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A model of malignant risk prediction for solitary pulmonary nodules on 18 F‐FDG PET/CT: Building and estimating

机译:18 F-FDG PET / CT的孤立性肺结节恶性风险预测模型:建筑和估算

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BACKGROUND:To develop a model of malignant risk prediction of solitary pulmonary nodules (SPNs) using metabolic characteristics of lesions.METHODS:A total of 362 patients who underwent PET/CT imaging from January 2013 to July 2017 were analyzed. Differences in the clinical and imaging characteristics were analyzed between patients with benign SPNs and those with malignant SPNs. Risk factors were screened by multivariate nonconditional logistic regression analysis. The self-verification of the model was performed by receiver operating characteristic (ROC) curve analysis, and out-of-group verification was performed by k-fold cross-validation.RESULTS:There were statistically significant differences in age, maximum standardized uptake value (SUVmax ), size, lobulation, spiculation, pleural traction, vessel connection, calcification, presence of vacuoles, and emphysema between patients with benign nodules and those with malignant nodules (all P??0.05). The risk factors for malignant nodules included age, SUVmax , size, lobulation, calcification and vacuoles. The logistic regression model was as follows: P =?l/(1? ?e-x ), x = - 5.583 0.039?×?age? ?0.477?×?SUVmax ? ?0.139?×?size ?1.537?×?lobulation - 1.532?× calcification 1.113?×?vacuole. The estimated area under the curve (AUC) for the model was 0.915 (95% CI: 0.883-0.947), the sensitivity was 89.7%, and the specificity was 78.9%. K-fold cross-validation showed that the training accuracy was 0.899?±?0.011, and the predictive accuracy was 0.873?±?0.053.CONCLUSIONS:The risk factors for malignant nodules included age, SUVmax , size, lobulation, calcification and vacuoles. After verification, the model has satisfactory accuracy, and it may assist clinics make appropriate treatment decisions.? 2020 The Authors. Thoracic Cancer published by China Lung Oncology Group and John Wiley & Sons Australia, Ltd.
机译:背景:利用病变的代谢特征,制定孤立肺结核(SPNS)的恶性风险预测模型。方法:分析了2013年1月至2017年1月从2013年1月接受宠物/ CT成像的362名患者。在良性SPN和恶性SPN的患者之间分析了临床和成像特性的差异。通过多变量非改性物流回归分析筛选风险因素。通过接收器操作特征(ROC)曲线分析来执行模型的自验证,并且通过k折交叉验证进行了逐组验证。结果:年龄差异显着差异,最大标准化摄取值(Suvmax),尺寸,裂解,刺激,胸腔牵引,血管连接,钙化,液压菌属的存在,良性结节患者与恶性结节的患者之间的肺气肿(所有p?<β05)。恶性结节的危险因素包括年龄,Suvmax,尺寸,裂解,钙化和液压。逻辑回归模型如下:p =?l /(1?e-x),x = - 5.583 0.039?×5.583年龄? ?0.477?×x?suvmax? ?0.139?×××1.537?×α-裂片 - 1.532?×钙化1.113?×液泡。该模型曲线下的估计区域为0.915(95%CI:0.883-0.947),敏感性为89.7%,特异性为78.9%。 K折叠交叉验证表明,训练精度为0.899?±0.011,预测精度为0.873?±0.053.Conclusions:恶性结节的危险因素包括年龄,Suvmax大小,裂解,钙化和真空。经过验证后,该模型具有令人满意的精度,可以帮助诊所进行适当的治疗决策。 2020作者。中国肺部肿瘤集团和约翰瓦里和儿子澳大利亚发表的胸癌

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