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Multivariate linear regression models for predicting metal content and sources in leafy vegetables and human health risk assessment in metal mining areas of Southern Jharkhand, India

机译:印度金属矿区金属矿区金属含量和人体健康风险评估中预测金属含量和源的多变量线性回归模型

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摘要

The present study was intended to investigate the metal concentrations in the leafy vegetables, irrigation water, soil, and atmospheric dust deposition in the iron and copper mining areas of Southern Jharkhand, India. The study aimed to develop a multivariate linear regression (MVLR) model to predict the concentration of metals in leafy vegetables from the metals in associated environmental factors and assessment of the risk to the local population through the consumption of leafy vegetables and other allied pathways. The developed species-specific MVLR models were well fitted to predict the concentration of metals in the leafy vegetables. The coefficient of determination values (R-2) was greater than 0.8 for all the species-specific models. Risk assessment was carried out considering multiple pathways of ingestion, inhalation, and dermal contact of vegetables, soil, water, and free-fall dust. Consumption of leafy vegetables was the major route of metal exposure to the local population in both the metal mining areas. The average hazard index (HI) value considering all the metals and pathways was calculated to be 5.13 and 12.1, respectively for iron and copper mining areas suggesting considerable risk to the local residents. Fe, As, and Cu were the major contributors to non-carcinogenic risk in the Iron mining areas while in the case of copper mining areas, the main contributors were Co, As, and Cu.
机译:本研究旨在调查印度贾坎德南部铁矿和铜矿区叶菜、灌溉水、土壤和大气粉尘沉积中的金属浓度。该研究旨在开发一个多元线性回归(MVLR)模型,从相关环境因素中的金属预测叶菜中的金属浓度,并评估通过叶菜和其他相关途径消费对当地人口的风险。已开发的物种特异性MVLR模型很好地拟合了叶菜中金属的浓度。所有物种特异性模型的决定系数(R-2)均大于0.8。进行风险评估时考虑了蔬菜、土壤、水和自由落体粉尘的摄入、吸入和皮肤接触的多种途径。在这两个金属矿区,食用叶菜是当地居民接触金属的主要途径。考虑到所有金属和路径,铁矿和铜矿区的平均危险指数(HI)值分别为5.13和12.1,这表明当地居民面临相当大的风险。铁、砷和铜是铁矿开采区非致癌风险的主要贡献者,而在铜矿开采区,主要贡献者是一氧化碳、砷和铜。

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