{"title":"利用基因组数据预测新环境适应不良的准确性。","authors":"Brandon M Lind, Katie E Lotterhos","doi":"10.1111/1755-0998.14008","DOIUrl":null,"url":null,"abstract":"<p><p>Rapid environmental change poses unprecedented challenges to species persistence. To understand the extent that continued change could have, genomic offset methods have been used to forecast maladaptation of natural populations to future environmental change. However, while their use has become increasingly common, little is known regarding their predictive performance across a wide array of realistic and challenging scenarios. Here, we evaluate the performance of currently available offset methods (gradientForest, the Risk-Of-Non-Adaptedness, redundancy analysis with and without structure correction and LFMM2) using an extensive set of simulated data sets that vary demography, adaptive architecture and the number and spatial patterns of adaptive environments. For each data set, we train models using either all, adaptive or neutral marker sets and evaluate performance using in silico common gardens by correlating known fitness with projected offset. Using over 4,849,600 of such evaluations, we find that (1) method performance is largely due to the degree of local adaptation across the metapopulation (LA), (2) adaptive marker sets provide minimal performance advantages, (3) performance within the species range is variable across gardens and declines when offset models are trained using additional non-adaptive environments and (4) despite (1) performance declines more rapidly in globally novel climates (i.e. a climate without an analogue within the species range) for metapopulations with greater LA than lesser LA. 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引用次数: 0
摘要
环境的快速变化给物种的生存带来了前所未有的挑战。为了了解持续变化可能带来的影响,基因组抵消方法被用来预测自然种群对未来环境变化的不适应。然而,虽然基因组偏移方法的使用越来越普遍,但人们对其在各种现实和具有挑战性的情况下的预测性能却知之甚少。在此,我们使用一组广泛的模拟数据集来评估目前可用的抵消方法(梯度森林、非适应性风险、带或不带结构校正的冗余分析以及 LFMM2)的性能,这些数据集改变了人口、适应性结构以及适应性环境的数量和空间模式。对于每个数据集,我们使用全部、适应性或中性标记集来训练模型,并通过将已知适应性与预测偏移相关联,使用硅共同园来评估性能。通过使用超过 484.96 万次这样的评估,我们发现:(1)方法的性能在很大程度上取决于整个元种群(LA)的局部适应程度;(2)适应性标记集带来的性能优势微乎其微;(3)在物种范围内,不同花园的性能是不同的,当使用额外的非适应性环境训练偏移模型时,性能会下降;(4)尽管有(1),但在全球新气候(即物种范围内没有类似气候)中,LA 较高的元种群比 LA 较低的元种群的性能下降得更快。我们将讨论这些结果对管理、辅助基因流和辅助迁移的影响。
The accuracy of predicting maladaptation to new environments with genomic data.
Rapid environmental change poses unprecedented challenges to species persistence. To understand the extent that continued change could have, genomic offset methods have been used to forecast maladaptation of natural populations to future environmental change. However, while their use has become increasingly common, little is known regarding their predictive performance across a wide array of realistic and challenging scenarios. Here, we evaluate the performance of currently available offset methods (gradientForest, the Risk-Of-Non-Adaptedness, redundancy analysis with and without structure correction and LFMM2) using an extensive set of simulated data sets that vary demography, adaptive architecture and the number and spatial patterns of adaptive environments. For each data set, we train models using either all, adaptive or neutral marker sets and evaluate performance using in silico common gardens by correlating known fitness with projected offset. Using over 4,849,600 of such evaluations, we find that (1) method performance is largely due to the degree of local adaptation across the metapopulation (LA), (2) adaptive marker sets provide minimal performance advantages, (3) performance within the species range is variable across gardens and declines when offset models are trained using additional non-adaptive environments and (4) despite (1) performance declines more rapidly in globally novel climates (i.e. a climate without an analogue within the species range) for metapopulations with greater LA than lesser LA. We discuss the implications of these results for management, assisted gene flow and assisted migration.
期刊介绍:
Molecular Ecology Resources promotes the creation of comprehensive resources for the scientific community, encompassing computer programs, statistical and molecular advancements, and a diverse array of molecular tools. Serving as a conduit for disseminating these resources, the journal targets a broad audience of researchers in the fields of evolution, ecology, and conservation. Articles in Molecular Ecology Resources are crafted to support investigations tackling significant questions within these disciplines.
In addition to original resource articles, Molecular Ecology Resources features Reviews, Opinions, and Comments relevant to the field. The journal also periodically releases Special Issues focusing on resource development within specific areas.