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使用包含δ放射组学和身体成分因素的新型列线图改善肝细胞癌微血管侵犯的诊断决策:一项多中心研究

Improved diagnostic decision making for microvascular invasion in HCC using a novel nomogram incorporating delta radiomics and body composition factors: A multicenter study.

作者信息

Zhang Li, Li Houying, Dai Zhengjun, Zhao Fang, Liu Xiaoxiao, Yu Yifan, Pang Guodong

机构信息

Department of Radiology,The Second Hospital of Shangdong University,jinan, shangdong 250033, China.

Department of Scientific Research Department, Huiying Medical Technology Co, Ltd, Beijing, 100192, China.

出版信息

Eur J Surg Oncol. 2025 Sep;51(9):110219. doi: 10.1016/j.ejso.2025.110219. Epub 2025 Jun 6.

Abstract

OBJECTIVE

To develop and validate machine learning(ML) models based on delta-radiomics features and body composition factors for early prediction of microvascular invasion(MVI) in patients with hepatocellular carcinoma(HCC) using a multicenter cohort,and to identify differentially expressed genes(DEGs).

METHODS

This retrospective study included pathologically-confirmed HCC patients diagnosed at three centers.Radiomic features were extracted from MRI images,and delta-radiomics features were calculated.Clinical-radiological features, body composition factors and delta-radiomics score were selected through various feature selection methods and a nomogram was built based on the independent risk factors.The performance of the nomogram was assessed with the area under the receiver operating characteristic curve (AUC).Recurrence-free survival(RFS) analysis was assessed by the Kaplan-Meier analysis and compared using the log-rank test.Additionally, gene expression analysis was conducted to explore molecular mechanisms underlying MVI.

RESULTS

The nomogram demonstrated numerically superior predictive performance in both external test sets, achieving AUCs of 0.853 (test set1) and 0.852 (test set2). The Delong test revealed the nomogram demonstrated robust predictive performance across both external test set, compared to the clinical model (test set1: 0.853 vs 0.790; test set2: 0.852 vs 0.774; both p < 0.05). No statistically significant difference was observed between the nomogram and delta-radiomics model(p > 0.05).The nomogram's implementation enhanced radiologists' diagnostic accuracy for MVI by up to 13.4 percentage points.The nomogram can categorize recurrence-free survival.DEGs associated with MVI are related to cell proliferation and glucose metabolism.

CONCLUSION

The ML models established via body composition factors and delta-radiomics scores had the best performance to predict MVI status,and help improve the diagnostic capability of radiologists.

摘要

目的

利用多中心队列开发并验证基于增量放射组学特征和身体成分因素的机器学习(ML)模型,用于早期预测肝细胞癌(HCC)患者的微血管侵犯(MVI),并识别差异表达基因(DEG)。

方法

这项回顾性研究纳入了在三个中心确诊的病理证实的HCC患者。从MRI图像中提取放射组学特征,并计算增量放射组学特征。通过各种特征选择方法选择临床放射学特征、身体成分因素和增量放射组学评分,并基于独立危险因素构建列线图。用受试者操作特征曲线(AUC)下面积评估列线图的性能。通过Kaplan-Meier分析评估无复发生存(RFS)分析,并使用对数秩检验进行比较。此外,进行基因表达分析以探索MVI潜在的分子机制。

结果

列线图在两个外部测试集中均显示出数值上更好的预测性能,在测试集1中AUC为0.853,在测试集2中AUC为0.852。DeLong检验显示,与临床模型相比,列线图在两个外部测试集中均表现出稳健的预测性能(测试集1:0.853对0.790;测试集2:0.852对0.774;两者p<0.05)。列线图与增量放射组学模型之间未观察到统计学显著差异(p>0.05)。列线图的应用将放射科医生对MVI的诊断准确性提高了多达13.4个百分点。列线图可以对无复发生存进行分类。与MVI相关的DEG与细胞增殖和葡萄糖代谢有关。

结论

通过身体成分因素和增量放射组学评分建立的ML模型在预测MVI状态方面表现最佳,并有助于提高放射科医生的诊断能力。

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