Department of Surgery, National Taiwan University Hospital and National Taiwan University College of Medicine, Taipei, Taiwan.
Department of Biomedical Engineering, College of Medicine and College of Engineering, National Taiwan University, Taipei, Taiwan.
Ann Surg Oncol. 2024 Mar;31(3):1536-1545. doi: 10.1245/s10434-023-14565-2. Epub 2023 Nov 13.
Sublobar resection is strongly associated with poor prognosis in early-stage lung adenocarcinoma, with the presence of tumor spread through air spaces (STAS). Thus, preoperative prediction of STAS is important for surgical planning. This study aimed to develop a STAS deep-learning (STAS-DL) prediction model in lung adenocarcinoma with tumor smaller than 3 cm and a consolidation-to-tumor (C/T) ratio less than 0.5.
The study retrospectively enrolled of 581 patients from two institutions between 2015 and 2019. The STAS-DL model was developed to extract the feature of solid components through solid components gated (SCG) for predicting STAS. The STAS-DL model was assessed with external validation in the testing sets and compared with the deep-learning model without SCG (STAS-DL), the radiomics-based model, the C/T ratio, and five thoracic surgeons. The performance of the models was evaluated using area under the curve (AUC), accuracy and standardized net benefit of the decision curve analysis.
The study evaluated 458 patients (institute 1) in the training set and 123 patients (institute 2) in the testing set. The proposed STAS-DL yielded the best performance compared with the other methods in the testing set, with an AUC of 0.82 and an accuracy of 74%, outperformed the STAS-DL with an accuracy of 70%, and was superior to the physicians with an AUC of 0.68. Moreover, STAS-DL achieved the highest standardized net benefit compared with the other methods.
The proposed STAS-DL model has great potential for the preoperative prediction of STAS and may support decision-making for surgical planning in early-stage, ground glass-predominant lung adenocarcinoma.
亚肺叶切除术与早期肺腺癌的预后不良密切相关,存在肿瘤通过气腔播散(STAS)。因此,术前预测 STAS 对于手术计划非常重要。本研究旨在开发一种用于肿瘤直径小于 3cm、实性成分与肿瘤比值(C/T)小于 0.5 的肺腺癌的 STAS 深度学习(STAS-DL)预测模型。
本研究回顾性纳入了 2015 年至 2019 年来自两个机构的 581 例患者。通过固体成分门控(SCG)提取实体成分特征,建立 STAS-DL 模型来预测 STAS。通过外部验证评估 STAS-DL 模型在测试集中的性能,并与无 SCG 的深度学习模型(STAS-DL)、基于放射组学的模型、C/T 比值和五名胸外科医生进行比较。采用曲线下面积(AUC)、准确性和决策曲线分析的标准化净获益评估模型性能。
本研究在训练集中评估了 458 例患者(机构 1),在测试集中评估了 123 例患者(机构 2)。与其他方法相比,所提出的 STAS-DL 在测试集中的性能最佳,AUC 为 0.82,准确性为 74%,优于准确性为 70%的 STAS-DL,优于 AUC 为 0.68 的医生。此外,STAS-DL 与其他方法相比,具有最高的标准化净获益。
所提出的 STAS-DL 模型在预测 STAS 方面具有很大的潜力,可能有助于早期磨玻璃为主型肺腺癌的手术规划决策。