列线图
医学
逻辑回归
威尔科克森符号秩检验
单变量
放射科
接收机工作特性
精确检验
磁共振成像
无线电技术
单变量分析
核医学
多元分析
多元统计
肿瘤科
内科学
曼惠特尼U检验
数学
统计
作者
Han Zhang,Hexiang Wang,Dapeng Hao,Yubin Ge,Guangyao Wan,Jun Zhang,Shunli Liu,Yu Zhang,Deguang Xu
摘要
Background Preoperative discrimination between malignant and benign sinonasal tumors is important for treatment plan selection. Purpose To build and validate a radiomic nomogram for preoperative discrimination between malignant and benign sinonasal tumors. Study Type Retrospective. Population In all, 197 patients with histopathologically confirmed 84 benign and 113 malignant sinonasal tumors. Field Strength/Sequences Fast‐spin‐echo (FSE) T 1 ‐weighted and fat‐suppressed FSE T 2 ‐weighted imaging on a 1.5T and 3.0T MRI. Assessment T 1 and fat‐suppressed T 2 ‐weighted images were selected for feature extraction. The least absolute shrinkage selection operator (LASSO) algorithm was applied to establish a radiomic score. Multivariate logistic regression analysis was applied to determine independent risk factors, and the radiomic score was combined to build a radiomic nomogram. The nomogram was assessed in a training dataset ( n = 138/3.0T MRI) and tested in a validation dataset ( n = 59/1.5T MRI). Statistical Tests Independent t ‐test or Wilcoxon's test, chi‐square‐test, or Fisher's‐test, univariate analysis, LASSO, multivariate logistic regression analysis, area under the curve (AUC), Hosmer–Lemeshow test, decision curve, and the Delong test. Results In the validation dataset, the radiomic nomogram could differentiate benign from malignant sinonasal tumors with an AUC of 0.91. There was no significant difference in AUC between the combined radiomic score and radiomic nomogram ( P > 0.05), and the radiomic nomogram showed a relatively higher AUC than the combined radiomic score. There was a significant difference in AUC between each two of the following models (the radiomic nomogram vs. the clinical model, all P < 0.001; the combined radiomic score vs. the clinical model, P = 0.0252 and 0.0035, respectively, in the training and validation datasets). The radiomic nomogram outperformed the radiomic scores and clinical model. Data Conclusion The radiomic nomogram combining the clinical model and radiomic score is a simple, effective, and reliable method for patient risk stratification. Level of Evidence 4 Technical Efficacy Stage 2
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