Department of Diagnostic Radiology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, No. 17 Panjiayuan Nanli, Chaoyang District, Beijing 100021, China.
Department of Computed Tomography and Magnetic Resonance, The Fourth Hospital of Hebei Medical University, Shijiazhuang, He Bei, China.
Acad Radiol. 2024 Nov;31(11):4687-4695. doi: 10.1016/j.acra.2024.05.002. Epub 2024 May 22.
Diagnosing subcentimeter solid pulmonary nodules (SSPNs) remains challenging in clinical practice. Deep learning may perform better than conventional methods in differentiating benign and malignant pulmonary nodules. This study aimed to develop and validate a model for differentiating malignant and benign SSPNs using CT images.
This retrospective study included consecutive patients with SSPNs detected between January 2015 and October 2021 as an internal dataset. Malignancy was confirmed pathologically; benignity was confirmed pathologically or via follow-up evaluations. The SSPNs were segmented manually. A self-supervision pre-training-based fine-grained network was developed for predicting SSPN malignancy. The pre-trained model was established using data from the National Lung Screening Trial, Lung Nodule Analysis 2016, and a database of 5478 pulmonary nodules from the previous study, with subsequent fine-tuning using the internal dataset. The model's efficacy was investigated using an external cohort from another center, and its accuracy, sensitivity, specificity, and area under the receiver operating characteristic curve (AUC) were determined.
Overall, 1276 patients (mean age, 56 ± 10 years; 497 males) with 1389 SSPNs (mean diameter, 7.5 ± 2.0 mm; 625 benign) were enrolled. The internal dataset was specifically enriched for malignancy. The model's performance in the internal testing set (316 SSPNs) was: AUC, 0.964 (95% confidence interval (95%CI): 0.942-0.986); accuracy, 0.934; sensitivity, 0.965; and specificity, 0.908. The model's performance in the external test set (202 SSPNs) was: AUC, 0.945 (95% CI: 0.910-0.979); accuracy, 0.911; sensitivity, 0.977; and specificity, 0.860.
This deep learning model was robust and exhibited good performance in predicting the malignancy of SSPNs, which could help optimize patient management.
在临床实践中,诊断亚厘米实性肺结节(SSPN)仍然具有挑战性。深度学习在区分良性和恶性肺结节方面可能比传统方法表现更好。本研究旨在开发和验证一种使用 CT 图像区分恶性和良性 SSPN 的模型。
这是一项回顾性研究,纳入了 2015 年 1 月至 2021 年 10 月期间连续检测到的 SSPN 患者作为内部数据集。通过病理证实恶性肿瘤;良性通过病理或随访评估证实。手动分割 SSPN。开发了一种基于自我监督预训练的细粒度网络来预测 SSPN 恶性肿瘤。使用来自国家肺癌筛查试验、2016 年肺部结节分析和先前研究的 5478 个肺结节数据库的数据来建立预训练模型,然后使用内部数据集进行微调。使用来自另一个中心的外部队列研究模型的有效性,并确定其准确性、敏感度、特异性和接收者操作特征曲线(ROC)下的面积(AUC)。
共纳入 1276 名患者(平均年龄 56±10 岁;497 名男性)和 1389 个 SSPN(平均直径 7.5±2.0mm;625 个良性)。内部数据集特别富集了恶性肿瘤。该模型在内部测试集(316 个 SSPN)中的性能为:AUC,0.964(95%置信区间(95%CI):0.942-0.986);准确性,0.934;敏感度,0.965;特异性,0.908。该模型在外部测试集(202 个 SSPN)中的性能为:AUC,0.945(95%CI:0.910-0.979);准确性,0.911;敏感度,0.977;特异性,0.860。
该深度学习模型稳健,对预测 SSPN 的恶性具有良好的性能,这有助于优化患者管理。