Department of Biology, College of Science, King Khalid University, Abha, Saudi Arabia.
Department of Botany, Faculty of Science, Kafr El-Sheikh University, Kafr El-Sheikh, Egypt.
Int J Phytoremediation. 2020;22(10):1000-1008. doi: 10.1080/15226514.2020.1725866. Epub 2020 Feb 16.
Prediction of heavy-metal concentration in the edible parts of economic crops, based on their concentration in soil and other environmental factors, is urgently required for human risk assessment. The present investigation aimed to develop regression models for predicting heavy-metal concentration in wheat plants via their contents in sewage sludge amended soil, organic matter (OM) content and soil pH. The concentration of heavy metals in the plant tissues reflected its concentration in the soil with high Fe followed by Al, Mn, Cr, Zn, Ni, Co, Cu, and Pb. Soil OM content had a significant positive correlation with all investigated heavy-metal concentrations in the different tissues of wheat plants, while soil pH was negatively significant with most heavy metals except spike Pb and grain Cr. The bio-concentration factor of Al, Cu, and Zn from soil to wheat root was >1, while that of shoot, spikes, and grains was <1 for all heavy metals. Significantly valid regression models were developed with fluctuated coefficient of determination (), high model efficiency (ME) values and low mean normalized average error (MNAE). The significant positive correlations between the concentration of some heavy metals in the soil and the same in wheat tissues indicate the potential of this plant as a biomonitor for these metals in contaminated soils. The significant correlations between heavy-metal concentrations in soil and its properties (pH and OM) with metal concentrations in wheat plants support the prediction model as an appropriate option. This study recommends the use of models with greater than 50% and recommend other researchers to use our models according to their own specific conditions.
为了进行人类风险评估,迫切需要根据经济作物中土壤和其他环境因素的浓度来预测其可食用部分的重金属浓度。本研究旨在通过添加污水污泥的土壤、有机质 (OM) 含量和土壤 pH 值来开发预测小麦植株中重金属浓度的回归模型。植物组织中重金属的浓度反映了其在土壤中的浓度,Fe 的浓度较高,其次是 Al、Mn、Cr、Zn、Ni、Co、Cu 和 Pb。土壤 OM 含量与小麦植株不同组织中所有调查的重金属浓度呈显著正相关,而土壤 pH 值与除穗部 Pb 和籽粒 Cr 外的大多数重金属呈显著负相关。Al、Cu 和 Zn 从土壤到小麦根的生物浓缩系数(BCF)>1,而从根到茎、穗和籽粒的 BCF 则<1。与所有重金属相比,所建立的回归模型具有波动的决定系数 ()、高模型效率 (ME) 值和低平均归一化平均误差 (MNAE)。土壤中一些重金属浓度与小麦组织中相同重金属浓度之间的显著正相关表明,该植物可能是受污染土壤中这些金属的生物监测器。土壤重金属浓度与其性质(pH 和 OM)与小麦植株中金属浓度之间的显著相关性支持了预测模型作为一种合适的选择。本研究建议使用大于 50%的模型,并建议其他研究人员根据自己的具体情况使用我们的模型。