Univ Rennes, Inria, CNRS, IRISA, F-35000 Rennes, France;
Univ Rennes, Inria, CNRS, IRISA, F-35000 Rennes, France.
Genome Res. 2023 Jul 20;33(6):972-987. doi: 10.1101/gr.277056.122.
Comparative analysis of genome-scale metabolic networks (GSMNs) may yield important information on the biology, evolution, and adaptation of species. However, it is impeded by the high heterogeneity of the quality and completeness of structural and functional genome annotations, which may bias the results of such comparisons. To address this issue, we developed AuCoMe, a pipeline to automatically reconstruct homogeneous GSMNs from a heterogeneous set of annotated genomes without discarding available manual annotations. We tested AuCoMe with three data sets, one bacterial, one fungal, and one algal, and showed that it successfully reduces technical biases while capturing the metabolic specificities of each organism. Our results also point out shared and divergent metabolic traits among evolutionarily distant algae, underlining the potential of AuCoMe to accelerate the broad exploration of metabolic evolution across the tree of life.
对基因组规模代谢网络 (GSMN) 的比较分析可能会为物种的生物学、进化和适应提供重要信息。然而,这受到结构和功能基因组注释质量和完整性高度异质性的阻碍,这可能会使这些比较的结果产生偏差。为了解决这个问题,我们开发了 AuCoMe,这是一种从一组异构注释基因组中自动重建同质 GSMN 的管道,而不会丢弃可用的手动注释。我们使用三个数据集(一个细菌、一个真菌和一个藻类)对 AuCoMe 进行了测试,结果表明它成功地减少了技术偏差,同时捕捉到了每个生物体的代谢特异性。我们的结果还指出了进化上遥远的藻类之间共享和不同的代谢特征,这强调了 AuCoMe 具有加速跨生命之树广泛探索代谢进化的潜力。