López-Sampson Arlene, Cernusak Lucas A, Page Tony
College of Science and Engineering, James Cook University, Cairns 4878, Australia.
Tropical Forests and People Research Centre, University of the Sunshine Coast, Maroochydore 4558, Australia.
Tree Physiol. 2017 May 1;37(5):645-653. doi: 10.1093/treephys/tpx007.
Physiological traits are frequently used as indicators of tree productivity. Aquilaria species growing in a research planting were studied to investigate relationships between leaf-productivity traits and tree growth. Twenty-eight trees were selected to measure isotopic composition of carbon (δ13C) and nitrogen (δ15N) and monitor six leaf attributes. Trees were sampled randomly within each of four diametric classes (at 150 mm above ground level) ensuring the variability in growth of the whole population was represented. A model averaging technique based on the Akaike's information criterion was computed to identify whether leaf traits could assist in diameter prediction. Regression analysis was performed to test for relationships between carbon isotope values and diameter and leaf traits. Approximately one new leaf per week was produced by a shoot. The rate of leaf expansion was estimated as 1.45 mm day-1. The range of δ13C values in leaves of Aquilaria species was from -25.5‰ to -31‰, with an average of -28.4 ‰ (±1.5‰ SD). A moderate negative correlation (R2 = 0.357) between diameter and δ13C in leaf dry matter indicated that individuals with high intercellular CO2 concentrations (low δ13C) and associated low water-use efficiency sustained rapid growth. Analysis of the 95% confidence of best-ranked regression models indicated that the predictors that could best explain growth in Aquilaria species were δ13C, δ15N, petiole length, number of new leaves produced per week and specific leaf area. The model constructed with these variables explained 55% (R2 = 0.55) of the variability in stem diameter. This demonstrates that leaf traits can assist in the early selection of high-productivity trees in Aquilaria species.
生理特性常被用作树木生产力的指标。对种植于研究性种植园的沉香属树种进行了研究,以调查叶片生产力特性与树木生长之间的关系。选取了28棵树来测量碳(δ13C)和氮(δ15N)的同位素组成,并监测六个叶片属性。在四个直径等级(地面以上150毫米处)中的每个等级内随机对树木进行采样,以确保代表整个种群生长的变异性。基于赤池信息准则计算了一种模型平均技术,以确定叶片性状是否有助于预测直径。进行回归分析以检验碳同位素值与直径和叶片性状之间的关系。一个新梢大约每周产生一片新叶。叶片扩展速率估计为1.45毫米/天。沉香属树种叶片中δ13C值的范围为-25.5‰至-31‰,平均为-28.4‰(±1.5‰标准差)。叶片干物质中直径与δ13C之间存在中度负相关(R2 = 0.357),这表明细胞间二氧化碳浓度高(δ13C低)且相关水分利用效率低的个体生长迅速。对排名最佳的回归模型的95%置信区间分析表明,最能解释沉香属树种生长的预测因子是δ13C、δ15N、叶柄长度、每周产生的新叶数量和比叶面积。用这些变量构建的模型解释了茎直径变异性的55%(R2 = 0.55)。这表明叶片性状有助于沉香属树种中高生产力树木的早期选择。