Majumder Sambadi, Mason Chase M
Department of Biology University of Central Florida Orlando 32816 Florida USA.
Present address: Global Water Security Center University of Alabama 1041 Cyber Hall, Box 870206 Tuscaloosa 35487 Alabama USA.
Appl Plant Sci. 2024 Apr 5;12(5):e11576. doi: 10.1002/aps3.11576. eCollection 2024 Sep-Oct.
Plant functional traits are often used to describe the spectra of ecological strategies used by different species. Here, we demonstrate a machine learning approach for identifying the traits that contribute most to interspecific phenotypic divergence in a multivariate trait space.
Descriptive and predictive machine learning approaches were applied to trait data for the genus , including random forest and gradient boosting machine classifiers and recursive feature elimination. These approaches were applied at the genus level as well as within each of the three major clades within the genus to examine the variability in the major axes of trait divergence in three independent species radiations.
Machine learning models were able to predict species identity from functional traits with high accuracy, and differences in functional trait importance were observed between the genus and clade levels indicating different axes of phenotypic divergence.
Applying machine learning approaches to identify divergent traits can provide insights into the predictability or repeatability of evolution through the comparison of parallel diversifications of clades within a genus. These approaches can be implemented in a range of contexts across basic and applied plant science from interspecific divergence to intraspecific variation across time, space, and environmental conditions.
植物功能性状常用于描述不同物种所采用的生态策略谱。在此,我们展示了一种机器学习方法,用于识别在多变量性状空间中对种间表型差异贡献最大的性状。
将描述性和预测性机器学习方法应用于该属的性状数据,包括随机森林和梯度提升机分类器以及递归特征消除。这些方法在属水平以及该属内的三个主要分支中的每个分支内应用,以检验三个独立物种辐射中性状差异主轴的变异性。
机器学习模型能够从功能性状中高精度地预测物种身份,并且在属和分支水平之间观察到功能性状重要性的差异,表明表型差异的不同轴。
应用机器学习方法识别趋异性状可以通过比较属内分支的平行多样化来洞察进化的可预测性或重复性。这些方法可以在从种间差异到跨时间、空间和环境条件的种内变异的基础植物科学和应用植物科学的一系列背景中实施。