A machine learning approach to study plant functional trait divergence

IF 2.7 3区 生物学 Q2 PLANT SCIENCES
Sambadi Majumder, Chase M. Mason
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引用次数: 0

Abstract

Premise

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.

Methods

Descriptive and predictive machine learning approaches were applied to trait data for the genus Helianthus, 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.

Results

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.

Conclusions

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.

Abstract Image

研究植物功能性状差异的机器学习方法
前提植物的功能性状经常被用来描述不同物种所采用的生态策略。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。方法将描述性和预测性机器学习方法应用于Helianthus属的性状数据,包括随机森林和梯度提升机器分类器以及递归特征消除。结果机器学习模型能够从功能性状高精度地预测物种身份,在属和支系水平上观察到功能性状重要性的差异,表明表型分化的不同轴线。结论应用机器学习方法识别分歧性状,可以通过比较属内支系的平行多样化,深入了解进化的可预测性或可重复性。这些方法可应用于植物基础科学和应用科学的各种领域,从种间分化到种内变异,跨越时间、空间和环境条件。
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来源期刊
CiteScore
7.30
自引率
0.00%
发文量
50
审稿时长
12 weeks
期刊介绍: Applications in Plant Sciences (APPS) is a monthly, peer-reviewed, open access journal promoting the rapid dissemination of newly developed, innovative tools and protocols in all areas of the plant sciences, including genetics, structure, function, development, evolution, systematics, and ecology. Given the rapid progress today in technology and its application in the plant sciences, the goal of APPS is to foster communication within the plant science community to advance scientific research. APPS is a publication of the Botanical Society of America, originating in 2009 as the American Journal of Botany''s online-only section, AJB Primer Notes & Protocols in the Plant Sciences. APPS publishes the following types of articles: (1) Protocol Notes describe new methods and technological advancements; (2) Genomic Resources Articles characterize the development and demonstrate the usefulness of newly developed genomic resources, including transcriptomes; (3) Software Notes detail new software applications; (4) Application Articles illustrate the application of a new protocol, method, or software application within the context of a larger study; (5) Review Articles evaluate available techniques, methods, or protocols; (6) Primer Notes report novel genetic markers with evidence of wide applicability.
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