Zukurov Jean P, do Nascimento-Brito Sieberth, Volpini Angela C, Oliveira Guilherme C, Janini Luiz Mario R, Antoneli Fernando
Departmento de Medicina, Escola Paulista de Medicina (EPM), Universidade Federal de São Paulo (UNIFESP), São Paulo, Brazil.
Departamento de Microbiologia, Imunologia e Parasitologia, Escola Paulista de Medicina (EPM), Universidade Federal de São Paulo (UNIFESP), São Paulo, Brazil ; Departamento de Microbiologia e Imunologia Veterinária, Universidade Federal Rural do Rio de Janeiro (UFRRJ), Rio de Janeiro, Brazil.
Algorithms Mol Biol. 2016 Mar 11;11:2. doi: 10.1186/s13015-016-0064-x. eCollection 2016.
In this paper we propose a method and discuss its computational implementation as an integrated tool for the analysis of viral genetic diversity on data generated by high-throughput sequencing. The main motivation for this work is to better understand the genetic diversity of viruses with high rates of nucleotide substitution, as HIV-1 and Influenza. Most methods for viral diversity estimation proposed so far are intended to take benefit of the longer reads produced by some next-generation sequencing platforms in order to estimate a population of haplotypes which represent the diversity of the original population. The method proposed here is custom-made to take advantage of the very low error rate and extremely deep coverage per site, which are the main features of some neglected technologies that have not received much attention due to the short length of its reads, which precludes haplotype estimation. This approach allowed us to avoid some hard problems related to haplotype reconstruction (need of long reads, preliminary error filtering and assembly).
We propose to measure genetic diversity of a viral population through a family of multinomial probability distributions indexed by the sites of the virus genome, each one representing the distribution of nucleic bases per site. Moreover, the implementation of the method focuses on two main optimization strategies: a read mapping/alignment procedure that aims at the recovery of the maximum possible number of short-reads; the inference of the multinomial parameters in a Bayesian framework with smoothed Dirichlet estimation. The Bayesian approach provides conditional probability distributions for the multinomial parameters allowing one to take into account the prior information of the control experiment and providing a natural way to separate signal from noise, since it automatically furnishes Bayesian confidence intervals and thus avoids the drawbacks of preliminary error filtering.
The methods described in this paper have been implemented as an integrated tool called Tanden (Tool for Analysis of Diversity in Viral Populations) and successfully tested on samples obtained from HIV-1 strain NL4-3 (group M, subtype B) cultivations on primary human cell cultures in many distinct viral propagation conditions. Tanden is written in C# (Microsoft), runs on the Windows operating system, and can be downloaded from: http://tanden.url.ph/.
在本文中,我们提出了一种方法,并讨论了其作为分析高通量测序产生数据的病毒遗传多样性的综合工具的计算实现。这项工作的主要动机是更好地理解具有高核苷酸替代率的病毒(如HIV-1和流感病毒)的遗传多样性。到目前为止提出的大多数病毒多样性估计方法旨在利用一些下一代测序平台产生的较长读段,以估计代表原始群体多样性的单倍型群体。这里提出的方法是定制的,以利用极低的错误率和每个位点极高的覆盖深度,这是一些被忽视技术的主要特征,由于其读段长度短而未受到太多关注,这排除了单倍型估计。这种方法使我们能够避免一些与单倍型重建相关的难题(需要长读段、初步错误过滤和组装)。
我们建议通过一族由病毒基因组位点索引的多项概率分布来测量病毒群体的遗传多样性,每个分布代表每个位点核酸碱基的分布。此外,该方法的实现侧重于两个主要的优化策略:一个读段映射/比对程序,旨在恢复尽可能多的短读段;在具有平滑狄利克雷估计的贝叶斯框架中对多项参数进行推断。贝叶斯方法为多项参数提供条件概率分布,允许考虑对照实验的先验信息,并提供一种将信号与噪声分离的自然方法,因为它自动提供贝叶斯置信区间,从而避免了初步错误过滤的缺点。
本文所述方法已作为一个名为Tanden(病毒群体多样性分析工具)的综合工具实现,并在许多不同病毒传播条件下,对从原代人细胞培养物中HIV-1毒株NL4-3(M组,B亚型)培养物获得的样本进行了成功测试。Tanden用C#(微软)编写,在Windows操作系统上运行,可从以下网址下载:http://tanden.url.ph/ 。