Department of Psychiatry, Virginia Institute for Psychiatric and Behavioral Genetics, Medical College of Virginia of Virginia Commonwealth University, Richmond, VA, USA.
Brief Bioinform. 2013 Jan;14(1):36-45. doi: 10.1093/bib/bbs010. Epub 2012 Mar 24.
Deep sequencing has become a popular tool for novel miRNA detection but its data must be viewed carefully as the state of the field is still undeveloped. Using three different programs, miRDeep (v1, 2), miRanalyzer and DSAP, we have analyzed seven data sets (six biological and one simulated) to provide a critical evaluation of the programs performance. We selected these software based on their popularity and overall approach toward the detection of novel and known miRNAs using deep-sequencing data. The program comparisons suggest that, despite differing stringency levels they all identify a similar set of known and novel predictions. Comparisons between the first and second version of miRDeep suggest that the stringency level of each of these programs may, in fact, be a result of the algorithm used to map the reads to the target. Different stringency levels are likely to affect the number of possible novel candidates for functional verification, causing undue strain on resources and time. With that in mind, we propose that an intersection across multiple programs be taken, especially if considering novel candidates that will be targeted for additional analysis. Using this approach, we identify and performed initial validation of 12 novel predictions in our in-house data with real-time PCR, six of which have been previously unreported.
深度测序已成为一种用于检测新 miRNA 的流行工具,但由于该领域的现状仍未得到充分发展,因此必须仔细观察其数据。我们使用三个不同的程序,miRDeep(v1、2)、miRanalyzer 和 DSAP,分析了七个数据集(六个生物学数据集和一个模拟数据集),以对这些程序的性能进行批判性评估。我们选择这些软件是基于它们的流行程度和使用深度测序数据检测新的和已知 miRNA 的整体方法。程序比较表明,尽管它们的严格程度不同,但它们都确定了一组相似的已知和新的预测。miRDeep 的第一版和第二版之间的比较表明,这些程序中的每一个的严格程度实际上可能是用于将读取映射到目标的算法的结果。不同的严格程度可能会影响可用于功能验证的新候选物的数量,从而给资源和时间带来不必要的压力。考虑到这一点,我们建议对多个程序进行交叉检查,特别是在考虑要进行额外分析的新候选物时。使用这种方法,我们通过实时 PCR 鉴定并初步验证了我们内部数据中的 12 个新预测,其中有 6 个以前未报道过。