首页> 外文期刊>The Royal Society Proceedings B: Biological Sciences >Significance testing of clinical data using virus dynamics models with a Markov chain Monte Carlo method: application to emergence of lamivudine-resistant hepatitis B virus.
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Significance testing of clinical data using virus dynamics models with a Markov chain Monte Carlo method: application to emergence of lamivudine-resistant hepatitis B virus.

机译:使用马尔可夫链蒙特卡洛方法的病毒动力学模型对临床数据进行重要检验:在耐拉米夫定的乙型肝炎病毒出现中的应用。

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摘要

Bayesian analysis using a virus dynamics model is demonstrated to facilitate hypothesis testing of patterns in clinical time-series. Our Markov chain Monte Carlo implementation demonstrates that the viraemia time-series observed in two sets of hepatitis B patients on antiviral (lamivudine) therapy, chronic carriers and liver transplant patients, are significantly different, overcoming clinical trial design differences that question the validity of non-parametric tests. We show that lamivudine-resistant mutants grow faster in transplant patients than in chronic carriers, which probably explains the differences in emergence times and failure rates between these two sets of patients. Incorporation of dynamic models into Bayesian parameter analysis is of general applicability in medical statistics.
机译:已证明使用病毒动力学模型进行贝叶斯分析有助于在临床时间序列中对模式进行假设检验。我们的马尔可夫链蒙特卡洛方法的实施证明,在两组接受抗病毒(拉米夫定)治疗的乙型肝炎患者,慢性携带者和肝移植患者中观察到的病毒血症时间序列存在显着差异,从而克服了对临床试验设计有效性提出质疑的临床差异。参数测试。我们表明,拉米夫定耐药的突变体在移植患者中的生长比在慢性携带者中更快,这可能解释了这两组患者在出现时间和失败率上的差异。将动态模型合并到贝叶斯参数分析中在医学统计中具有普遍的适用性。

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