Multivariate analysis, machine learning and atomic spectrometry

Higuera, J. M.; Silva, A. B. S.; Henrique, W.; Esteves, S. N.; Barioni Jr, W.; Donati, G. L. and Nogueira, A. R. A. Effect of genetic crossing and nutritional management on the mineral composition of carcass, blood, leather, and viscera of sheep. Biol. Trace Elem. Res., 199, 2021, 4133-4144.


Carter, J. A.; O’Brien, L. M.; Harville, T.; Jones, B. T. and Donati, G. L. Machine learning tools to estimate the severity of matrix effects and predict analyte recovery in inductively coupled plasma optical emission spectrometry. Talanta, 223(2), 2021, 121665.


Carter, J. A.; Sloop, J. T.; Harville, T.; Jones, B. T. and Donati, G. L. Non-analyte signals and supervised learning to evaluate matrix effects and predict analyte recoveries in inductively coupled plasma optical emission spectrometry. J. Anal. At. Spectrom., 35(4), 2020, 679-692.


Sloop, J. T.; Carter, J. A.; Bierbach, U.; Jones, B. T. and Donati, G. L. Effects of platinum-based anticancer drugs on the trace element profile of liver and kidney tissue from mice. J. Trace Elem. Med. Bio., 54, 2019, 62-68.


Carter, J. A.; Sloop, J. T.; McSweeney, T.; Jones, B. T. and Donati, G. L. Identifying and assessing matrix effect severity in inductively coupled plasma optical emission spectrometry using non-analyte signals and unsupervised learning. Anal. Chim. Acta, 1062, 2019, 37-46.


Carter, J. A.; Jones, B. T. and Donati, G. L. Trace element analysis, model-based clustering and flushing to prevent drinking water contamination in public schools. J. Braz. Chem. Soc., 30(3), 2019, 462-471. Special issue Brazilian Researchers Abroad.

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Carter, J. A.; Long, C. S.; Smith, B. P.; Smith, T. L. and Donati, G. L. Combining elemental analysis of toenails and machine learning techniques as a non-invasive diagnostic tool for the robust classification of type-2 diabetes. Expert Syst. Appl., 115, 2019, 245-255.


Quigley, K. M.; Althoff, A. G. and Donati, G. L. Inductively coupled plasma optical emission spectrometry as a reference method for silicon estimation by near infrared spectroscopy and potential application to global-scale studies of plant chemistry. Microchem. J., 129, 2016, 231-235.