During a short chemometrics course in the seventh semester of the chemistry undergraduate program, students receive a brief theoretical introduction to multivariate calibration, focused on partial least-squares regression as the most commonly employed data processing tool. The theory is complemented with the use of MVC1_R, an easy-to-use software developed in-house as an R Shiny application. The present report describes student activities with the latter software in the development of mathematical models to predict quality parameters of corn seeds from near-infrared spectra. Subsequently, an experimental project is carried out involving near-infrared spectral measurements, which are widely used in several industrial fields for quality control. To process the obtained data, students apply the knowledge acquired during the theoretical/software sessions.
CITATION STYLE
Antonelli, T. M., & Olivieri, A. C. (2020). Developing and Implementing an R Shiny Application to Introduce Multivariate Calibration to Advanced Undergraduate Students. Journal of Chemical Education, 97(4), 1176–1180. https://doi.org/10.1021/acs.jchemed.9b00850
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