Palmero Francisco, Hefley Trevor J, Lacasa Josefina, Almeida Luiz Felipe, Haro Ricardo J, Garcia Fernando O, Salvagiotti Fernando, Ciampitti Ignacio A
Department of Agronomy, Kansas State University, 1712 Claflin Rd, Manhattan, KS, 66506, USA.
Department of Statistics, Kansas State University, 205 Dickens Hall, 1116 Mid-Campus Drive North, Manhattan, KS, 66506, USA.
Plant Methods. 2024 Sep 2;20(1):134. doi: 10.1186/s13007-024-01261-9.
The proportion of nitrogen (N) derived from the atmosphere (Ndfa) is a fundamental component of the plant N demand in legume species. To estimate the N benefit of grain legumes for the subsequent crop in the rotation, a simplified N balance is frequently used. This balance is calculated as the difference between fixed N and removed N by grains. The Ndfa needed to achieve a neutral N balance (hereafter ) is usually estimated through a simple linear regression model between Ndfa and N balance. This quantity is routinely estimated without accounting for the uncertainty in the estimate, which is needed to perform formal statistical inference about . In this article, we utilized a global database to describe the development of a novel Bayesian framework to quantify the uncertainty of . This study aimed to (i) develop a Bayesian framework to quantify the uncertainty of , and (ii) contrast the use of this Bayesian framework with the widely used delta and bootstrapping methods under different data availability scenarios.
The delta method, bootstrapping, and Bayesian inference provided nearly equivalent numerical values when the range of values for Ndfa was thoroughly explored during data collection (e.g., 6-91%), and the number of observations was relatively high (e.g., ). When the Ndfa tested was narrow and/or sample size was small, the delta method and bootstrapping provided confidence intervals containing biologically non-meaningful values (i.e. < 0% or > 100%). However, under a narrow Ndfa range and small sample size, the developed Bayesian inference framework obtained biologically meaningful values in the uncertainty estimation.
In this study, we showed that the developed Bayesian framework was preferable under limited data conditions ─by using informative priors─ and when uncertainty estimation had to be constrained (regularized) to obtain meaningful inference. The presented Bayesian framework lays the foundation not only to conduct formal comparisons or hypothesis testing involving , but also to learn about its expected value, variance, and higher moments such as skewness and kurtosis under different agroecological and crop management conditions. This framework can also be transferred to estimate balances for other nutrients and/or field crops to gain knowledge on global crop nutrient balances.
来自大气的氮(Ndfa)比例是豆科植物氮需求的一个基本组成部分。为了估算轮作中谷物豆类对后续作物的氮效益,通常使用简化的氮平衡。这种平衡计算为固定氮与谷物带走的氮之间的差值。实现中性氮平衡(以下简称 )所需的Ndfa通常通过Ndfa与氮平衡之间的简单线性回归模型来估算。这个数量通常是在不考虑估算不确定性的情况下进行估算的,而进行关于 的正式统计推断则需要这种不确定性。在本文中,我们利用一个全球数据库来描述一种新颖的贝叶斯框架的开发,以量化 的不确定性。本研究旨在(i)开发一个贝叶斯框架来量化 的不确定性,以及(ii)在不同数据可用性场景下,将这种贝叶斯框架的使用与广泛使用的德尔塔法和自助法进行对比。
当在数据收集过程中对Ndfa的值范围进行全面探索(例如6 - 91%)且观测数量相对较高(例如 )时,德尔塔法、自助法和贝叶斯推断提供了几乎相同的数值。当测试的Ndfa范围较窄和/或样本量较小时,德尔塔法和自助法提供的置信区间包含生物学上无意义的值(即<0%或>100%)。然而,在较窄的Ndfa范围和较小的样本量下,所开发的贝叶斯推断框架在不确定性估计中获得了生物学上有意义的值。
在本研究中,我们表明所开发的贝叶斯框架在数据有限的条件下(通过使用信息先验)以及当不确定性估计必须受到约束(正则化)以获得有意义的推断时更具优势。所提出的贝叶斯框架不仅为进行涉及 的正式比较或假设检验奠定了基础,还能了解其在不同农业生态和作物管理条件下的期望值、方差以及诸如偏度和峰度等高阶矩。该框架还可用于估计其他养分和/或大田作物的平衡,以获取全球作物养分平衡的知识。