Wang Shiqi, Chai Na, Xu Jingji, Yu Pengfei, Huang Luguang, Wang Quan, Zhao Zhifeng, Yang Bin, Wei Jiangpeng, Wang Xiangjie, Ji Gang, Zheng Minwen
Department of Digestive Surgery, Xijing Hospital of Digestive Diseases, The First Affiliated Hospital of Fourth Military Medical University (Xijing Hospital), Fourth Military Medical University, Xi'an, China.
Department of Radiology, The First Affiliated Hospital of Fourth Military Medical University (Xijing Hospital), Fourth Military Medical University, Changlexi St. 127#, Xi'an, 710032, China, 86 2984771533, 86 2984771533.
JMIR Cancer. 2025 Jul 11;11:e67379. doi: 10.2196/67379.
Immune checkpoint inhibitors represent an effective therapeutic approach for advanced gastric cancer. Their efficacy largely depends on the status of tumor biomarkers including human epidermal growth factor receptor 2 (HER2), programmed death-ligand 1 (PD-L1; combined positive score ≥1), and microsatellite instability-high (MSI-H). To noninvasively evaluate these biomarkers, researchers have developed radiomic models for individual biomarker prediction. However, in clinical practice, holistic prediction of these biomarkers as an integrated system is more efficient. Currently, the feasibility of implementing radiomics-based comprehensive biomarker prediction remains unclear, requiring further investigation.
This study aimed to develop a radiomics-based predictive model using multiphase computed tomography (CT) images to holistically evaluate HER2, PD-L1, and MSI-H status in patients with gastric cancer.
A retrospective analysis was conducted on 461 patients with gastric cancer who underwent radical gastrectomy between 2019 and 2022. Clinical data, contrast-enhanced CT images (arterial phase [AP] and portal venous phase [PP]), and pathological results were collected. Patients were categorized into two groups: (1) the programmed cell death protein-1 inhibitor panel-positive group, comprising patients with HER2 overexpression, PD-L1 positive, or MSI-H status; and (2) the negative group, comprising patients without HER2 amplification, PD-L1 negative, or microsatellite instability-low or microsatellite stable condition. Radiomic features (including first-order statistics, shape features, and wavelet-derived textures) were extracted from both AP and PP images, yielding 1834 features per phase. Least absolute shrinkage and selection operator regression was applied to select key features. In total, 3 models were constructed using the Extreme Gradient Boosting algorithm: AP-only (8 features), PP-only (22 features), and a fused model combining AP and PP features (20 features: 6 AP and 14 PP features). Model performance was evaluated using area under the curve (AUC), sensitivity, specificity, and decision curve analysis.
Of the 461 patients, 147 patients (31.9%) were classified into the panel-positive group. The clinical features were similar between the 2 groups. The fused model demonstrated superior performance in the test set (AUC 0.82, 95% CI 0.68-0.95), significantly outperforming AP-only (AUC 0.61, 95% CI 0.47-0.74) and PP-only models (AUC 0.70, 95% CI 0.49-0.91). Sensitivity and specificity for the AP-only, PP-only, and the fused model were 0.33 and 0.85; 0.50 and 0.86; and 0.60 and 0.83, respectively. Decision curve analysis confirmed that the fused model provided higher clinical net benefit across threshold probabilities.
The construction of integrated biomarker prediction models through radiomics demonstrates technical feasibility, offering a promising methodology for comprehensive tumor characterization.
免疫检查点抑制剂是晚期胃癌的一种有效治疗方法。其疗效很大程度上取决于肿瘤生物标志物的状态,包括人表皮生长因子受体2(HER2)、程序性死亡配体1(PD-L1;联合阳性评分≥1)和微卫星高度不稳定(MSI-H)。为了无创评估这些生物标志物,研究人员已经开发出用于个体生物标志物预测的放射组学模型。然而,在临床实践中,将这些生物标志物作为一个综合系统进行整体预测效率更高。目前,基于放射组学的综合生物标志物预测的可行性仍不明确,需要进一步研究。
本研究旨在利用多期计算机断层扫描(CT)图像开发一种基于放射组学的预测模型,以整体评估胃癌患者的HER2、PD-L1和MSI-H状态。
对2019年至2022年间接受根治性胃切除术的461例胃癌患者进行回顾性分析。收集临床数据、对比增强CT图像(动脉期[AP]和门静脉期[PP])以及病理结果。患者分为两组:(1)程序性细胞死亡蛋白1抑制剂组阳性组,包括HER2过表达、PD-L1阳性或MSI-H状态的患者;(2)阴性组,包括无HER2扩增、PD-L1阴性或微卫星低度不稳定或微卫星稳定状态的患者。从AP和PP图像中提取放射组学特征(包括一阶统计量、形状特征和小波衍生纹理),每个阶段产生1834个特征。应用最小绝对收缩和选择算子回归来选择关键特征。总共使用极端梯度提升算法构建了3个模型:仅AP模型(8个特征)、仅PP模型(22个特征)以及结合AP和PP特征的融合模型(20个特征:6个AP特征和14个PP特征)。使用曲线下面积(AUC)、敏感性、特异性和决策曲线分析来评估模型性能。
461例患者中,147例(31.9%)被分类为组阳性组。两组的临床特征相似。融合模型在测试集中表现出卓越的性能(AUC 0.82,95%CI 0.68 - 0.95),显著优于仅AP模型(AUC 0.61,95%CI 0.47 - 0.74)和仅PP模型(AUC 0.70,95%CI 0.49 - 0.91)。仅AP模型、仅PP模型和融合模型的敏感性和特异性分别为0.33和0.85;0.50和0.86;以及0.60和0.83。决策曲线分析证实,融合模型在阈值概率范围内提供了更高的临床净效益。
通过放射组学构建综合生物标志物预测模型证明了技术可行性,为全面的肿瘤特征描述提供了一种有前景的方法。