León Du'Mottuchi Ximena, Creanza Nicole
Department of Biological Sciences, Vanderbilt University, Nashville, Tennessee, United States of America.
Evolutionary Studies, Vanderbilt University, Nashville, Tennessee, United States of America.
PLoS Comput Biol. 2025 Jun 17;21(6):e1013135. doi: 10.1371/journal.pcbi.1013135. eCollection 2025 Jun.
Oscine songbirds learn vocalizations that function in mate attraction and territory defense; sexual selection pressures on these learned songs could thus accelerate speciation. The Eastern and Spotted towhees are recently diverged sister species that now have partially overlapping ranges with evidence of some hybridization. Widespread community-science recordings of these species, including songs within their zone of overlap and from potential hybrids, enable us to investigate whether song differentiation might facilitate their reproductive isolation. Here, we quantify 16 song features to analyze geographic variation in Spotted and Eastern towhee songs and assess species-level differences. We then use several machine learning models to measure how accurately their songs can be classified by species. While no single song feature reliably distinguishes the two species, machine learning models classified songs with relatively high accuracy (random forest: 89.5%, deep learning: 90%, gradient boosting machine: 88%, convolutional neural network: 88%); interestingly, species classification was less accurate in their zone of overlap. Finally, our analysis of the limited publicly available genetic data from each species supports the hypothesis that the species are reproductively isolated. Together, our results suggest that small variations in multiple features may contribute to these sister species' ability to recognize their species-specific songs.
鸣禽会学习用于吸引配偶和保卫领地的发声;因此,对这些习得歌曲的性选择压力可能会加速物种形成。东部狐色雀和斑点唧鹀是最近分化出来的姐妹物种,现在它们的分布范围有部分重叠,并有一些杂交的证据。对这些物种进行广泛的社区科学记录,包括它们重叠区域内的歌曲以及潜在杂交种的歌曲,使我们能够研究歌曲差异是否可能促进它们的生殖隔离。在这里,我们量化了16种歌曲特征,以分析斑点唧鹀和东部狐色雀歌曲的地理变异,并评估物种水平的差异。然后,我们使用几种机器学习模型来衡量它们的歌曲按物种分类的准确程度。虽然没有单一的歌曲特征能可靠地区分这两个物种,但机器学习模型对歌曲的分类准确率相对较高(随机森林:89.5%,深度学习:90%,梯度提升机:88%,卷积神经网络:88%);有趣的是,在它们的重叠区域,物种分类的准确率较低。最后,我们对每个物种有限的公开可用遗传数据的分析支持了这两个物种生殖隔离的假设。总之,我们的结果表明,多个特征的微小变化可能有助于这些姐妹物种识别其物种特异性歌曲的能力。