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一项来自三级肿瘤随访中心的关于三种模型的回顾性验证研究,这些模型用于估计小肺结节患者的恶性概率。

A retrospective validation study of three models to estimate the probability of malignancy in patients with small pulmonary nodules from a tertiary oncology follow-up centre.

作者信息

Talwar A, Rahman N M, Kadir T, Pickup L C, Gleeson F

机构信息

Departments of Respiratory Medicine and Radiology, Oxford University Hospitals NHS Foundation Trust, Oxford OX3 7LE, UK.

Departments of Respiratory Medicine and Radiology, Oxford University Hospitals NHS Foundation Trust, Oxford OX3 7LE, UK.

出版信息

Clin Radiol. 2017 Feb;72(2):177.e1-177.e8. doi: 10.1016/j.crad.2016.09.014. Epub 2016 Nov 28.

DOI:10.1016/j.crad.2016.09.014
PMID:27908443
Abstract

AIM

To estimate the probability of malignancy in small pulmonary nodules (PNs) based on clinical and radiological characteristics in a non-screening population that includes patients with a prior history of malignancy using three validated models.

MATERIALS AND METHODS

Retrospective data on clinical and radiological characteristics was collected from the medical records of 702 patients (379 men, 323 women; range 19-94 years) with PNs ≤12 mm in diameter at a single centre. The final diagnosis was compared to the probability of malignancy calculated by one of three models (Mayo, VA, and McWilliams). Model accuracy was assessed by receiver operating characteristics (ROC). The models were calibrated by comparing predicted and observed rates of malignancy.

RESULTS

The area under the ROC curve (AUC) was highest for the McWilliams model (0.82; 95% confidence interval [CI]: 0.78-0.91) and lowest for the Mayo model (0.58; 95% CI: 0.55-0.59). The VA model had an AUC of (0.62; 95% CI: 0.47-0.64). Performance of the models was significantly lower than that in the published literature.

CONCLUSIONS

The accuracy of the three models is lower in a non-screening population with a high prevalence of prior malignancy compared to the papers that describe their development. To the authors' knowledge, this is the largest study to validate predictive models for PNs in a non-screening clinically referred patient population, and has potential implications for the implementation of predictive models.

摘要

目的

使用三种经过验证的模型,基于临床和放射学特征,估计非筛查人群中(包括有恶性肿瘤病史的患者)小肺结节(PNs)的恶性概率。

材料与方法

从单一中心702例直径≤12毫米的PNs患者(379例男性,323例女性;年龄范围19 - 94岁)的病历中收集临床和放射学特征的回顾性数据。将最终诊断结果与三种模型(梅奥模型、弗吉尼亚模型和麦克威廉姆斯模型)之一计算出的恶性概率进行比较。通过受试者工作特征曲线(ROC)评估模型准确性。通过比较预测的和观察到的恶性率对模型进行校准。

结果

麦克威廉姆斯模型的ROC曲线下面积(AUC)最高(0.82;95%置信区间[CI]:0.78 - 0.91),梅奥模型最低(0.58;95% CI:0.55 - 0.59)。弗吉尼亚模型的AUC为(0.62;95% CI:0.47 - 0.64)。这些模型的性能显著低于已发表文献中的性能。

结论

与描述这些模型开发的论文相比,在有高比例既往恶性肿瘤病史的非筛查人群中,这三种模型的准确性较低。据作者所知,这是在非筛查临床转诊患者人群中验证PNs预测模型的最大规模研究,对预测模型的应用具有潜在意义。

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