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Novel Approach to Classify Plants Based on Metabolite-Content Similarity

机译:基于代谢物含量相似度的植物分类新方法

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摘要

Secondary metabolites are bioactive substances with diverse chemical structures. Depending on the ecological environment within which they are living, higher plants use different combinations of secondary metabolites for adaptation (e.g., defense against attacks by herbivores or pathogenic microbes). This suggests that the similarity in metabolite content is applicable to assess phylogenic similarity of higher plants. However, such a chemical taxonomic approach has limitations of incomplete metabolomics data. We propose an approach for successfully classifying 216 plants based on their known incomplete metabolite content. Structurally similar metabolites have been clustered using the network clustering algorithm DPClus. Plants have been represented as binary vectors, implying relations with structurally similar metabolite groups, and classified using Ward's method of hierarchical clustering. Despite incomplete data, the resulting plant clusters are consistent with the known evolutional relations of plants. This finding reveals the significance of metabolite content as a taxonomic marker. We also discuss the predictive power of metabolite content in exploring nutritional and medicinal properties in plants. As a byproduct of our analysis, we could predict some currently unknown species-metabolite relations.
机译:次生代谢产物是具有多种化学结构的生物活性物质。取决于它们所生活的生态环境,高等植物使用次生代谢物的不同组合进行适应(例如,防御食草动物或病原微生物的攻击)。这表明代谢物含量的相似性可用于评估高等植物的系统相似性。然而,这种化学分类方法具有不完整的代谢组学数据的局限性。我们提出了一种基于其已知的不完全代谢物含量成功分类216种植物的方法。使用网络聚类算法DPClus对结构相似的代谢物进行了聚类。植物已被表示为二元载体,暗示与结构相似的代谢物基团的关系,并使用沃德的层次聚类方法进行分类。尽管数据不完整,但所得植物簇与已知的植物进化关系一致。这一发现揭示了代谢物含量作为分类标记的重要性。我们还讨论了代谢物含量在探索植物营养和药用特性方面的预测能力。作为我们分析的副产品,我们可以预测一些目前未知的物种与代谢物的关系。

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