Institute of Biomedical Engineering, College of Medicine and College of Engineering, National Taiwan University, Taipei Taiwan.
Department of Surgery, National Taiwan University Hospital and National Taiwan University College of Medicine, Taipei, Taiwan.
Ann Thorac Surg. 2022 Sep;114(3):999-1006. doi: 10.1016/j.athoracsur.2021.07.075. Epub 2021 Aug 27.
We aimed to establish a radiomic prediction model for tumor spread through air spaces (STAS) in lung adenocarcinoma using radiomic values from high-grade subtypes (solid and micropapillary).
We retrospectively reviewed 327 patients with lung adenocarcinoma from 2 institutions (cohort 1: 227 patients; cohort 2: 100 patients) between March 2017 and March 2019. STAS was identified in 113 (34.6%) patients. A high-grade likelihood prediction model was constructed based on a historical cohort of 82 patients with "near-pure" pathologic subtype. The STAS prediction model based on the patch-wise mechanism identified the high-grade likelihood area for each voxel within the internal border of the tumor. STAS presence was indirectly predicted by a volume percentage threshold of the high-grade likelihood area. Performance was evaluated by receiver operating curve analysis with 10-repetition, 3-fold cross-validation in cohort 1, and was individually tested in cohort 2.
Overall, 227 patients (STAS-positive: 77 [33.9%]) were enrolled for cross-validation (cohort 1) while 100 (STAS-positive: 36 [36.0%]) underwent individual testing (cohort 2). The gray level cooccurrence matrix (variance) and histogram (75th percentile) features were selected to construct the high-grade likelihood prediction model, which was used as the STAS prediction model. The proposed model achieved good performance in cohort 1 with an area under the curve, sensitivity, and specificity, of 81.44%, 86.75%, and 62.60%, respectively, and correspondingly, in cohort 2, they were 83.16%, 83.33%, and 63.90%, respectively.
The proposed computed tomography-based radiomic prediction model could help guide preoperative prediction of STAS in early-stage lung adenocarcinoma and relevant surgeries.
本研究旨在通过高级别亚型(实体型和微乳头型)的放射组学值,建立肺腺癌肿瘤透过气腔播散(STAS)的放射组学预测模型。
我们回顾性分析了 2 家机构的 327 例肺腺癌患者(队列 1:227 例;队列 2:100 例),入组时间为 2017 年 3 月至 2019 年 3 月。113 例(34.6%)患者存在 STAS。我们基于 82 例“近纯”病理亚型的历史队列构建了高级别可能性预测模型。基于斑块机制的 STAS 预测模型识别了肿瘤内部边界内每个体素的高级别可能性区域。通过高级别可能性区域的体积百分比阈值间接预测 STAS 的存在。在队列 1 中,我们通过 10 次重复、3 折交叉验证进行了接受者操作特征曲线分析,评估了该模型的性能,在队列 2 中,我们对该模型进行了个体测试。
在队列 1 中,共纳入 227 例(STAS 阳性:77 例[33.9%])患者进行交叉验证,队列 2 中,共纳入 100 例(STAS 阳性:36 例[36.0%])患者进行个体测试。我们选择灰度共生矩阵(方差)和直方图(第 75 百分位数)特征来构建高级别可能性预测模型,将其作为 STAS 预测模型。该模型在队列 1 中表现良好,曲线下面积、敏感性和特异性分别为 81.44%、86.75%和 62.60%,在队列 2 中分别为 83.16%、83.33%和 63.90%。
本研究提出的基于 CT 的放射组学预测模型可帮助指导早期肺腺癌 STAS 的术前预测和相关手术。