State Key Laboratory of Urban and Regional Ecology, Research Center for Eco-environmental Sciences, Chinese Academy of Sciences, Beijing, 100085, China; University of Chinese Academy of Sciences, Beijing, 100049, China.
Tianjin Key Laboratory for Dredging Engineer Enterprises, China Communications Construction Company Tianjin Dredging Co., Ltd., Tianjin, 300461, China.
Environ Pollut. 2024 Aug 1;354:124169. doi: 10.1016/j.envpol.2024.124169. Epub 2024 May 16.
Excessive cadmium (Cd) concentration in wheat grain is becoming a widespread concern in China. Considering the complexity of Cd transfer in the soil-wheat system, how the Cd risk in wheat grain be accurately predicted from the limited details available is of great significance for the risk management of Cd. Bayes' theory could leverage existing data by combining prior information and observational data, providing a promising strategy with which to calculate a more robust posterior probability of a grain sample exceeding the food safety standard (FSS) for Cd (0.1 mg kg). In the current study, a risk prediction model, based on Bayes' theory, was established to achieve a more accurate prediction of the wheat grain Cd risk from a limited number of soil parameters. The risk prediction model could predict the risk probability of wheat grain with a Cd concentration exceeding the FSS under a given soil concentration of either total Cd or diethylenetriaminepentaacetic acid (DTPA)-extractable Cd. Soil total Cd concentration proved to be a better variable for the model with greater predictive accuracy. The model predicted that fewer than 5% of the wheat grain would have a Cd concentration exceeding the FSS when grown in soil with a total Cd concentration of less than 0.299 mg kg. The risk probability rose significantly to 50% when the soil total Cd reached 0.778 mg kg. The accuracy of the model was greater than the widely applied multiple linear regression model, whereas previously published data from similar soil conditions also confirmed that the Bayesian model could predict wheat Cd risk with minimal error. The proposed model provides an accurate, accessible and cost-effective methodology for predicting Cd risk in wheat grown in alkaline soils before harvest. The wider application to other soil conditions, crops or contaminants using the Bayesian model is also promising for risk management authorities.
在中国,小麦籽粒中镉(Cd)浓度过高的问题越来越受到关注。考虑到土壤-小麦系统中 Cd 转移的复杂性,如何利用有限的信息准确预测小麦籽粒中的 Cd 风险,对于 Cd 风险的管理具有重要意义。贝叶斯理论可以通过结合先验信息和观测数据来利用现有数据,为计算更稳健的后验概率提供了一种很有前景的策略,即计算籽粒样品超过 Cd 食品安全标准(0.1mgkg)的概率。本研究基于贝叶斯理论,建立了一个风险预测模型,旨在利用有限的土壤参数更准确地预测小麦籽粒 Cd 风险。该风险预测模型可预测在给定土壤总 Cd 或二乙三胺五乙酸(DTPA)可提取 Cd 浓度下,小麦籽粒 Cd 浓度超过食品安全标准的风险概率。土壤总 Cd 浓度被证明是模型中更好的变量,具有更高的预测精度。该模型预测,当土壤总 Cd 浓度低于 0.299mgkg 时,不到 5%的小麦籽粒 Cd 浓度会超过食品安全标准。当土壤总 Cd 浓度达到 0.778mgkg 时,风险概率显著上升至 50%。与广泛应用的多元线性回归模型相比,该模型的准确性更高,而之前在类似土壤条件下发表的数据也证实了贝叶斯模型可以最小化误差预测小麦 Cd 风险。该模型为收获前预测碱性土壤中生长的小麦 Cd 风险提供了一种准确、可及且具有成本效益的方法。使用贝叶斯模型将其更广泛地应用于其他土壤条件、作物或污染物,对于风险管理部门也具有广阔的应用前景。