University of Navarra, Tecnun School of Engineering, Manuel de Lardizábal 13, 20018, San Sebastián, Spain.
University of Navarra, Biomedical Engineering Center, Campus Universitario, 31009, Pamplona, Navarra, Spain.
NPJ Syst Biol Appl. 2024 May 27;10(1):56. doi: 10.1038/s41540-024-00381-1.
Despite significant advances in reconstructing genome-scale metabolic networks, the understanding of cellular metabolism remains incomplete for many organisms. A promising approach for elucidating cellular metabolism is analysing the full scope of enzyme promiscuity, which exploits the capacity of enzymes to bind to non-annotated substrates and generate novel reactions. To guide time-consuming costly experimentation, different computational methods have been proposed for exploring enzyme promiscuity. One relevant algorithm is PROXIMAL, which strongly relies on KEGG to define generic reaction rules and link specific molecular substructures with associated chemical transformations. Here, we present a completely new pipeline, PROXIMAL2, which overcomes the dependency on KEGG data. In addition, PROXIMAL2 introduces two relevant improvements with respect to the former version: i) correct treatment of multi-step reactions and ii) tracking of electric charges in the transformations. We compare PROXIMAL and PROXIMAL2 in recovering annotated products from substrates in KEGG reactions, finding a highly significant improvement in the level of accuracy. We then applied PROXIMAL2 to predict degradation reactions of phenolic compounds in the human gut microbiota. The results were compared to RetroPath RL, a different and relevant enzyme promiscuity method. We found a significant overlap between these two methods but also complementary results, which open new research directions into this relevant question in nutrition.
尽管在重建基因组规模的代谢网络方面取得了重大进展,但对于许多生物体,细胞代谢的理解仍然不完整。阐明细胞代谢的一种很有前途的方法是分析酶多功能性的全貌,它利用了酶结合非注释底物并产生新反应的能力。为了指导耗时且昂贵的实验,已经提出了不同的计算方法来探索酶多功能性。一种相关的算法是 PROXIMAL,它强烈依赖于 KEGG 来定义通用反应规则,并将特定的分子亚结构与相关的化学转化联系起来。在这里,我们提出了一个全新的管道 PROXIMAL2,它克服了对 KEGG 数据的依赖。此外,PROXIMAL2 相对于前一个版本有两个相关的改进:i)正确处理多步反应,ii)在转化中跟踪电荷。我们比较了 PROXIMAL 和 PROXIMAL2 在从 KEGG 反应中的底物中恢复注释产物的能力,发现准确性水平有了显著提高。然后,我们将 PROXIMAL2 应用于预测人类肠道微生物群中酚类化合物的降解反应。将结果与 RetroPath RL 进行了比较,RetroPath RL 是一种不同的、相关的酶多功能性方法。我们发现这两种方法之间有显著的重叠,但也有互补的结果,这为营养领域的这一相关问题开辟了新的研究方向。