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全基因组丙型肝炎病毒氨基酸协方差网络可预测人类对抗病毒治疗的反应。

Genome-wide hepatitis C virus amino acid covariance networks can predict response to antiviral therapy in humans.

作者信息

Aurora Rajeev, Donlin Maureen J, Cannon Nathan A, Tavis John E

机构信息

Department of Molecular Microbiology and Immunology, Saint Louis University School of Medicine, St. Louis, MO 63104, USA.

出版信息

J Clin Invest. 2009 Jan;119(1):225-36. doi: 10.1172/JCI37085. Epub 2008 Dec 22.

Abstract

Hepatitis C virus (HCV) is a common RNA virus that causes hepatitis and liver cancer. Infection is treated with IFN-alpha and ribavirin, but this expensive and physically demanding therapy fails in half of patients. The genomic sequences of independent HCV isolates differ by approximately 10%, but the effects of this variation on the response to therapy are unknown. To address this question, we analyzed amino acid covariance within the full viral coding region of pretherapy HCV sequences from 94 participants in the Viral Resistance to Antiviral Therapy of Chronic Hepatitis C (Virahep-C) clinical study. Covarying positions were common and linked together into networks that differed by response to therapy. There were 3-fold more hydrophobic amino acid pairs in HCV from nonresponding patients, and these hydrophobic interactions were predicted to contribute to failure of therapy by stabilizing viral protein complexes. Using our analysis to detect patterns within the networks, we could predict the outcome of therapy with greater than 95% coverage and 100% accuracy, raising the possibility of a prognostic test to reduce therapeutic failures. Furthermore, the hub positions in the networks are attractive antiviral targets because of their genetic linkage with many other positions that we predict would suppress evolution of resistant variants. Finally, covariance network analysis could be applicable to any virus with sufficient genetic variation, including most human RNA viruses.

摘要

丙型肝炎病毒(HCV)是一种常见的RNA病毒,可引发肝炎和肝癌。感染后通常采用α干扰素和利巴韦林进行治疗,但这种昂贵且对身体要求较高的疗法在半数患者中会失败。独立的HCV分离株的基因组序列差异约为10%,但这种变异对治疗反应的影响尚不清楚。为解决这一问题,我们分析了慢性丙型肝炎抗病毒治疗病毒耐药性(Virahep-C)临床研究中94名参与者治疗前HCV序列的完整病毒编码区内的氨基酸共变情况。共变位点很常见,并连接成因治疗反应不同而各异的网络。无反应患者的HCV中疏水氨基酸对的数量是有反应患者的3倍,预计这些疏水相互作用会通过稳定病毒蛋白复合物导致治疗失败。利用我们的分析来检测网络中的模式,我们能够以超过95%的覆盖率和100%的准确率预测治疗结果,这增加了通过预后测试减少治疗失败的可能性。此外,网络中的枢纽位点是有吸引力的抗病毒靶点,因为它们与许多其他位点存在遗传联系,我们预测这些位点会抑制耐药变异体的进化。最后,共变网络分析可能适用于任何具有足够遗传变异的病毒,包括大多数人类RNA病毒。

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