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PaleoWood: A machine learning approach for determining the affinity of Paleozoic gymnosperm woods

机译:PaleoWood:一种用于确定古生代裸子植物木材亲和力的机器学习方法

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? 2022 Elsevier LtdFossil plant remains are commonly found in fragments in the sediment, thus complicating the reconstruction and classification of fossil plants into a higher taxonomic group. Particularly for stem anatomy, some described features repeat among the proposed lineages due to environmental pressures that induce anatomical convergence. Other characteristics cannot always be seen because of the fossil's state of preservation, as often happens with the bark and the arrangement of axes and leaves. Given these difficulties, we developed PaleoWood, an unprecedented affinity classifier for Paleozoic gymnosperm woods based on 16 variables collected from 42 consistent genera that have the central core, primary xylem, and secondary xylem described. Similarities among samples were analyzed by principal coordinates, and models were trained through logistic regression, linear discriminant, and k-nearest neighbors algorithms. Models' performance was estimated by cross-validation and testing of the affinity of 20 previously known samples. Results agreed with some hypotheses previously discussed in the literature, such as the linkage of Eristophyton, Megaloxylon, and Tetrastichia with Lyginopteridales. Some other predictions were interpreted to be a result of convergent evolution or the models' limitations, especially those predictions relating to the samples of simple protostele or pycnoxylic pteridosperms (but these models are not definitive and may be improved as new data are collected). Therefore, they could assist in future comparisons and discussions about the taxonomy, evolution, and paleobotanical affinities of the basal seed plants, especially for the woods from Gondwana, in which affinities are obscure for several genera.
机译:?2022 Elsevier Ltd化石植物遗骸通常存在于沉积物的碎片中,从而使化石植物的重建和分类复杂化,使其具有更高的分类群。特别是对于茎解剖学,由于诱导解剖学趋同的环境压力,一些描述的特征在拟议的谱系中重复出现。由于化石的保存状态,其他特征并不总是可见,就像树皮以及斧头和叶子的排列经常发生的那样。鉴于这些困难,我们开发了PaleoWood,这是一种前所未有的古生代裸子植物木材亲和分类器,基于从42个一致属中收集的16个变量,这些属描述了中心核心,初级木质部和次级木质部。通过主坐标分析样本之间的相似性,并通过逻辑回归、线性判别和 k 最近邻算法训练模型。通过交叉验证和测试 20 个先前已知样本的亲和力来估计模型的性能。结果与文献中先前讨论的一些假设一致,例如 Eristophyton、Megalooxylon 和 Tetrastichia 与 Lyginopteridales 的联系。其他一些预测被解释为收敛进化或模型局限性的结果,特别是那些与简单原生或蕨类植物样本有关的预测(但这些模型不是确定的,可能会随着新数据的收集而改进)。因此,它们可以帮助未来关于基底种子植物的分类学、进化和古植物亲缘关系的比较和讨论,特别是对于冈瓦纳的树林,其中几个属的亲和力是模糊的。

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