Cho Elina En Li, Law Michelle, Yu Zhenning, Yong Jie Ning, Tan Claire Shiying, Tan En Ying, Takahashi Hirokazu, Danpanichkul Pojsakorn, Nah Benjamin, Soon Gwyneth Shook Ting, Ng Cheng Han, Tan Darren Jun Hao, Seko Yuya, Nakamura Toru, Morishita Asahiro, Chirapongsathorn Sakkarin, Kumar Rahul, Kow Alfred Wei Chieh, Huang Daniel Q, Lim Mei Chin, Law Jia Hao
Lee Kong Chian School of Medicine, Nanyang Technological University, Singapore, Singapore.
Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore.
Dig Dis Sci. 2025 Feb;70(2):533-542. doi: 10.1007/s10620-024-08747-5. Epub 2024 Dec 21.
Major society guidelines recommend transarterial chemoembolization (TACE) as the standard of care for intermediate-stage hepatocellular carcinoma (HCC) patients. However, predicting treatment response remains challenging.
As artificial intelligence (AI) may predict therapeutic responses, this systematic review aims to assess the performance and effectiveness of radiomics and AI-based models in predicting TACE outcomes in patients with HCC.
A systemic search was conducted on Medline and Embase databases from inception to 7th April 2024. Included studies generated a predictive model for TACE response and evaluated its performance by area under the curve (AUC), specificity, or sensitivity analysis. Systematic reviews, meta-analyses, case series and reports, pediatric, and animal studies were excluded. Secondary search of references of included articles ensured comprehensiveness.
64 articles, with 13,412 TACE-treated patients, were included. AI in pre-treatment CT scans provided value in predicting the efficacy of TACE in HCC treatment. A positive association was observed for AI in pre-treatment MRI scans. Models incorporating radiomics had numerically better performance than those incorporating manual measured radiological variables. 39 studies demonstrated that combined predictive models had numerically better performance than models based solely on imaging or non-imaging features.
A combined predictive model incorporating clinical features, laboratory investigations, and radiological characteristics may effectively predict response to TACE treatment for HCC.
主要的社会指南推荐经动脉化疗栓塞术(TACE)作为中期肝细胞癌(HCC)患者的标准治疗方法。然而,预测治疗反应仍然具有挑战性。
由于人工智能(AI)可能预测治疗反应,本系统评价旨在评估放射组学和基于AI的模型在预测HCC患者TACE治疗结果方面的性能和有效性。
对Medline和Embase数据库从创建到2024年4月7日进行了系统检索。纳入的研究生成了TACE反应的预测模型,并通过曲线下面积(AUC)、特异性或敏感性分析评估其性能。排除系统评价、荟萃分析、病例系列和报告、儿科及动物研究。对纳入文章的参考文献进行二次检索以确保全面性。
纳入64篇文章,涉及13412例接受TACE治疗的患者。治疗前CT扫描中的AI在预测TACE治疗HCC的疗效方面具有价值。在治疗前MRI扫描中观察到AI呈正相关。纳入放射组学的模型在数值上比纳入手动测量的放射学变量的模型表现更好。39项研究表明,联合预测模型在数值上比仅基于影像学或非影像学特征的模型表现更好。
结合临床特征、实验室检查和放射学特征的联合预测模型可能有效地预测HCC患者对TACE治疗的反应。