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放射组学和深度学习作为人工智能的重要技术——细胞角蛋白19阳性肝细胞癌的诊断前景

Radiomics and Deep Learning as Important Techniques of Artificial Intelligence - Diagnosing Perspectives in Cytokeratin 19 Positive Hepatocellular Carcinoma.

作者信息

Wang Fei, Yan Chunyue, Huang Xinlan, He Jiqiang, Yang Ming, Xian Deqiang

机构信息

Department of Radiology, Luzhou People's Hospital, Luzhou, 646000, People's Republic of China.

Department of Emergency Medicine, Luzhou People's Hospital, Luzhou, 646000, People's Republic of China.

出版信息

J Hepatocell Carcinoma. 2025 Jun 5;12:1129-1140. doi: 10.2147/JHC.S526887. eCollection 2025.

Abstract

BACKGROUND

Currently, there are inconsistencies among different studies on preoperative prediction of Cytokeratin 19 (CK19) expression in HCC using traditional imaging, radiomics, and deep learning. We aimed to systematically analyze and compare the performance of non-invasive methods for predicting CK19-positive HCC, thereby providing insights for the stratified management of HCC patients.

METHODS

A comprehensive literature search was conducted in PubMed, EMBASE, Web of Science, and the Cochrane Library from inception to February 2025. Two investigators independently screened and extracted data based on inclusion and exclusion criteria. Eligible studies were included, and key findings were summarized in tables to provide a clear overview.

RESULTS

Ultimately, 22 studies involving 3395 HCC patients were included. 72.7% (16/22) focused on traditional imaging, 36.4% (8/22) on radiomics, 9.1% (2/22) on deep learning, and 54.5% (12/22) on combined models. The magnetic resonance imaging was the most commonly used imaging modality (19/22), and over half of the studies (12/22) were published between 2022 and 2025. Moreover, 27.3% (6/22) were multicenter studies, 36.4% (8/22) included a validation set, and only 13.6% (3/22) were prospective. The area under the curve (AUC) range of using clinical and traditional imaging was 0.560 to 0.917. The AUC ranges of radiomics were 0.648 to 0.951, and the AUC ranges of deep learning were 0.718 to 0.820. Notably, the AUC ranges of combined models of clinical, imaging, radiomics and deep learning were 0.614 to 0.995. Nevertheless, the multicenter external data were limited, with only 13.6% (3/22) incorporating validation.

CONCLUSION

The combined model integrating traditional imaging, radiomics and deep learning achieves excellent potential and performance for predicting CK19 in HCC. Based on current limitations, future research should focus on building an easy-to-use dynamic online tool, combining multicenter-multimodal imaging and advanced deep learning approaches to enhance the accuracy and robustness of model predictions.

摘要

背景

目前,关于使用传统影像学、放射组学和深度学习对肝细胞癌(HCC)中细胞角蛋白19(CK19)表达进行术前预测的不同研究结果存在不一致。我们旨在系统分析和比较预测CK19阳性HCC的非侵入性方法的性能,从而为HCC患者的分层管理提供见解。

方法

从创刊至2025年2月,在PubMed、EMBASE、Web of Science和Cochrane图书馆进行了全面的文献检索。两名研究人员根据纳入和排除标准独立筛选和提取数据。纳入符合条件的研究,并将关键结果汇总在表格中以提供清晰的概述。

结果

最终,纳入了涉及3395例HCC患者的22项研究。72.7%(16/22)关注传统影像学,36.4%(8/22)关注放射组学,9.1%(2/22)关注深度学习,54.5%(12/22)关注联合模型。磁共振成像(MRI)是最常用的成像方式(19/22),超过一半的研究(12/22)发表于2022年至2025年之间。此外,27.3%(6/22)为多中心研究,36.4%(8/22)包含验证集,仅有13.6%(3/22)为前瞻性研究。使用临床和传统影像学时曲线下面积(AUC)范围为0.560至0.917。放射组学的AUC范围为0.648至0.951,深度学习的AUC范围为0.718至0.820。值得注意的是,临床、影像学、放射组学和深度学习联合模型的AUC范围为0.614至0.995。然而,多中心外部数据有限,仅有13.6%(3/22)纳入了验证。

结论

整合传统影像学、放射组学和深度学习的联合模型在预测HCC中CK19方面具有出色的潜力和性能。基于当前的局限性,未来研究应专注于构建易于使用的动态在线工具,结合多中心多模态成像和先进的深度学习方法,以提高模型预测的准确性和稳健性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/56f5/12149279/d65bddb8f6b5/JHC-12-1129-g0001.jpg

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