LSTrAP-denovo:自动生成无基因组真核生物物种的转录组图谱。

IF 5.4 2区 生物学 Q1 PLANT SCIENCES Physiologia plantarum Pub Date : 2024-07-01 DOI:10.1111/ppl.14407
Peng Ken Lim, Ruoxi Wang, Marek Mutwil
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引用次数: 0

摘要

尽管拥有转录组数据的物种很多,但仍有大量物种缺乏已测序的基因组,因此很难研究这些生物的基因功能和表达。虽然从头开始的转录组组装可用于从 RNA 序列(RNA-seq)数据中组装编码蛋白质的转录本,但所使用的数据集往往只有任意选择或类似实验条件下的样本,可能无法捕获特定条件下的转录本。我们开发了用于从头组装转录本的大规模转录本组组装管道(LSTrAP-denovo),以自动生成真核生物物种的转录本组图谱。具体来说,给定一个 NCBI TaxID,LSTrAP-denovo 可以:(1)根据读取数据过滤不需要的 RNA-seq 序列;(2)通过无监督机器学习选择 RNA-seq 序列,构建一个样本平衡的数据集供下载;(3)通过过度组装组装转录本;(4)从组装的转录本中对编码序列(CDS)进行功能注释;(5)以表达矩阵的形式生成转录组图谱,用于下游转录组分析。LSTrAP-denovo 易于实现,用 Python 编写,可在 https://github.com/pengkenlim/LSTrAP-denovo/ 免费获取。
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LSTrAP-denovo: Automated Generation of Transcriptome Atlases for Eukaryotic Species Without Genomes.

Despite the abundance of species with transcriptomic data, a significant number of species still lack sequenced genomes, making it difficult to study gene function and expression in these organisms. While de novo transcriptome assembly can be used to assemble protein-coding transcripts from RNA-sequencing (RNA-seq) data, the datasets used often only feature samples of arbitrarily selected or similar experimental conditions, which might fail to capture condition-specific transcripts. We developed the Large-Scale Transcriptome Assembly Pipeline for de novo assembled transcripts (LSTrAP-denovo) to automatically generate transcriptome atlases of eukaryotic species. Specifically, given an NCBI TaxID, LSTrAP-denovo can (1) filter undesirable RNA-seq accessions based on read data, (2) select RNA-seq accessions via unsupervised machine learning to construct a sample-balanced dataset for download, (3) assemble transcripts via over-assembly, (4) functionally annotate coding sequences (CDS) from assembled transcripts and (5) generate transcriptome atlases in the form of expression matrices for downstream transcriptomic analyses. LSTrAP-denovo is easy to implement, written in Python, and is freely available at https://github.com/pengkenlim/LSTrAP-denovo/.

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来源期刊
Physiologia plantarum
Physiologia plantarum 生物-植物科学
CiteScore
11.00
自引率
3.10%
发文量
224
审稿时长
3.9 months
期刊介绍: Physiologia Plantarum is an international journal committed to publishing the best full-length original research papers that advance our understanding of primary mechanisms of plant development, growth and productivity as well as plant interactions with the biotic and abiotic environment. All organisational levels of experimental plant biology – from molecular and cell biology, biochemistry and biophysics to ecophysiology and global change biology – fall within the scope of the journal. The content is distributed between 5 main subject areas supervised by Subject Editors specialised in the respective domain: (1) biochemistry and metabolism, (2) ecophysiology, stress and adaptation, (3) uptake, transport and assimilation, (4) development, growth and differentiation, (5) photobiology and photosynthesis.
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