Publication | Closed Access
Improvement of the Identification of Four Heavy Metals in Environmental Samples by Using Predictive Decision Tree Models Coupled with a Set of Five Bioluminescent Bacteria
80
Citations
29
References
2011
Year
EngineeringMetal ContaminationFive Bioluminescent BacteriaEnvironmental ChemistryMetalloid ContaminationBioremediationMicrobial EcologyAnalytical ChemistryEnvironmental MicrobiologyTrace MetalEcotoxicologyFour Heavy MetalsSpecific Decision TreesPrimary Statistical ModelEnvironmental EngineeringBioactive MetalBest Decision TreeMetal ToxicityMicrobiologyEnvironmental ToxicologyMedicineEnvironmental Samples
A primary statistical model based on the crossings between the different detection ranges of a set of five bioluminescent bacterial strains was developed to identify and quantify four metals which were at several concentrations in different mixtures: cadmium, arsenic III, mercury, and copper. Four specific decision trees based on the CHAID algorithm (CHi-squared Automatic Interaction Detector type) which compose this model were designed from a database of 576 experiments (192 different mixture conditions). A specific software, 'Metalsoft', helped us choose the best decision tree and a user-friendly way to identify the metal. To validate this innovative approach, 18 environmental samples containing a mixture of these metals were submitted to a bioassay and to standardized chemical methods. The results show on average a high correlation of 98.6% for the qualitative metal identification and 94.2% for the quantification. The results are particularly encouraging, and our model is able to provide semiquantitative information after only 60 min without pretreatments of samples.
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