利用StrandNGS软件对赫里福德公牛肝脏和垂体转录组生成的RNA-Seq数据进行质量控制评估

C. Pareek, Mateusz Sachajko, Adrian Szczepański, M. Buszewska-Forajta, K. Żarczyńska, P. Sobiech, E. Juszczuk-Kubiak, Q. Shahzad, Yangqing Lu, Magdalena Ogłuszka, E. Poławska, M. Pierzchała
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引用次数: 2

摘要

背景:质量控制(QC)评估是高通量RNA-seq数据分析中最关键的一步,以表征对基因组和转录组组装到给定参考基因组的深入了解。它不仅提供了对RNA-seq数据质量的快速洞察,以允许早期识别好的或坏的RNA-seq数据样本,而且还验证了比对QC检查,以进一步进行必要的高通量生物信息学分析,如鉴定新的遗传变异,差异表达基因(DEGs),基因网络和代谢途径。方法:从年轻赫里福德公牛的肝脏(n=15)和垂体(n=15)组织中分离总RNA后,使用GeneRead rRNA缺失试剂盒(Qiagen, Hilden,德国)对汇总的总RNA (n=30)进行片段化,使用ScriptSeq TM v2 RNA- seq文库制备试剂盒(Epicentre, illumina,美国)进行cDNA文库制备,然后使用MiSeq试剂盒v2 (illumina,获得251个碱基对(bps)的高质量成对末端RNA-seq reads。本文使用链NGS软件v1.3 (Agilent;;http://www.strand-ngs.com/)数据分析包。使用针对公牛和母牛基因组组装的默认设置,将读取与鲍蒂对齐。结果:使用两次MiSeq平台,共成功获得超过6000万个对端RNA-seq reads,并提交给NCBI SRA资源(https://www.ncbi.nlm.nih.gov/sra?linkname=bioproject_sra_all&from_uid=312148)。库复杂度图结果显示,72.02%的重复读取为低库复杂度值0.28。对原始RNA-seq数据进行预比对QC分析,发现序列长度在35 ~ 251 bp之间,超过50%的长度在200bp以上,10%的长度在100bp以下。结论:通过在Illumina平台上测试RNA-seq方法,两次MiSeq测序运行获得了显著的高质量,每次MiSeq运行可获得3000万个测序读数。我们最初的RNA-seq数据分析的前比对和后比对分析显示,成功地完成了赫里福德肝脏和垂体转录组与参考牛基因组的映射,然而,超过50%的长度超过200bp的读取被恢复。因此,所得结果表明,rRNA缺失法对肝脏和垂体转录组测序的效果不如mRNA RNA-seq法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quality control assessment of the RNA-Seq data generated from liver and pituitary transcriptome of Hereford bulls using StrandNGS software
Background : Quality control (QC) assessment is the most critical step in the high-throughput RNA-seq data analysis to characterize the in-depth understanding of genome and transcriptome assembling to a given reference genome. It provides not only a quick insight into the RNA-seq data quality to allow early identification of good or bad RNA-seq data samples, but also to verify the alignment QC checks for further essential high-throughput bioinformatics analysis such as, identification of novel genetic variants, differentially expressed genes (DEGs), gene network and metabolic pathways. Method : After isolation of total RNA from liver (n=15) and pituitary gland (n=15) tissues of young Hereford bulls, the pooled total RNA (n=30) were fragmented using GeneRead rRNA depletion kit (Qiagen, Hilden, Germany) and cDNA library preparation were preformed using ScriptSeq TM v2 RNA-Seq library preparation kit (Epicentre, illumina, USA), followed by high-throughput sequencing of combined liver and pituitary transcriptome using MiSeq reagent kit v2 (illumina, USA) to obtain high quality of paired-end RNA-seq reads of 251 base-pairs (bps). In this paper, the QC assessment of obtained RNA-seq raw data as well as post-alignment QC of processed RNA-seq data of combined liver and pituitary transcriptome (n=30) of Hereford bulls were performed using the strand NGS software v1.3 (Agilent; http://www.strand-ngs.com/ ) data analysis package. The reads were aligned with Bowtie using default settings against both Bull and Cow genome assembly. Results : Using two runs of MiSeq platform, a total of over 60 million paired-end RNA-seq reads were successfully obtained and submitted to NCBI SRA resources ( https://www.ncbi.nlm.nih.gov/sra?linkname=bioproject_sra_all&from_uid=312148 ). Library complexity plot results revealed 72.02% of duplicate reads with a low library complexity value of 0.28. The pre-alignment QC analysis of raw RNA-seq data revealed the sequence read lengths ranged from 35-251 bp size with more than 50% of all reads with length over 200bp and 10% of reads below 100bp. Conclusion : By testing the RNA-seq methodology on Illumina platform, two MiSeq sequencing runs yielded significantly high quality of 30 million sequencing reads per single MiSeq run. Our initial pre-alignment and post-alignment analysis of RNA-seq data analysis revealed that mapping of the Hereford liver and pituitary gland transcriptome to reference Bos taurus genome was successfully performed, however, more than 50% of all reads with length over 200bp were recovered. Therefore, obtained results concludes that liver and pituitary transcriptome sequencing with rRNA depletion method is less effective than mRNA RNA-seq method.
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