Na Ji-Eun, Lee Yeong-Chan, Kim Tae-Jun, Lee Hyuk, Won Hong-Hee, Min Yang-Won, Min Byung-Hoon, Lee Jun-Haeng, Rhee Poong-Lyul, Kim Jae J
Department of Medicine, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul 06351, Korea.
Department of Medicine, Inje University Haeundae Paik Hospital, Busan 48108, Korea.
Cancers (Basel). 2022 Feb 22;14(5):1121. doi: 10.3390/cancers14051121.
Stratification of the risk of lymph node metastasis (LNM) in patients with non-curative resection after endoscopic resection (ER) for early gastric cancer (EGC) is crucial in determining additional treatment strategies and preventing unnecessary surgery. Hence, we developed a machine learning (ML) model and validated its performance for the stratification of LNM risk in patients with EGC. We enrolled patients who underwent primary surgery or additional surgery after ER for EGC between May 2005 and March 2021. Additionally, patients who underwent ER alone for EGC between May 2005 and March 2016 and were followed up for at least 5 years were included. The ML model was built based on a development set (70%) using logistic regression, random forest (RF), and support vector machine (SVM) analyses and assessed in a validation set (30%). In the validation set, LNM was found in 337 of 4428 patients (7.6%). Among the total patients, the area under the receiver operating characteristic (AUROC) for predicting LNM risk was 0.86 in the logistic regression, 0.85 in RF, and 0.86 in SVM analyses; in patients with initial ER, AUROC for predicting LNM risk was 0.90 in the logistic regression, 0.88 in RF, and 0.89 in SVM analyses. The ML model could stratify the LNM risk into very low (<1%), low (<3%), intermediate (<7%), and high (≥7%) risk categories, which was comparable with actual LNM rates. We demonstrate that the ML model can be used to identify LNM risk. However, this tool requires further validation in EGC patients with non-curative resection after ER for actual application.
对早期胃癌(EGC)内镜切除(ER)后非根治性切除患者的淋巴结转移(LNM)风险进行分层,对于确定额外的治疗策略和避免不必要的手术至关重要。因此,我们开发了一种机器学习(ML)模型,并验证了其在EGC患者LNM风险分层中的性能。我们纳入了2005年5月至2021年3月期间因EGC接受初次手术或ER后接受二次手术的患者。此外,还纳入了2005年5月至2016年3月期间因EGC单独接受ER并随访至少5年的患者。ML模型基于一个开发集(70%),采用逻辑回归、随机森林(RF)和支持向量机(SVM)分析构建,并在一个验证集(30%)中进行评估。在验证集中,4428例患者中有337例(7.6%)发现有LNM。在所有患者中,逻辑回归预测LNM风险的受试者工作特征曲线下面积(AUROC)为0.86,RF为0.85,SVM分析为0.86;在初始接受ER的患者中,逻辑回归预测LNM风险的AUROC为0.90,RF为0.88,SVM分析为0.89。ML模型可以将LNM风险分为极低(<1%)、低(<3%)、中(<7%)和高(≥7%)风险类别,这与实际LNM发生率相当。我们证明ML模型可用于识别LNM风险。然而,该工具需要在ER后非根治性切除的EGC患者中进行进一步验证,以用于实际应用。