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Identification of Water-Soluble Polymers through Machine Learning of Fluorescence Signals from Multiple Peptide Sensors.

Shion HasegawaToshiki SawadaTakeshi Serizawa
Published in: ACS applied bio materials (2023)
Recently, there has been growing concern about the discharge of water-soluble polymers (especially synthetic polymers) into the environment. Therefore, the identification of water-soluble polymers in water samples is becoming increasingly crucial. In this study, a chemical tongue system to simply and precisely identify water-soluble polymers using multiple fluorescently responsive peptide sensors was demonstrated. Fluorescence spectra obtained from the mixture of each peptide sensor and water-soluble polymer were changed depending on the combination of the polymer species and peptide sensors. Water-soluble polymers were successfully identified through the supervised or unsupervised machine learning of multidimensional fluorescence signals from the peptide sensors.
Keyphrases
  • water soluble
  • machine learning
  • low cost
  • single molecule
  • artificial intelligence
  • energy transfer
  • deep learning
  • cancer therapy
  • bioinformatics analysis