Machine learning based detection of adaptive divergence of the stream mayfly Ephemera strigata populations
收藏DataONE2020-05-07 更新2025-06-28 收录
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Adaptive divergence is a key mechanism shaping the genetic variation of natural populations. A central question linking ecology with evolutionary biology is how spatial environmental heterogeneity can lead to adaptive divergence among local populations within a species. In this study, using a genome scan approach to detect candidate loci under selection, we examined adaptive divergence of the stream mayfly Ephemera strigata in the Natori River Basin in north eastern Japan. We applied a new machine learning method (i.e. Random Forest) besides traditional distance-based redundancy analysis (dbRDA) to examine relationships between environmental factors and adaptive divergence at non-neutral loci. Spatial autocorrelation analysis based on neutral loci was employed to examine the dispersal ability of this species. We conclude the following: 1) E. strigata show altitudinal adaptive divergence among the populations in the Natori River Basin; 2) random forest showed higher resolution for detect...
创建时间:
2025-06-21



