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A stochastic model of the processes in PCR based amplification of STR DNA in forensic applications

机译:法医学应用中基于PCR的STR DNA扩增过程的随机模型

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In forensic DNA profiling use is made of the well-known technique of PCR. When the amount of DNA is high, generally unambiguous profiles can be obtained, but for low copy number DNA stochastic effects can play a major role. In order to shed light on these stochastic effects, we present a simple model for the amplification process. According to the model, three possible things can happen to an individual single DNA strand in each complete cycle: successful amplification, no amplification, or amplification with the introduction of stutter. The model is developed in mathematical terms using a recursive approach: given the numbers of chains at a given cycle, the numbers in the next can be described using a multinomial probability distribution. A full set of recursive relations is derived for the expectations and (co)variances of the number of amplicon chains with no, 1 or 2 stutters. The exact mathematical solutions of this set are given, revealing the development of the expectations and (co)variances as function of the cycle number. The equations reveal that the expected number of amplicon chains without stutter grows exponentially with the cycle number, but for the chains with stutter the relation is more complex. The relative standard deviation on the numbers of chains (coefficient of variation) is inversely proportional to the square root of the expected number of DNA strands entering the amplification. As such, for high copy number DNA the stochastic effects can be ignored, but they play an important role at low concentrations. For the allelic peak, the coefficient of variation rapidly stabilizes after a few cycles, but for the chains with stutter the decrease is more slowly. Further, the ratio of the expected intensity of the stutter peak over that of the allelic peak increases linearly with the number of cycles. Stochastic models, like the one developed in the current paper, can be important in further developing interpretation rules in a Bayesian context.
机译:在法医DNA分析中,使用了众所周知的PCR技术。当DNA的数量很高时,通常可以获得明确的概况,但是对于低拷贝数,DNA的随机效应可能起主要作用。为了阐明这些随机效应,我们提出了一个简单的扩增过程模型。根据该模型,每个完整循环中的单个DNA链可能发生三种情况:成功扩增,不扩增或引入口吃而扩增。该模型是使用递归方法以数学术语开发的:给定循环中的链数,则下一个数可以使用多项式概率分布来描述。对于没有,有1个或2个口吃的扩增子链的数量的期望和(协)方差,得出了完整的递归关系。给出了该集合的精确数学解,揭示了期望和(协)方差随循环数的变化。这些方程表明,不带口吃的扩增子链的预期数目随循环数成指数增长,但对于带口吃的扩增子链,其关系更为复杂。链数的相对标准偏差(变异系数)与进入扩增的预期DNA链数的平方根成反比。因此,对于高拷贝数的DNA,随机效应可以忽略不计,但在低浓度下它们起着重要的作用。对于等位基因峰,变异系数在几个循环后迅速稳定下来,但是对于有口吃的链,下降的速度更慢。此外,口吃峰的预期强度与等位基因峰的预期强度之比随循环数线性增加。像当前的论文一样,随机模型对于进一步发展贝叶斯环境下的解释规则也很重要。

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