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Simultaneous Protein Colorful Imaging via Raman Signal Classification.

Dongkwon SeoHayeon SunYeonho Choi
Published in: Nano letters (2024)
Protein imaging aids diagnosis and drug development by revealing protein-drug interactions or protein levels. However, the challenges of imaging multiple proteins, reduced sensitivity, and high reliance on specific protein properties such as Raman peaks or refractive index hinder the understanding. Here, we introduce multiprotein colorful imaging through Raman signal classification. Our method utilized machine learning-assisted classification of Raman signals, which are the distinctive features of label-free proteins. As a result, three types of proteins could be imaged simultaneously. In addition, we could quantify individual proteins from a mixture of multiple proteins over a wide detection range (10 fg/mL-1 μg/mL). These results showed a 1000-fold improvement in sensitivity and a 30-fold increase in the upper limit of detection compared to existing methods. These advances will enhance our understanding of biology and facilitate the development of disease diagnoses and treatments.
Keyphrases
  • label free
  • machine learning
  • high resolution
  • deep learning
  • protein protein
  • amino acid
  • artificial intelligence
  • raman spectroscopy
  • big data