Environmental Biotechnology Lab, The University of Hong Kong, Hong Kong, China; State Environmental Protection Key Laboratory of Environmental Risk Assessment and Control on Chemical Process, East China University of Science and Technology, 200237 Shanghai, China.
Environmental Biotechnology Lab, The University of Hong Kong, Hong Kong, China; School of Environment Science and Technology, Shanghai Jiao Tong University, 200240 Shanghai, China.
Chemosphere. 2015 Jan;119:1305-1313. doi: 10.1016/j.chemosphere.2014.01.068. Epub 2014 Feb 20.
In this study, the correlation-based study was used to identify the co-occurrence correlations among metals in marine sediment of Hong Kong, based on the long-term (from 1991 to 2011) temporal and spatial monitoring data. 14 stations out of the total 45 marine sediment monitoring stations were selected from three representative areas, including Deep Bay, Victoria Harbour and Mirs Bay. Firstly, Spearman's rank correlation-based network analysis was conducted as the first step to identify the co-occurrence correlations of metals from raw metadata, and then for further analysis using the normalized metadata. The correlations patterns obtained by network were consistent with those obtained by the other statistic normalization methods, including annual ratios, R-squared coefficient and Pearson correlation coefficient. Both Deep Bay and Victoria Harbour have been polluted by heavy metals, especially for Pb and Cu, which showed strong co-occurrence with other heavy metals (e.g. Cr, Ni, Zn and etc.) and little correlations with the reference parameters (Fe or Al). For Mirs Bay, which has better marine sediment quality compared with Deep Bay and Victoria Harbour, the co-occurrence patterns revealed by network analysis indicated that the metals in sediment dominantly followed the natural geography process. Besides the wide applications in biology, sociology and informatics, it is the first time to apply network analysis in the researches of environment pollutions. This study demonstrated its powerful application for revealing the co-occurrence correlations among heavy metals in marine sediments, which could be further applied for other pollutants in various environment systems.
在这项研究中,使用基于相关性的研究方法,基于香港海洋沉积物的长期(1991 年至 2011 年)时空监测数据,确定金属之间的共现相关性。从总共 45 个海洋沉积物监测站中选择了三个代表性区域(包括后海湾、维多利亚港和大鹏湾)的 14 个站点。首先,进行基于 Spearman 秩相关的网络分析,作为从原始元数据中识别金属共现相关性的第一步,然后使用归一化元数据进行进一步分析。网络得到的相关性模式与其他统计归一化方法(包括年比率、R 平方系数和皮尔逊相关系数)得到的模式一致。后海湾和维多利亚港都受到重金属的污染,特别是 Pb 和 Cu,它们与其他重金属(如 Cr、Ni、Zn 等)表现出强烈的共现关系,与参考参数(Fe 或 Al)的相关性较小。与后海湾和维多利亚港相比,大鹏湾的海洋沉积物质量较好,网络分析揭示的共现模式表明,沉积物中的金属主要遵循自然地理过程。除了在生物学、社会学和信息学中的广泛应用外,这是首次将网络分析应用于环境污染研究。本研究证明了它在揭示海洋沉积物中重金属之间共现相关性方面的强大应用,可进一步应用于各种环境系统中的其他污染物。