Yu Shi-Rui, Zhang Yuan-Ye, Zhang Quan-Guo
State Key Laboratory of Earth Surface Processes and Resource Ecology and MOE Key Laboratory for Biodiversity Science and Ecological Engineering, Beijing Normal University, Beijing, China.
Key Laboratory of the Ministry of Education for Coastal and Wetland Ecosystems, College of the Environment and Ecology, Xiamen University, Xiamen, Fujian, China.
Front Microbiol. 2023 Sep 29;14:1257935. doi: 10.3389/fmicb.2023.1257935. eCollection 2023.
The potential for artificial selection at the community level to improve ecosystem functions has received much attention in applied microbiology. However, we do not yet understand what conditions in general allow for successful artificial community selection. Here we propose six hypotheses about factors that determine the effectiveness of artificial microbial community selection, based on previous studies in this field and those on multilevel selection. In particular, we emphasize selection strategies that increase the variance among communities. We then report a meta-analysis of published artificial microbial community selection experiments. The reported responses to community selection were highly variable among experiments; and the overall effect size was not significantly different from zero. The effectiveness of artificial community selection was greater when there was no migration among communities, and when the number of replicated communities subjected to selection was larger. The meta-analysis also suggests that the success of artificial community selection may be contingent on multiple necessary conditions. We argue that artificial community selection can be a promising approach, and suggest some strategies for improving the performance of artificial community selection programs.
在应用微生物学领域,群落水平上的人工选择改善生态系统功能的潜力已备受关注。然而,我们尚不清楚一般情况下哪些条件能使人工群落选择成功。基于该领域先前的研究以及多层次选择的研究,我们提出了六个关于决定人工微生物群落选择有效性因素的假设。特别地,我们强调增加群落间差异的选择策略。然后,我们报告了已发表的人工微生物群落选择实验的荟萃分析。各实验中报道的对群落选择的反应差异很大;总体效应量与零无显著差异。当群落间无迁移且接受选择的重复群落数量较多时,人工群落选择的有效性更高。荟萃分析还表明,人工群落选择的成功可能取决于多个必要条件。我们认为人工群落选择可能是一种有前景的方法,并提出了一些提高人工群落选择计划性能的策略。