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Establishment and verification of a prediction model based on clinical characteristics and positron emission tomography/computed tomography (PET/CT) parameters for distinguishing malignant from benign ground-glass nodules

机译:基于临床特征和正电子发射断层扫描/计算断层扫描(PET / CT)参数的预测模型的建立与验证,以区分恶性良性玻璃结节

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Background: To develop and verify a prediction model for distinguishing malignant from benign ground-glass nodules (GGNs) combined with clinical characteristics and 18 F-fluorodeoxyglucose (FDG) positron emission tomography-computed tomography (PET/CT) parameters. Methods: We retrospectively analyzed 170 patients (56 males and 114 females) with GGNs who underwent PET/CT and high-resolution CT examination in our hospital from November 2011 to December 2019. The clinical and imaging data of all patients were collected, and the nodules were randomly divided into a derivation set and a validation set. For the derivation set, we used multivariate logistic regression to develop a prediction model for distinguishing benign from malignant GGNs. A receiver operating characteristic (ROC) curve was used to evaluate the diagnostic efficacy of the model, and the data in the validation set were used to verify the prediction model. Results: Among the 170 patients, 197 GGNs were confirmed via postoperative pathological examination or clinical follow-up. There were 21 patients with 27 GGNs in the benign group and 149 patients with 170 GGNs in the adenocarcinoma group. A total of five parameters, including the patient’s sex, nodule location, margin, pleural indentation, and standardized uptake value (SUV) index (the ratio of nodule SUVmax to liver SUVmean), were selected to develop a prediction model for distinguishing benign from malignant GGNs. The area under the curve (AUC) of the model was 0.875 in the derivation set, with a sensitivity of 0.702 and a specificity of 0.923. The positive likelihood ratio was 9.131, and the negative likelihood ratio was 0.322. In the validation set, the AUC of the model was 0.874, which was not significantly different from the derivation set (P=0.989). Conclusions: This study developed and validated a prediction model based on 18 F-FDG PET/CT imaging and clinical characteristics for distinguishing malignant from benign GGNs. The model showed good diagnostic efficacy and high specificity, which can improve the preoperative diagnosis of high-risk GGNs.
机译:背景:要开发和验证与良性底玻璃结节(GGN)结合临床特征和18 f-氟脱氧葡萄糖(FDG)正电子发射断层扫描的断层扫描(PET / CT)参数的预测模型。方法:我们回顾性地分析了170名患者(56名男性和114名女性),GGNS于2011年11月至2019年12月在我们的医院接受了宠物/ CT和高分辨率CT考试。所有患者的临床和成像数据被收集,以及结节随机分为派生组和验证集。对于派生集,我们使用多元逻辑回归来开发用于区分恶性GGN的良性的预测模型。使用接收器操作特性(ROC)曲线来评估模型的诊断功效,并且验证集中的数据用于验证预测模型。结果:170例患者中,通过术后病理检查或临床随访证实了197个GGNS。良性组中有21例患有27个GGNS的患者,149例腺癌组中170名GGNS患者。选择共有五个参数,包括患者的性别,结节位置,余量,胸膜压痕和标准化摄取值(SUV)指数(结节Suvmax与肝Suvmean的比率),以开发用于区分良性恶性的预测模型GGNS。该模型的曲线(AUC)下的区域在衍生组中为0.875,灵敏度为0.702,特异性为0.923。阳性似然比为9.131,负似然比为0.322。在验证集中,模型的AUC为0.874,与推导集没有显着不同(P = 0.989)。结论:本研究开发并验证了基于18 F-FDG PET / CT成像的预测模型和区分恶性GGN的临床特征。该模型显示出良好的诊断疗效和高特异性,可以改善高风险GGN的术前诊断。

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