Department of Evolution, Ecology and Organismal Biology, The Ohio State University, Columbus, OH, USA.
Institute of Ecology and Evolution, University of Oregon, Eugene, OR, 97403, USA.
Heredity (Edinb). 2024 Jun;132(6):284-295. doi: 10.1038/s41437-024-00682-5. Epub 2024 Apr 4.
One key research goal of evolutionary biology is to understand the origin and maintenance of genetic variation. In the Cerrado, the South American savanna located primarily in the Central Brazilian Plateau, many hypotheses have been proposed to explain how landscape features (e.g., geographic distance, river barriers, topographic compartmentalization, and historical climatic fluctuations) have promoted genetic structure by mediating gene flow. Here, we asked whether these landscape features have influenced the genetic structure and differentiation in the lizard species Norops brasiliensis (Squamata: Dactyloidae). To achieve our goal, we used a genetic clustering analysis and estimate an effective migration surface to assess genetic structure in the focal species. Optimized isolation-by-resistance models and a simulation-based approach combined with machine learning (convolutional neural network; CNN) were then used to infer current and historical effects on population genetic structure through 12 unique landscape models. We recovered five geographically distributed populations that are separated by regions of lower-than-expected gene flow. The results of the CNN showed that geographic distance is the sole predictor of genetic variation in N. brasiliensis, and that slope, rivers, and historical climate had no discernible influence on gene flow. Our novel CNN approach was accurate (89.5%) in differentiating each landscape model. CNN and other machine learning approaches are still largely unexplored in landscape genetics studies, representing promising avenues for future research with increasingly accessible genomic datasets.
进化生物学的一个关键研究目标是了解遗传变异的起源和维持。在主要位于巴西中央高原的南美热带稀树草原——塞拉多,许多假说被提出以解释景观特征(如地理距离、河流屏障、地形分区和历史气候波动)如何通过调节基因流来促进遗传结构。在这里,我们询问了这些景观特征是否影响了蜥蜴物种 Norops brasiliensis(有鳞目:鬣蜥科)的遗传结构和分化。为了实现我们的目标,我们使用了遗传聚类分析和估计有效迁移表面来评估焦点物种的遗传结构。然后,使用优化的隔离-抗性模型和基于模拟的方法与机器学习(卷积神经网络;CNN)相结合,通过 12 个独特的景观模型推断对种群遗传结构的当前和历史影响。我们恢复了五个在基因流较低的区域分隔的地理分布种群。CNN 的结果表明,地理距离是 N. brasiliensis 遗传变异的唯一预测因子,而坡度、河流和历史气候对基因流没有明显影响。我们新颖的 CNN 方法在区分每个景观模型方面具有很高的准确性(89.5%)。CNN 和其他机器学习方法在景观遗传学研究中仍然很大程度上未被探索,代表了未来研究的有前途的途径,随着越来越多可访问的基因组数据集的出现。