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肝细胞癌风险的临床与分子预测

Clinical and Molecular Prediction of Hepatocellular Carcinoma Risk.

作者信息

Kubota Naoto, Fujiwara Naoto, Hoshida Yujin

机构信息

Liver Tumor Translational Research Program, Simmons Comprehensive Cancer Center, Division of Digestive and Liver Diseases, Department of Internal Medicine, University of Texas Southwestern Medical Center, 5323 Harry Hines Blvd, Dallas, TX 75390, USA.

出版信息

J Clin Med. 2020 Nov 26;9(12):3843. doi: 10.3390/jcm9123843.

Abstract

Prediction of hepatocellular carcinoma (HCC) risk becomes increasingly important with recently emerging HCC-predisposing conditions, namely non-alcoholic fatty liver disease and cured hepatitis C virus infection. These etiologies are accompanied with a relatively low HCC incidence rate (~1% per year or less), while affecting a large patient population. Hepatitis B virus infection remains a major HCC risk factor, but a majority of the patients are now on antiviral therapy, which substantially lowers, but does not eliminate, HCC risk. Thus, it is critically important to identify a small subset of patients who have elevated likelihood of developing HCC, to optimize the allocation of limited HCC screening resources to those who need it most and enable cost-effective early HCC diagnosis to prolong patient survival. To date, numerous clinical-variable-based HCC risk scores have been developed for specific clinical contexts defined by liver disease etiology, severity, and other factors. In parallel, various molecular features have been reported as potential HCC risk biomarkers, utilizing both tissue and body-fluid specimens. Deep-learning-based risk modeling is an emerging strategy. Although none of them has been widely incorporated in clinical care of liver disease patients yet, some have been undergoing the process of validation and clinical development. In this review, these risk scores and biomarker candidates are overviewed, and strategic issues in their validation and clinical translation are discussed.

摘要

随着最近出现的肝细胞癌(HCC)易感疾病,即非酒精性脂肪性肝病和丙型肝炎病毒感染治愈,预测HCC风险变得越来越重要。这些病因伴随着相对较低的HCC发病率(每年约1%或更低),同时影响着大量患者群体。乙型肝炎病毒感染仍然是主要的HCC危险因素,但现在大多数患者都在接受抗病毒治疗,这大大降低了但并未消除HCC风险。因此,识别一小部分发生HCC可能性升高的患者至关重要,以便将有限的HCC筛查资源优化分配给最需要的患者,并实现具有成本效益的早期HCC诊断以延长患者生存期。迄今为止,已经针对由肝病病因、严重程度和其他因素定义的特定临床背景开发了许多基于临床变量的HCC风险评分。同时,利用组织和体液标本,各种分子特征已被报道为潜在的HCC风险生物标志物。基于深度学习的风险建模是一种新兴策略。尽管它们都尚未广泛纳入肝病患者的临床护理中,但一些正在经历验证和临床开发过程。在本综述中,对这些风险评分和候选生物标志物进行了概述,并讨论了它们在验证和临床转化中的战略问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b53d/7761278/bed5344f48f0/jcm-09-03843-g001.jpg

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