4.7 Article

Highly Efficient Blood Protein Analysis Using Membrane Purification Technique and Super-Hydrophobic SERS Platform for Precise Screening and Staging of Nasopharyngeal Carcinoma

Journal

NANOMATERIALS
Volume 12, Issue 15, Pages -

Publisher

MDPI
DOI: 10.3390/nano12152724

Keywords

protein SERS; super-hydrophobic platform; deep learning; nasopharyngeal carcinoma

Funding

  1. National Natural Science Foundation of China [61975031, 11974077, 11874006]
  2. Natural Science Foundation of Fujian Province [2020J011121, 2021Y0053]
  3. Product-University Cooperation Project of Fujian Province [2020Y4006]
  4. United Fujian Provincial Health and Education Project for Tackling the Key Research, China [2019WJ-03]
  5. National Clinical Key Specialty Construction Program
  6. Fujian Provincial Clinical Research Center for Cancer Radiotherapy and Immunotherapy [2020Y2012]
  7. Fujian Medical Innovation Project [2021CXA029]

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The study developed a blood protein testing method combining SERS spectroscopy and deep learning, which can achieve rapid and precise screening and staging of nasopharyngeal carcinoma (NPC) patients.
Early screening and precise staging are crucial for reducing mortality in patients with nasopharyngeal carcinoma (NPC). This study aimed to assess the performance of blood protein surface-enhanced Raman scattering (SERS) spectroscopy, combined with deep learning, for the precise detection of NPC. A highly efficient protein SERS analysis, based on a membrane purification technique and super-hydrophobic platform, was developed and applied to blood samples from 1164 subjects, including 225 healthy volunteers, 120 stage I, 249 stage II, 291 stage III, and 279 stage IV NPC patients. The proteins were rapidly purified from only 10 mu L of blood plasma using the membrane purification technique. Then, the super-hydrophobic platform was prepared to pre-concentrate tiny amounts of proteins by forming a uniform deposition to provide repeatable SERS spectra. A total of 1164 high-quality protein SERS spectra were rapidly collected using a self-developed macro-Raman system. A convolutional neural network-based deep-learning algorithm was used to classify the spectra. An accuracy of 100% was achieved for distinguishing between the healthy and NPC groups, and accuracies of 96%, 96%, 100%, and 100% were found for the differential classification among the four NPC stages. This study demonstrated the great promise of SERS- and deep-learning-based blood protein testing for rapid, non-invasive, and precise screening and staging of NPC.

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