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A theoretical and generalized approach for the assessment of the sample-specific limit of detection for clinical metagenomics

机译:评估临床偏心神经检测样本特异性限制的理论和广义方法

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摘要

Metagenomics is a powerful tool to identify novel or unexpected pathogens, since it is generic and relatively unbiased. The limit of detection (LOD) is a critical parameter for the routine application of methods in the clinical diagnostic context. Although attempts for the determination of LODs for metagenomics next-generation sequencing (mNGS) have been made previously, these were only applicable for specific target species in defined samples matrices. Therefore, we developed and validated a generalized probability-based model to assess the sample-specific LOD of mNGS experiments (LODmNGS). Initial rarefaction analyses with datasets of Borna disease virus 1 human encephalitis cases revealed a stochastic behavior of virus read detection. Based on this, we transformed the Bernoulli formula to predict the minimal necessary dataset size to detect one virus read with a probability of 99%. We validated the formula with 30 datasets from diseased individuals, resulting in an accuracy of 99.1% and an average of 4.5 ± 0.4 viral reads found in the calculated minimal dataset size. We demonstrated by modeling the virus genome size, virus-, and total RNA-concentration that the main determinant of mNGS sensitivity is the virus-sample background ratio. The predicted LODmNGS for the respective pathogenic virus in the datasets were congruent with the virus-concentration determined by RT-qPCR. Theoretical assumptions were further confirmed by correlation analysis of mNGS and RT-qPCR data from the samples of the analyzed datasets. This approach should guide standardization of mNGS application, due to the generalized concept of LODmNGS.
机译:Metagenomics是一种识别新颖或意外病原体的强大工具,因为它是通用的并且相对无偏见。检测限(LOD)是用于临床诊断背景下的方法的常规应用的关键参数。尽管先前已经制备了用于测定映射下一代测序(MNG)的LOD的尝试,但是这些仅适用于定义样品基质中的特定靶种。因此,我们开发并验证了一种基于概率的模型,以评估MNGS实验的样本特异性宿潮(LODMNG)。初始稀疏分析与诞生疾病病毒的数据集1人体脑炎病例揭示了病毒读取检测的随机行为。基于此,我们转换了Bernoulli公式,以预测最小的必要数据集大小,以检测一个病毒读取的概率为99%。我们验证了来自患病个体的30个数据集的公式,在计算的最小数据集大小中产生了99.1%的准确度,平均为4.5±0.4病毒读数。我们通过模拟病毒基因组大小,病毒和总RNA浓度来证明,即MNGS敏感性的主要决定因子是病毒样本背景比。数据集中的各自致病病毒的预测的Lodmngs与RT-QPCR测定的病毒浓度一致。通过来自分析的数据集的样本的MNGS和RT-QPCR数据的相关性分析进一步证实了理论假设。由于Lodmngs的广义概念,这种方法应该指导MNGS应用的标准化。

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