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Co-expression networks in Chlamydomonas reveal significant rhythmicity in batch cultures and empower gene function discovery

机译:衣原体中的共表达网络在批量培养物中显示出显着的节奏和赋予基因功能发现

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The unicellular green alga Chlamydomonas reinhardtii is a choice reference system for the study of photosynthesis and chloroplast metabolism, cilium assembly and function, lipid and starch metabolism, and metal homeostasis. Despite decades of research, the functions of thousands of genes remain largely unknown, and new approaches are needed to categorically assign genes to cellular pathways. Growing collections of transcriptome and proteome data now allow a systematic approach based on integrative co-expression analysis. We used a dataset comprising 518 deep transcriptome samples derived from 58 independent experiments to identify potential co-expression relationships between genes. We visualized co-expression potential with the R package corrplot, to easily assess co-expression and anti-correlation between genes. We extracted several hundred high-confidence genes at the intersection of multiple curated lists involved in cilia, cell division, and photosynthesis, illustrating the power of our method. Surprisingly, Chlamydomonas experiments retained a significant rhythmic component across the transcriptome, suggesting an underappreciated variable during sample collection, even in samples collected in constant light. Our results therefore document substantial residual synchronization in batch cultures, contrary to assumptions of asynchrony. We provide step-by-step protocols for the analysis of co-expression across transcriptome data sets from Chlamydomonas and other species to help foster gene function discovery.
机译:单细胞绿藻莱茵衣藻(Chlamydomonas reinhardtii)是研究光合作用和叶绿体代谢、纤毛组装和功能、脂质和淀粉代谢以及金属稳态的首选参考系统。尽管进行了几十年的研究,但数千个基因的功能在很大程度上仍然未知,需要新的方法将基因分类分配给细胞途径。越来越多的转录组和蛋白质组数据现在允许基于整合共表达分析的系统方法。我们使用了一个包含518个来自58个独立实验的深层转录组样本的数据集,以确定基因之间潜在的共表达关系。我们用R软件包corrplot可视化共表达潜能,以轻松评估基因间的共表达和反相关。我们在涉及纤毛、细胞分裂和光合作用的多个精选列表的交叉处提取了数百个高置信度基因,说明了我们方法的威力。令人惊讶的是,衣藻实验在整个转录组中保留了一个重要的节律成分,这表明在样本采集过程中,甚至在恒定光照下采集的样本中,也存在一个未被充分认识的变量。因此,我们的结果记录了批处理文化中大量的剩余同步,这与异步假设相反。我们为衣藻和其他物种的转录组数据集的共表达分析提供了分步方案,以帮助促进基因功能发现。

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