ac504776m_si_001.pdf (1.24 MB)
Download fileLow-Content Quantification in Powders Using Raman Spectroscopy: A Facile Chemometric Approach to Sub 0.1% Limits of Detection
journal contribution
posted on 2015-03-17, 00:00 authored by Boyan Li, Amandine Calvet, Yannick Casamayou-Boucau, Cheryl Morris, Alan G. RyderA robust and accurate analytical
methodology for low-content (<0.1%)
quantification in the solid-state using Raman spectroscopy, subsampling,
and chemometrics was demonstrated using a piracetam–proline
model. The method involved a 5-step process: collection of a relatively
large number of spectra (8410) from each sample by Raman mapping,
meticulous data pretreatment to remove spectral artifacts, use of
a 0–100% concentration range partial least-squares (PLS) regression
model to estimate concentration at each pixel, use of a more accurate,
reduced concentration range PLS model to calculate analyte concentration
at each pixel, and finally statistical analysis of all 8000+ concentration
predictions to produce an accurate overall sample concentration. The
relative prediction accuracy was ∼2.4% for a 0.05–1.0%
concentration range, and the limit of detection was comparable to
high performance liquid chromatography (0.03% versus 0.041%). For
data pretreatment, we developed a unique cosmic ray removal method
and used an automated baseline correction method, neither of which
required subjective user intervention and thus were fully automatable.
The method is applicable to systems which cannot be easily analyzed
chromatographically, such as hydrate, polymorph, or solvate contamination.