Saslis-Lagoudakis C Haris, Hua Xia, Bui Elisabeth, Moray Camile, Bromham Lindell
Centre for Macroevolution and Macroecology, Research School of Biology, Australian National University, Canberra, Australian Capital Territory 0200, Australia and CSIRO Land and Water, GPO Box 1666, Canberra, Australian Capital Territory 2601, Australia
Centre for Macroevolution and Macroecology, Research School of Biology, Australian National University, Canberra, Australian Capital Territory 0200, Australia and CSIRO Land and Water, GPO Box 1666, Canberra, Australian Capital Territory 2601, Australia.
Ann Bot. 2015 Feb;115(3):343-51. doi: 10.1093/aob/mcu248. Epub 2014 Dec 22.
Salt tolerance has evolved many times independently in different plant groups. One possible explanation for this pattern is that it builds upon a general suite of stress-tolerance traits. If this is the case, then we might expect a correlation between salt tolerance and other tolerances to different environmental stresses. This association has been hypothesized for salt and alkalinity tolerance. However, a major limitation in investigating large-scale patterns of these tolerances is that lists of known tolerant species are incomplete. This study explores whether species' salt and alkalinity tolerance can be predicted using geochemical modelling for Australian grasses. The correlation between taxa found in conditions of high predicted salinity and alkalinity is then assessed.
Extensive occurrence data for Australian grasses is used together with geochemical modelling to predict values of pH and electrical conductivity to which species are exposed in their natural distributions. Using parametric and phylogeny-corrected tests, the geochemical predictions are evaluated using a list of known halophytes as a control, and it is determined whether taxa that occur in conditions of high predicted salinity are also found in conditions of high predicted alkalinity.
It is shown that genera containing known halophytes have higher predicted salinity conditions than those not containing known halophytes. Additionally, taxa occurring in high predicted salinity tend to also occur in high predicted alkalinity.
Geochemical modelling using species' occurrence data is a potentially useful approach to predict species' relative natural tolerance to challenging environmental conditions. The findings also demonstrate a correlation between salinity tolerance and alkalinity tolerance. Further investigations can consider the phylogenetic distribution of specific traits involved in these ecophysiological strategies, ideally by incorporating more complete, finer-scale geochemical information, as well as laboratory experiments.
耐盐性在不同植物类群中多次独立进化。这种模式的一种可能解释是,它建立在一套通用的耐逆性状之上。如果是这样,那么我们可能会预期耐盐性与对不同环境胁迫的其他耐受性之间存在相关性。对于耐盐性和耐碱性,这种关联已被提出假设。然而,研究这些耐受性的大规模模式的一个主要限制是已知耐受物种的列表不完整。本研究探讨是否可以使用地球化学模型来预测澳大利亚禾本科植物的耐盐性和耐碱性。然后评估在预测盐度和碱度较高的条件下发现的分类群之间的相关性。
利用澳大利亚禾本科植物广泛的分布数据,结合地球化学模型来预测物种在其自然分布中所接触的pH值和电导率。使用参数检验和系统发育校正检验,以已知盐生植物列表作为对照来评估地球化学预测,并确定在预测盐度较高的条件下出现的分类群是否也出现在预测碱度较高的条件下。
结果表明,含有已知盐生植物的属比不含有已知盐生植物的属具有更高的预测盐度条件。此外,在预测盐度较高的条件下出现的分类群往往也出现在预测碱度较高的条件下。
利用物种分布数据进行地球化学建模是预测物种对具有挑战性的环境条件的相对自然耐受性的一种潜在有用方法。研究结果还表明了耐盐性和耐碱性之间的相关性。进一步的研究可以考虑这些生态生理策略中涉及的特定性状的系统发育分布,理想情况下通过纳入更完整、更精细的地球化学信息以及实验室实验来进行。