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Phylotranscriptomic Analysis Based on Coalescence was Less Influenced by the Evolving Rates and the Number of Genes: A Case Study in Ericales

机译:基于合并的植物转录组学分析受进化速率和基因数目的影响较小:以埃里卡利斯为例

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摘要

Advances in high-throughput sequencing have generated a vast amount of transcriptomic data that are being increasingly used in phylogenetic reconstruction. However, processing the vast datasets for a huge number of genes and even identifying optimal analytical methodology are challenging. Through de novo sequenced and retrieved data from public databases, we identified 221 orthologous protein-coding genes to reconstruct the phylogeny of Ericales, an order characterized by rapid ancient radiation. Seven species representing different families in Ericales were used as in-groups. Both concatenation and coalescence methods yielded the same well-supported topology as previous studies, with only two nodes conflicting with previously reported relationships. The results revealed that a partitioning strategy could improve the traditional concatenation methodology. Rapidly evolving genes negatively affected the concatenation analysis, while slowly evolving genes slightly affected the coalescence analysis. The coalescence methods usually accommodated rate heterogeneity better and required fewer genes to yield well-supported topologies than the concatenation methods with both real and simulated data.
机译:高通量测序的进展已产生了大量转录组数据,这些数据正越来越多地用于系统发育重建中。但是,处理大量基因的庞大数据集甚至确定最佳分析方法都具有挑战性。通过从公共数据库中从头开始的测序和检索数据,我们鉴定了221个直系同源蛋白编码基因,以重建Ericales的系统发育,该特征以快速的古代辐射为特征。代表埃里卡利斯不同科的七个物种被作为一组。级联和合并方法都产生了与先前研究相同的拓扑结构,只有两个节点与先前报告的关系冲突。结果表明,分区策略可以改善传统的串联方法。快速进化的基因对串联分析产生负面影响,而缓慢进化的基因则对合并分析产生轻微影响。与具有真实数据和模拟数据的串联方法相比,合并方法通常可以更好地适应速率异质性,并且需要较少的基因来产生良好支持的拓扑。

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