Guo Xinyu, Chen Mingzhen, Zhou Lingling, Zhu Lingyi, Liu Shuang, Zheng Liyun, Chen Yongjun, Li Qiang, Xia Shuiwei, Lu Chenying, Chen Minjiang, Chen Feng, Ji Jiansong
Zhejiang Key Laboratory of Imaging and Interventional Medicine, Zhejiang Engineering Research Center of Interventional Medicine Engineering and Biotechnology, Lishui Hospital, School of Medicine, Zhejiang University, Lishui, China.
Department of Radiology, the Fifth Affiliated Hospital of Wenzhou Medical University, Lishui, China.
Int J Surg. 2025 Feb 1;111(2):2089-2100. doi: 10.1097/JS9.0000000000002184.
Early recurrence in patients with locally advanced gastric cancer (LAGC) portends aggressive biological characteristics and a dismal prognosis. Predicting early recurrence may help determine treatment strategies for LAGC. The goal is to develop a deep learning model for early recurrence prediction (DLER) based on preoperative multiphase computed tomography (CT) images and to further explore the underlying biological basis of the proposed model.
In this retrospective study, 620 LAGC patients from January 2015 to March 2023 were included in three medical centers and The Cancer Image Archive (TCIA). The DLER model was developed using DenseNet169 and multiphase 2.5D CT images, and then crucial clinical factors of early recurrence were integrated into the multilayer perceptron (MLP) classifier model (DLER MLP ). The area under the receiver operating characteristic curve (AUC), accuracy, sensitivity, and specificity were applied to measure the performance of different models. The log-rank test was used to analyze survival outcomes. The genetic analysis was performed using RNA-sequencing data from TCIA.
Using the MLP classifier combined with clinical factors, DLER MLP showed higher performance than DLER and clinical models in predicting early recurrence in the internal validation set (AUC: 0.891 vs. 0.797, 0.752) and two external test sets: test set 1 (0.814 vs. 0.666, 0.808) and test set 2 (0.834 vs. 0.756, 0.766). Early recurrence-free survival, disease-free survival, and overall survival can be stratified using the DLER MLP (all P < 0.001). High DLER MLP score is associated with upregulated tumor proliferation pathways (WNT, MYC, and KRAS signaling) and immune cell infiltration in the tumor microenvironment.
The DLER MLP based on CT images was able to predict early recurrence of patients with LAGC and served as a useful tool for optimizing treatment strategies and monitoring.
局部晚期胃癌(LAGC)患者的早期复发预示着侵袭性生物学特征和不良预后。预测早期复发可能有助于确定LAGC的治疗策略。目的是基于术前多期计算机断层扫描(CT)图像开发一种用于早期复发预测的深度学习模型(DLER),并进一步探索该模型潜在的生物学基础。
在这项回顾性研究中,来自三个医疗中心和癌症影像存档库(TCIA)的620例2015年1月至2023年3月期间的LAGC患者被纳入研究。使用DenseNet169和多期2.5D CT图像开发DLER模型,然后将早期复发的关键临床因素整合到多层感知器(MLP)分类器模型(DLER MLP)中。采用受试者操作特征曲线下面积(AUC)、准确率、敏感性和特异性来衡量不同模型的性能。使用对数秩检验分析生存结果。利用来自TCIA的RNA测序数据进行基因分析。
在内部验证集(AUC:0.891对0.797、0.752)以及两个外部测试集(测试集1:0.814对0.666、0.808;测试集2:0.834对0.756、0.766)中,使用结合临床因素的MLP分类器时,DLER MLP在预测早期复发方面表现优于DLER和临床模型。使用DLER MLP可对无早期复发生存期、无病生存期和总生存期进行分层(所有P<0.001)。DLER MLP高评分与肿瘤增殖途径(WNT、MYC和KRAS信号通路)上调以及肿瘤微环境中的免疫细胞浸润相关。
基于CT图像的DLER MLP能够预测LAGC患者的早期复发,是优化治疗策略和监测的有用工具。