实用肝脏病杂志 ›› 2026, Vol. 29 ›› Issue (3): 429-433.doi: 10.3969/j.issn.1672-5069.2026.03.028

• 肝癌 • 上一篇    下一篇

基于肿瘤微环境指标预测结直肠癌肝转移风险价值研究*

杜娜, 王浩, 任丽   

  1. 300060 天津市 天津医科大学肿瘤医院,恶性肿瘤国家临床医学研究中心/天津市恶性肿瘤临床医学研究中心/天津市肿瘤防治重点实验室
  • 收稿日期:2025-08-12 出版日期:2026-05-10 发布日期:2026-05-18
  • 通讯作者: 任丽,E-mail:415393920@qq.com
  • 作者简介:杜娜,女,本科,检验技师。E-mail:mubina1986@aliyun.com
  • 基金资助:
    *天津市医学重点学科建设资助(编号:TJYXZDXK-3-003A)

Predicting performance of liver metastasis by tumor microenvironment indicators in patients with colorectal cancer

Du Na, Wang Hao, Ren Li   

  1. National Clinical Tumor Study Institution, Clinical Laboratory, Cancer Hospital Affiliated to Tianjin Medical University, Tianjin 300060, China
  • Received:2025-08-12 Online:2026-05-10 Published:2026-05-18

摘要: 目的 探讨结直肠癌(CRC)患者肝转移的免疫微环境特征,并基于肿瘤组织免疫标志物表达构建预测模型以评估肝转移风险。方法 2019年1月~2022年12月我院行手术切除治疗的结直肠癌患者216例,其中发生肝转移92例,未发生肝转移124例。病理学检查评估淋巴管侵犯(LVI)、神经周围侵犯(PNI)和肿瘤间质比例(TSR),采用免疫组化法检测组织Ki67、p53、CD8、PD-L1、FOXP3、Galectin-9、VISTA、CD39、CCR8和CXCL13表达,采用H-score半定量评分。构建效应因子得分(CD8+CXCL13)、抑制因子得分(FOXP3+PD-L1)和免疫失调评分(dysregulation score)。采用多因素Logistic回归分析独立相关因素,建立XGBoost模型并评估预测效能。结果 肝转移组Ki67指数为62.0(51.0,71.0)%,显著高于非肝转移组的39.0(31.8,54.0)%(P<0.05),LVI和PNI阳性率分别为65.2%和44.6%,均显著高于非肝转移组的1.6%和2.4%(均P<0.05);肝转移组CD8 H-score显著低于非肝转移组【130.5(87.5,183.0)对203.5(144.0,255.5),P<0.05】,而PD-L1、FOXP3、Galectin-9、VISTA、CD39和CCR8 H-score均显著高于非肝转移组(均P<0.05);效应因子得分为272.0(208.0,330.0),显著低于非肝转移组的393.5(298.2,460.5,P<0.05);抑制因子得分为387.5(315.0,461.0),显著高于非肝转移组的260.5(198.5,321.2,P<0.05);多因素Logistic回归显示,CXCL13(OR=0.04,95%CI:0.01~0.10,P<0.05)和dysregulation score(OR=0.29,95%CI:0.09~0.84,P<0.05)为保护因素,CCR8(OR=2.15,95%CI:1.27~3.92,P<0.05),而VISTA(OR=1.85,95%CI:1.03~3.46,P<0.05)为危险因素;XGBoost模型预测肝转移的AUC为0.828(P<0.05),在1%~43%阈值范围内的净获益优于“全部治疗”和“全部不治疗”策略。结论 CRC患者发生肝转移具有免疫抑制性微环境特征,效应因子下降和抑制因子升高可能促进转移的发生。基于免疫标志物构建的XGBoost模型具备良好的预测效能和临床应用价值,可为CRC患者发生肝转移早期预测和个体化管理提供依据。

关键词: 肝转移癌, 结直肠癌, 免疫微环境, PD-L1, FOXP3, XGBoost, 预测

Abstract: Objective This study aimed to investigate impact of immune microenvironment feature on liver metastasis in patients with colorectal cancer (CRC) and to construct a predictive model based on immune biomarkers to assess the risk of liver metastasis. Methods 216 patients with CRC, including liver metastasis in 92 cases and no liver metastasis in 124 cases, were encountered in our hospital beween January 2019 and December 2022, and all underwent surgery for resection of tumors. Pathological examination determined lymphovascular invasion (LVI), perineural invasion (PNI) and tumor-stroma ratio (TSR). Immunohistochemistry was performed for Ki67, p53, CD8, PD-L1, FOXP3, galectin-9, VISTA, CD39, CCR8 and CXCL13 expression, and semiquantitative H-scores were calculated. The effector score (CD8+CXCL13), suppressor score (FOXP3+PD-L1), and dysregulation score were subsequently constructed. Multivariate Logistic regression analysis was performed to identify independent factors, and an XGBoost model was developed based on selected variables to assess predictive performance, and decision curve analysis (DCA) was established to determine its clinical application. Results The Ki67 index was 62.0 (51.0-71.0)%, much higher than 39.0 (31.8-54.0)% in non-liver metastasis group (P<0.05); positive rates of LVI and PNI in the liver metastasis group were 65.2% and 44.6%, both significantly higher than 1.6% and 2.4% (P<0.05) in the non-liver metastasis group; the CD8 H-score was much lower than that in the non-liver metastasis group [130.5 (87.5-183.0) vs. 203.5 (144.0-255.5), P<0.05], while the H-scores of PD-L1, FOXP3, Galectin-9, VISTA, CD39 and CCR8 were higher than those in the non-liver metastasis group (all P<0.05); the effector score was 272.0 (208.0-330.0), much lower than that in the non-liver metastasis group [393.5 (298.2-460.5), P<0.05]; the suppressor score was 387.5 (315.0-461.0), much higher than that in the non-liver metastasis group [260.5 (198.5-321.2), P<0.05]; multivariate Logistic regression analysis showed that CXCL13 (OR = 0.04, 95% CI: 0.01-0.10, P<0.05) and dysregulation score (OR=0.29, 95% CI: 0.09-0.84, P<0.05) were protective factors, while CCR8 (OR=2.15, 95% CI: 1.27-3.92, P<0.05) and VISTA (OR=1.85, 95% CI: 1.03-3.46, P<0.05) were the risk factors; the XGBoost model predicted liver metastasis with an AUC of 0.828 (P<0.05), and within the threshold range of 1% to 43%, the net benefit was superior to the "treat all" and "treat none" strategies. Conclusion Patients with CRC and liver metastasis exhibit an immunosuppressive microenvironment characterized by decreased effector factors and increased suppressor factors, which might promote metastasis. The XGBoost model we constructed based on immune biomarkers demonstrate a good predictive performance and clinical application, which provide a reference for early prediction and individualized management of patients with CRC.

Key words: Liver metastasis, Colorectal cancer, Tumor microenvironment, PD-L1, FOXP3, XGBoost, Prediction