Zheng Bin, Zhou Xiwen, Chen Jianhua, Zheng Wei, Duan Qing, Chen Chun
Thoracic Department, Fujian Medical University Union Hospital, Fuzhou, Fujian, China.
School of Economics and Management, Fuzhou University, Fuzhou, Fujian, China.
Ann Thorac Surg. 2015 Jul;100(1):288-94. doi: 10.1016/j.athoracsur.2015.03.071. Epub 2015 May 30.
With the recent widespread use of computed tomography, interest in ground glass opacity pulmonary lesions has increased. We aimed to develop a model for predicting the probability of malignancy in solitary pulmonary nodules.
We assessed 846 patients with newly discovered solitary pulmonary nodules referred to Fujian Medical University Union Hospital. Data on 18 clinical and 13 radiologic variables were collected. Two thirds of the patients were randomly selected to derive the prediction model (derivation set); the remaining one third provided a validation set. The lesions were divided according to proportion of ground glass opacity (less than 50% or 50% or greater). Univariate analysis of significant covariates for their relationship to the presence of malignancy was performed. An equation expressing the probability of malignancy was derived from these findings and tested on data from the validation group. Receiver-operating characteristic curves were constructed using the prediction model and the Mayo Clinic model.
In lesions with less than 50% ground glass opacity, three clinical characteristics (age, presence of symptoms, total protein) and three radiologic characteristics (diameter, lobulation, calcified nodes) were independent predictors of malignancy. In lesions with 50% or more ground glass opacity, two clinical characteristics (sex, percent of forced expiratory volume in 1 second accounting for expected value) and two radiologic characteristics (diameter, calcified nodes) were independent predictors of malignancy. Our prediction model was better than the Mayo Clinic model to distinguish between benign and malignant solitary pulmonary nodules (p < 0.05).
Our prediction model could accurately identify malignancy in patients with solitary pulmonary nodules, especially in lesions with 50% or more ground glass opacity.
随着计算机断层扫描技术最近的广泛应用,对磨玻璃密度肺结节的关注有所增加。我们旨在开发一种模型来预测孤立性肺结节的恶性概率。
我们评估了846例转诊至福建医科大学附属协和医院的新发现孤立性肺结节患者。收集了18项临床和13项放射学变量的数据。三分之二的患者被随机选择以推导预测模型(推导集);其余三分之一作为验证集。根据磨玻璃密度的比例(小于50%或50%及以上)对病变进行划分。对显著协变量与恶性肿瘤存在情况的关系进行单因素分析。根据这些结果推导出一个表示恶性概率的方程,并在验证组的数据上进行测试。使用预测模型和梅奥诊所模型构建受试者操作特征曲线。
在磨玻璃密度小于50%的病变中,三项临床特征(年龄、症状的存在、总蛋白)和三项放射学特征(直径、分叶、钙化结节)是恶性肿瘤的独立预测因素。在磨玻璃密度为50%及以上的病变中,两项临床特征(性别、一秒用力呼气量占预期值的百分比)和两项放射学特征(直径、钙化结节)是恶性肿瘤的独立预测因素。我们的预测模型在区分良性和恶性孤立性肺结节方面优于梅奥诊所模型(p<0.05)。
我们的预测模型能够准确识别孤立性肺结节患者中的恶性肿瘤,尤其是在磨玻璃密度为50%及以上的病变中。