Institute of Interdisciplinary Integrative Medicine Research, Shanghai University of Traditional Chinese Medicine, Shanghai, China.
Key Laboratory of Systems Biology, Center for Excellence in Molecular Cell Science, Institute of Biochemistry and Cell Biology, Shanghai Institute of Biological Sciences, Chinese Academy of Sciences, Shanghai, China.
J Mol Cell Biol. 2019 Aug 19;11(8):665-677. doi: 10.1093/jmcb/mjz025.
Hepatitis B virus (HBV)-induced hepatocellular carcinoma (HCC) is a major cause of cancer-related deaths in Asia and Africa. Developing effective and non-invasive biomarkers of HCC for individual patients remains an urgent task for early diagnosis and convenient monitoring. Analyzing the transcriptomic profiles of peripheral blood mononuclear cells from both healthy donors and patients with chronic HBV infection in different states (i.e. HBV carrier, chronic hepatitis B, cirrhosis, and HCC), we identified a set of 19 candidate genes according to our algorithm of dynamic network biomarkers. These genes can both characterize different stages during HCC progression and identify cirrhosis as the critical transition stage before carcinogenesis. The interaction effects (i.e. co-expressions) of candidate genes were used to build an accurate prediction model: the so-called edge-based biomarker. Considering the convenience and robustness of biomarkers in clinical applications, we performed functional analysis, validated candidate genes in other independent samples of our collected cohort, and finally selected COL5A1, HLA-DQB1, MMP2, and CDK4 to build edge panel as prediction models. We demonstrated that the edge panel had great performance in both diagnosis and prognosis in terms of precision and specificity for HCC, especially for patients with alpha-fetoprotein-negative HCC. Our study not only provides a novel edge-based biomarker for non-invasive and effective diagnosis of HBV-associated HCC to each individual patient but also introduces a new way to integrate the interaction terms of individual molecules for clinical diagnosis and prognosis from the network and dynamics perspectives.
乙型肝炎病毒(HBV)诱导的肝细胞癌(HCC)是亚洲和非洲癌症相关死亡的主要原因。为个体患者开发有效的、非侵入性的 HCC 生物标志物,用于早期诊断和方便监测,仍然是一项紧迫的任务。我们分析了来自健康供体和处于不同状态(即 HBV 携带者、慢性乙型肝炎、肝硬化和 HCC)的慢性 HBV 感染者的外周血单个核细胞的转录组谱,根据我们的动态网络生物标志物算法,确定了一组 19 个候选基因。这些基因既能描绘 HCC 进展过程中的不同阶段,又能确定肝硬化是癌变前的关键过渡阶段。候选基因的相互作用(即共表达)用于构建准确的预测模型:即所谓的基于边缘的生物标志物。考虑到生物标志物在临床应用中的方便性和稳健性,我们进行了功能分析,在我们收集的队列的其他独立样本中验证了候选基因,最终选择 COL5A1、HLA-DQB1、MMP2 和 CDK4 构建边缘面板作为预测模型。我们证明,边缘面板在 HCC 的诊断和预后方面具有很高的性能,在精确度和特异性方面都优于 AFP 阴性 HCC 患者。我们的研究不仅为每个个体患者提供了一种新型的基于边缘的生物标志物,用于非侵入性和有效的 HBV 相关 HCC 诊断,而且还从网络和动力学角度为临床诊断和预后引入了一种整合个体分子相互作用项的新方法。