Villalobos Solis Manuel I, Chirania Payal, Hettich Robert L
Biosciences Division, Oak Ridge National Laboratory, Oak Ridge, TN, 37831, USA.
UT-ORNL Graduate School of Genome Science and Technology, University of Tennessee, Knoxville, TN, 37996, USA.
Biotechnol Biofuels Bioprod. 2022 Mar 18;15(1):32. doi: 10.1186/s13068-022-02125-x.
Microbial-driven solubilization of lignocellulosic material is a natural mechanism that is exploited in anaerobic digesters (ADs) to produce biogas and other valuable bioproducts. Glycoside hydrolases (GHs) are the main enzymes that bacterial and archaeal populations use to break down complex polysaccharides in these reactors. Methodologies for rapidly screening the physical presence and types of GHs can provide information about their functional activities as well as the taxonomical diversity within AD systems but are largely unavailable. Targeted proteomic methods could potentially be used to provide snapshots of the GHs expressed by microbial consortia in ADs, giving valuable insights into the functional lignocellulolytic degradation diversity of a community. Such observations would be essential to evaluate the hydrolytic performance of a reactor or potential issues with it.
As a proof of concept, we performed an in silico selection and evaluation of groups of tryptic peptides from five important GH families derived from a dataset of 1401 metagenome-assembled genomes (MAGs) in anaerobic digesters. Following empirical rules of peptide-based targeted proteomics, we selected groups of shared peptides among proteins within a GH family while at the same time being unique compared to all other background proteins. In particular, we were able to identify a tractable unique set of peptides that were sufficient to monitor the range of GH families. While a few thousand peptides would be needed for comprehensive characterization of the main GH families, we found that at least 50% of the proteins in these families (such as the key families) could be tracked with only 200 peptides. The unique peptides selected for groups of GHs were found to be sufficient for distinguishing enzyme specificity or microbial taxonomy. These in silico results demonstrate the presence of specific unique GH peptides even in a highly diverse and complex microbiome and reveal the potential for development of targeted metaproteomic approaches in ADs or lignocellulolytic microbiomes. Such an approach could be valuable for estimating molecular-level enzymatic capabilities and responses of microbial communities to different substrates or conditions, which is a critical need in either building or utilizing constructed communities or defined cultures for bio-production.
This in silico study demonstrates the peptide selection strategy for quantifying relevant groups of GH proteins in a complex anaerobic microbiome and encourages the development of targeted metaproteomic approaches in fermenters. The results revealed that targeted metaproteomics could be a feasible approach for the screening of cellulolytic enzyme capacities for a range of anaerobic microbiome fermenters and thus could assist in bioreactor evaluation and optimization.
微生物驱动的木质纤维素材料溶解是一种自然机制,厌氧消化器(ADs)利用该机制生产沼气和其他有价值的生物产品。糖苷水解酶(GHs)是细菌和古菌群体用于分解这些反应器中复杂多糖的主要酶。快速筛选GHs的物理存在和类型的方法可以提供有关其功能活性以及AD系统内分类多样性的信息,但目前大多无法获得。靶向蛋白质组学方法有可能用于提供ADs中微生物群落表达的GHs的快照,从而深入了解群落功能性木质纤维素降解的多样性。此类观察对于评估反应器的水解性能或其潜在问题至关重要。
作为概念验证,我们对来自厌氧消化器中1401个宏基因组组装基因组(MAGs)数据集的五个重要GH家族的胰蛋白酶肽组进行了计算机模拟选择和评估。遵循基于肽的靶向蛋白质组学的经验规则,我们在一个GH家族内的蛋白质中选择了共享肽组,同时与所有其他背景蛋白质相比具有独特性。特别是,我们能够识别出一组易于处理的独特肽,足以监测GH家族的范围。虽然全面表征主要GH家族需要数千个肽,但我们发现这些家族中至少50%的蛋白质(如关键家族)仅用200个肽就可以追踪。为GH组选择的独特肽被发现足以区分酶的特异性或微生物分类。这些计算机模拟结果表明,即使在高度多样和复杂的微生物群中也存在特定的独特GH肽,并揭示了在ADs或木质纤维素分解微生物群中开发靶向宏蛋白质组学方法的潜力。这种方法对于估计分子水平的酶能力以及微生物群落对不同底物或条件的反应可能很有价值,这是构建或利用构建群落或特定培养物进行生物生产的关键需求。
这项计算机模拟研究展示了在复杂厌氧微生物群中量化相关GH蛋白组的肽选择策略,并鼓励在发酵罐中开发靶向宏蛋白质组学方法。结果表明,靶向宏蛋白质组学可能是一种可行的方法,用于筛选一系列厌氧微生物群发酵罐的纤维素分解酶能力,从而有助于生物反应器的评估和优化。