Institute of Soil Science, Chinese Academy of Sciences, Nanjing, 210008, China.
University of the Chinese Academy of Sciences, Beijing, 100049, China.
Environ Sci Pollut Res Int. 2024 Apr;31(16):23790-23801. doi: 10.1007/s11356-024-32638-x. Epub 2024 Mar 2.
Accurate prediction of cadmium (Cd) ecotoxicity to and accumulation in soil biota is important in soil health. However, very limited information on Cd ecotoxicity on naturally contaminated soils. Herein, we investigated soil Cd ecotoxicity using Folsomia candida, a standard single-species test animal, in 28 naturally Cd-contaminated soils, and the back-propagation neural network (BPNN) model was used to predict Cd ecotoxicity to and accumulation in F. candida. Soil total Cd and pH were the primary soil properties affecting Cd toxicity. However, soil pH was the main factor when the total Cd concentration was < 3 mg kg. Interestingly, correlation analysis and the K-spiked test confirmed nutrient potassium (K) was essential for Cd accumulation, highlighting the significance of studying K in Cd accumulation. The BPNN model showed greater prediction accuracy of collembolan survival rate (R = 0.797), reproduction inhibitory rate (R = 0.827), body Cd concentration (R = 0.961), and Cd bioaccumulation factor (R = 0.964) than multiple linear regression models. Then the developed BPNN model was used to predict Cd ecological risks in 57 soils in southern China. Compared to multiple linear regression models, the BPNN models can better identify high-risk regions. This study highlights the potential of BPNN as a novel and rapid tool for the evaluation and monitoring of Cd ecotoxicity in naturally contaminated soils.
准确预测土壤生物体内镉(Cd)的生态毒性和积累对于土壤健康非常重要。然而,关于自然污染土壤中 Cd 生态毒性的信息非常有限。在此,我们使用标准的单一物种测试动物 Folsomia candida 研究了 28 种自然污染土壤中的土壤 Cd 生态毒性,并使用反向传播神经网络(BPNN)模型预测了 F. candida 体内 Cd 的生态毒性和积累。土壤总 Cd 和 pH 是影响 Cd 毒性的主要土壤性质。然而,当总 Cd 浓度<3mgkg 时,土壤 pH 是主要因素。有趣的是,相关性分析和 K 加标试验证实了营养钾(K)是 Cd 积累所必需的,这突出了研究 K 在 Cd 积累中的重要性。BPNN 模型对弹尾目生存率(R=0.797)、繁殖抑制率(R=0.827)、体 Cd 浓度(R=0.961)和 Cd 生物积累系数(R=0.964)的预测准确性均高于多元线性回归模型。然后,将开发的 BPNN 模型用于预测中国南方 57 种土壤中的 Cd 生态风险。与多元线性回归模型相比,BPNN 模型可以更好地识别高风险区域。本研究强调了 BPNN 作为一种新型快速工具在评价和监测自然污染土壤中 Cd 生态毒性方面的潜力。