Chen Qiuying, Jian Lian, Xiao Hua, Zhang Bin, Yu Xiaoping, Lai Bo, Wu Xuewei, You Jingjing, Jin Zhe, Yu Li, Zhang Shuixing
Department of Radiology, The First Affiliated Hospital, Jinan University, No. 613, Huangpu West Road, Tianhe District, Guangzhou, Guangdong, 510627, People's Republic of China.
Graduate College, Jinan University, Guangzhou, Guangdong, People's Republic of China.
Gastric Cancer. 2025 Apr 15. doi: 10.1007/s10120-025-01614-w.
We developed and evaluated a skeletal muscle deep-learning (SMDL) model using skeletal muscle computed tomography (CT) imaging to predict the survival of patients with gastric cancer (GC).
This multicenter retrospective study included patients who underwent curative resection of GC between April 2008 and December 2020. Preoperative CT images at the third lumbar vertebra were used to develop a Transformer-based SMDL model for predicting recurrence-free survival (RFS) and disease-specific survival (DSS). The predictive performance of the SMDL model was assessed using the area under the curve (AUC) and benchmarked against both alternative artificial intelligence models and conventional body composition parameters. The association between the model score and survival was assessed using Cox regression analysis. An integrated model combining SMDL signature with clinical variables was constructed, and its discrimination and fairness were evaluated.
A total of 1242, 311, and 94 patients were assigned to the training, internal, and external validation cohorts, respectively. The Transformer-based SMDL model yielded AUCs of 0.791-0.943 for predicting RFS and DSS across all three cohorts and significantly outperformed other models and body composition parameters. The model score was a strong independent prognostic factor for survival. Incorporating the SMDL signature into the clinical model resulted in better prognostic prediction performance. The false-negative and false-positive rates of the integrated model were similar across sex and age subgroups, indicating robust fairness.
The Transformer-based SMDL model could accurately predict survival of GC and identify patients at high risk of recurrence or death, thereby assisting clinical decision-making.
我们开发并评估了一种骨骼肌深度学习(SMDL)模型,该模型使用骨骼肌计算机断层扫描(CT)成像来预测胃癌(GC)患者的生存率。
这项多中心回顾性研究纳入了2008年4月至2020年12月期间接受GC根治性切除术的患者。使用第三腰椎的术前CT图像开发了一种基于Transformer的SMDL模型,用于预测无复发生存期(RFS)和疾病特异性生存期(DSS)。使用曲线下面积(AUC)评估SMDL模型的预测性能,并与替代人工智能模型和传统身体成分参数进行基准比较。使用Cox回归分析评估模型评分与生存率之间的关联。构建了一个将SMDL特征与临床变量相结合的综合模型,并评估了其辨别力和公平性。
分别有1242例、311例和94例患者被分配到训练队列、内部验证队列和外部验证队列。基于Transformer的SMDL模型在所有三个队列中预测RFS和DSS的AUC为0.791 - 0.943,显著优于其他模型和身体成分参数。模型评分是生存的一个强大独立预后因素。将SMDL特征纳入临床模型可产生更好的预后预测性能。综合模型在性别和年龄亚组中的假阴性和假阳性率相似,表明具有强大的公平性。
基于Transformer的SMDL模型可以准确预测GC患者的生存率,并识别复发或死亡高风险患者,从而辅助临床决策。