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中国癌症防治杂志 ›› 2026, Vol. 18 ›› Issue (1): 51-58.doi: 10.3969/j.issn.1674-5671.2026.01.07

• 论著 • 上一篇    下一篇

术前增强CT及MRI动脉期影像组学对肝细胞癌微血管侵犯状态的预测价值#br#

  

  1. 柳州市人民医院放射科;桂林医科大学第二附属医院放射科;桂林医科大学第一附属医院放射科
  • 出版日期:2026-02-25 发布日期:2026-03-26
  • 通讯作者: 张卫 E?mail: holly2yang@126.com
  • 基金资助:
    柳州市科技计划项目(2022CAC0108)

Predictive value of preoperative contrast-enhanced CT and MRI arterial phase radiomics for microvascular invasion in hepatocellular carcinoma

  • Online:2026-02-25 Published:2026-03-26

摘要: 目的 探讨增强CT与MRI动脉期影像组学预测肝细胞癌(hepatocellular carcinoma,HCC)微血管侵犯(microvascular invasion, MVI)状态的价值。方法 回顾性收集2022年1月至2024年1月于柳州市人民医院和桂林医科大学第一附属医院接受手术治疗,且于术前1个月内完善增强CT和MRI检查的HCC患者,分别纳入训练集和测试集。根据术后病理结果将患者分为MVI(-)组、MVI(+)组,采用Logistic回归分析筛选与MVI相关的临床参数并构建临床预测模型。将影像图像导入医准医疗⁃达尔文科研平台,由2位放射科医师在CT及MRI动脉期图像上沿病变的边缘手动逐层勾画三维感兴趣区域(regions of interest,ROI),并自动提取出影像组学特征,经最小-最大值归一化预处理,保留组内一致性评价(>0.80)良好的影像组学特征。进一步采用医准医疗-达尔文科研平台中的LASSO回归分类器对保留的特征进行筛选及降维,通过最优特征筛选模块分别确定5个最有价值的影像组学特征,构建CT影像组学模型、MRI影像组学模型及CT+MRI影像组学模型。通过平台中的逻辑回归组件计算CT+MRI影像组学模型的影像组学评分(Radscore),将与MVI相关的临床参数与Radscore结合,构建联合预测模型。使用受试者工作特征曲线评估模型效能,使用校准曲线评估模型的拟合度,并通过决策曲线分析(decision curve analysis,DCA)比较各模型预测MVI的净收益。结果 共118例HCC患者纳入本研究,其中训练集82例,测试集36例。多因素Logistic回归分析显示,肿瘤大小、AST、Radscore是MVI的独立预测因素(均P<0.05)。在训练集和测试集中,联合模型预测MVI的效能均最高(AUC:0.892、0.803),优于其余4个模型。Delong曲线显示,在训练集及测试集中仅联合模型预测MVI状态的效能优于临床模型 (P=0.001、0.038);校准曲线显示联合模型拟合度较好,DCA显示联合模型对MVI的临床净收益高于其他模型。结论 基于增强CT与MRI动脉期影像组学特征构建Radscore,并联合肿瘤大小、AST构建联合模型,对HCC MVI状态具有良好的预测价值,可为临床术前决策提供依据。

关键词: 肝细胞癌, 微血管侵犯, 影像组学, 增强CT, 磁共振成像

Abstract: Objective To investigate the value of radiomics features derived from contrast⁃enhanced CT and MRI arterial phase images in predicting the microvascular invasion (MVI) status in hepatocellular carcinoma (HCC). Methods HCC patients who underwent surgery at Liuzhou People's Hospital and The First Affiliated Hospital of Guilin Medical University from January 2022 to January 2024, and had completed contrast⁃enhanced CT and MRI examinations within 1 month before surgery were retrospectively enrolled and divided into a training cohort and a test cohort. Patients were classified as MVI (-) and MVI (+) groups according to postoperative pathological results. Clinical predictors of MVI were screened by multivariable Logistic regression to construct a clinical model. Arterial⁃phase CT and MRI images were imported into the Yizhun Medical⁃Darwin research platform, and two radiologists manually delineated three⁃dimensional regions of interest (ROIs) along the margins. Radiomics features were automatically extracted and preprocessed with min⁃max normalization, features with good intraclass consistency (>0.80) were retained. The LASSO regression classifier in the platform was used for feature screening and dimensionality reduction. The optimal module identified five valuable radiomics features to construct CT, MRI, and CT+MRI models. The radiomics score (Radscore) of the CT+MRI model was calculated using the Logistic regression component in the platform. The clinical parameters related to MVI were combined with Radscore to construct a combined prediction model. Model performance was evaluated using the receiver operating characteristic curve (ROC), the goodness of fit was evaluated using the calibration curve, and the net benefit of predicting MVI was compared among the models using decision curve analysis (DCA). Results A total of 118 HCC patients was included, with 82 in the training cohort and 36 in the test cohort. Multivariate Logistic regression analysis showed that tumor size, AST, and Radscore were independent predictors of MVI (all P<0.05). In both the training cohort and the test cohort, the combined model demonstrated highest performance in predicting MVI (AUC: 0.892, 0.803), outperforming the other four models. The Delong curve showed that only the comprehensive model had better predictive performance than the clinical model in both the training and the test cohorts (P=0.001, 0.038). The calibration curve indicated the comprehensive model achieved a good fit, while DCA revealed that the comprehensive model had a higher clinical net benefit in predicting MVI  than other models (0.20⁃0.60 in the training cohort and 0.20-0.58 in the test cohort). Conclusions The construction of Radscore based on radiomics features from enhanced CT and MRI arterial phase images, when it combined with tumor size and AST, the comprehensive model yielded a high predictive value for the MVI status in HCC, supporting its utility in preoperative clinical decision⁃making.

Key words: Hepatocellular carcinoma, Microvascular invasion, Radiomics, Contrast?enhanced CT, Magnetic resonance imaging

中图分类号: 

  • R735.7