School of Zoology, Faculty of Life Sciences, Tel Aviv University, Tel Aviv 69978, Israel.
The Inter-University Institute for Marine Sciences, PO Box 469, Eilat 88103, Israel.
J Exp Biol. 2022 Jul 1;225(13). doi: 10.1242/jeb.243273. Epub 2022 Jul 4.
Understanding how organismal traits determine performance and, ultimately, fitness is a fundamental goal of evolutionary eco-morphology. However, multiple traits can interact in non-linear and context-dependent ways to affect performance, hindering efforts to place natural populations with respect to performance peaks or valleys. Here, we used an established mechanistic model of suction-feeding performance (SIFF) derived from hydrodynamic principles to estimate a theoretical performance landscape for zooplankton prey capture. This performance space can be used to predict prey capture performance for any combination of six morphological and kinematic trait values. We then mapped in situ high-speed video observations of suction feeding in a natural population of a coral reef zooplanktivore, Chromis viridis, onto the performance space to estimate the population's location with respect to the topography of the performance landscape. Although the kinematics of the natural population closely matched regions of high performance in the landscape, the population was not located on a performance peak. Individuals were furthest from performance peaks on the peak gape, ram speed and mouth opening speed trait axes. Moreover, we found that the trait combinations in the observed population were associated with higher performance than expected by chance, suggesting that these combinations are under selection. Our results provide a framework for assessing whether natural populations occupy performance optima.
了解生物个体特征如何决定表现,最终决定适合度,是进化生态形态学的一个基本目标。然而,多个特征可以以非线性和依赖于上下文的方式相互作用,从而影响表现,这阻碍了将自然种群置于表现峰值或低谷的努力。在这里,我们使用了一种基于水动力原理的已建立的抽吸摄食性能(SIFF)的机械模型,来估计浮游动物猎物捕获的理论性能景观。这个性能空间可用于预测任何组合的六种形态和运动学特征值的猎物捕获性能。然后,我们将自然种群的高速视频观察到的抽吸摄食情况映射到性能空间上,以估计种群在性能景观地形上的位置。尽管自然种群的运动学与景观中的高性能区域非常匹配,但该种群并不位于性能峰值上。个体在口裂、冲击速度和口部张开速度特征轴上离性能峰值最远。此外,我们发现观察到的种群中的特征组合与预期的随机表现相比具有更高的性能,这表明这些组合受到选择。我们的结果提供了一个评估自然种群是否占据性能最优的框架。