Login / Signup

Kinetic Determination of Acetylsalicylic Acid Using a CdTe/AgInS 2 Photoluminescence Probe and Different Chemometric Models.

Rafael C CastroRicardo Nuno Mendes de Jorge PáscoaMaria Lúcia M F S SaraivaJoão L M SantosDavid S M Ribeiro
Published in: Biosensors (2023)
The combination of multiple quantum dots (QDs) in a multi-emitter nanoprobe can be envisaged as a promising sensing scheme, as it enables obtaining a collective response of individual emitters towards a given analyte and allows for achieving specific analyte-response profiles. The processing of these profiles using adequate chemometric methods empowers a more sensitive, reliable and selective determination of the target analyte. In this work, we developed a kinetic fluorometric method consisting of a dual CdTe/AgInS 2 quantum dots photoluminescence probe for the determination of acetylsalicylic acid (ASA). The fluorometric response was acquired as second-order time-based excitation/emission matrices that were subsequently processed using chemometric methods seeking to assure the second-order advantage. The data obtained in this work are considered second-order data as they have a three-dimensional size, I × J × K (where I represents the samples' number, J the fluorescence emission wavelength while K represents the time). In order to select the most adequate chemometric method regarding the obtained data structure, different chemometric models were tested, namely unfolded partial least squares (U-PLS), N-way partial least squares (N-PLS), multilayer feed-forward neural networks (MLF-NNs) and radial basis function neural networks (RBF-NNs).
Keyphrases
  • quantum dots
  • neural network
  • energy transfer
  • molecularly imprinted
  • sensitive detection
  • electronic health record
  • solid phase extraction
  • big data
  • living cells
  • deep learning
  • solid state