统计
多元统计
机器学习
计算机科学
数学
作者
Xiaohua Ban,Xinping Shen,Huijun Hu,Rong Zhang,Chuanmiao Xie,Xiaohui Duan,Cuiping Zhou
标识
DOI:10.1186/s40644-020-00375-2
摘要
Abstract Background To determine the predictive CT imaging features for diagnosis in patients with primary pulmonary mucoepidermoid carcinomas (PMECs). Materials and methods CT imaging features of 37 patients with primary PMECs, 76 with squamous cell carcinomas (SCCs) and 78 with adenocarcinomas were retrospectively reviewed. The difference of CT features among the PMECs, SCCs and adenocarcinomas was analyzed using univariate analysis, followed by multinomial logistic regression and receiver operating characteristic (ROC) curve analysis. Results CT imaging features including tumor size, location, margin, shape, necrosis and degree of enhancement were significant different among the PMECs, SCCs and adenocarcinomas, as determined by univariate analysis ( P < 0.05). Only lesion location, shape, margin and degree of enhancement remained independent factors in multinomial logistic regression analysis. ROC curve analysis showed that the area under curve of the obtained multinomial logistic regression model was 0.805 (95%CI: 0.704–0.906). Conclusion The prediction model derived from location, margin, shape and degree of enhancement can be used for preoperative diagnosis of PMECs.
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