Department of Laboratory Medicine, Jinan Military General Hospital, Jinan, Shandong 250031, China.
Biomed Res Int. 2013;2013:814876. doi: 10.1155/2013/814876. Epub 2013 Feb 19.
Chronic infection with hepatitis B virus (HBV) is associated with the majority of cases of liver cirrhosis (LC) in China. Although liver biopsy is the reference method for evaluation of cirrhosis, it is an invasive procedure with inherent risk. The aim of this study is to discover novel noninvasive specific serum biomarkers for the diagnosis of HBV-induced LC. We performed bead fractionation/MALDI-TOF MS analysis on sera from patients with LC. Thirteen feature peaks which had optimal discriminatory performance were obtained by using support-vector-machine-(SVM-) based strategy. Based on the previous results, five supervised machine learning methods were employed to construct classifiers that discriminated proteomic spectra of patients with HBV-induced LC from those of controls. Here, we describe two novel methods for prediction of HBV-induced LC, termed LC-NB and LC-MLP, respectively. We obtained a sensitivity of 90.9%, a specificity of 94.9%, and overall accuracy of 93.8% on an independent test set. Comparisons with the existing methods showed that LC-NB and LC-MLP held better accuracy. Our study suggests that potential serum biomarkers can be determined for discriminating LC and non-LC cohorts by using matrix-assisted laser desorption/ionization time-of-flight mass spectrometry. These two classifiers could be used for clinical practice in HBV-induced LC assessment.
慢性乙型肝炎病毒 (HBV) 感染与中国大多数肝硬化 (LC) 病例有关。虽然肝活检是评估肝硬化的参考方法,但它是一种具有固有风险的侵入性程序。本研究旨在发现用于诊断 HBV 诱导的 LC 的新型非侵入性特异性血清生物标志物。我们对 LC 患者的血清进行了珠粒分离/MALDI-TOF MS 分析。通过使用基于支持向量机 (SVM) 的策略,获得了具有最佳区分性能的 13 个特征峰。基于先前的结果,使用了五种监督机器学习方法来构建分类器,以区分 HBV 诱导的 LC 患者的蛋白质组谱与对照组。在这里,我们描述了两种用于预测 HBV 诱导的 LC 的新方法,分别称为 LC-NB 和 LC-MLP。在独立测试集中,我们获得了 90.9%的敏感性、94.9%的特异性和 93.8%的总体准确性。与现有方法的比较表明,LC-NB 和 LC-MLP 的准确性更高。我们的研究表明,通过基质辅助激光解吸/电离飞行时间质谱可以确定潜在的血清生物标志物来区分 LC 和非 LC 队列。这两个分类器可用于 HBV 诱导的 LC 评估的临床实践。