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      Application of multivariate statistical methods for groundwater physicochemical and biological quality assessment in the context of public health.

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          Abstract

          Three representative areas (lowland, semi-mountainous, and coastal) have been selected for the collection of drinking water samples, and a total number of 28 physical, chemical, and biological parameters per water sample have been determined and analyzed. The mean values of the physical and chemical parameters were found to be within the limits mentioned in the 98/83/EEC directive. The analysis of biological parameters shows that many of the water samples are inadequate for human consumption because of the presence of bacteria. Cluster analysis (CA) first was used to classify sample sites with similar properties and results in three groups of sites; discriminant analysis (DA) was used to construct the best discriminant functions to confirm the clusters determined by CA and evaluate the spatial variations in water quality. The standard mode discriminant functions, using 17 parameters, yielded classification matrix correctly assigning 96.97% of the cases. In the stepwise mode, the DA produced a classification matrix with 96.36% correct assignments using only ten parameters (EC, Cl-, NO3-, HCO3-, CO3(-2), Ca+2, Na+, Zn, Mn, and Pb). CA and factor analysis (FA) are used to characterize water quality and assist in water quality monitoring planning. CA proved that two major groups of similarity (six subclusters) between 17 physicochemical parameters are formed, and FA extracts six factors that account for 66.478% of the total water quality variation, when all samples' physicochemical data set is considered. It is noteworthy that the classification scheme obtained by CA is completely confirmed by principal component analysis.

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          Author and article information

          Journal
          Environ Monit Assess
          Environmental monitoring and assessment
          1573-2959
          0167-6369
          Nov 2010
          : 170
          : 1-4
          Affiliations
          [1 ] Clinical Chemistry-Biochemistry Section, Department of Medical Laboratories, Technological & Education Institute of Larissa, 41110, Larissa, Greece. papaioannou@teilar.gr
          Article
          10.1007/s10661-009-1217-x
          19859820
          9642dcd3-f978-4855-803b-8547687c77df
          History

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