Ultrasensitive CSF rhinorrhea screening via machine learning-aided SERS on Au@Ag nanopillars
  • Park, Eugene
  • Park, Hyunjun
  • Kim, Woochang
  • Park, Joohyung
  • Chai, Kyunghwan
  • ... Park, Jinsung
  • 외 5명
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초록

Cerebrospinal fluid (CSF) rhinorrhea often presents as clear nasal discharge, making it challenging to differentiate from normal secretions and delaying diagnosis. As CSF leakage provides a direct pathway for pathogen entry into the central nervous system, rapid and accurate detection is essential to prevent severe infections such as meningitis. This study introduces a machine learning (ML)-assisted surface-enhanced Raman scattering (SERS) diagnostic platform that reliably distinguishes CSF from nasal secretion samples. The core sensing element is an Au@Ag bimetallic nanopillar substrate, engineered to exploit synergistic plasmonic effects between gold and silver for maximal SERS enhancement while offering superior corrosion resistance. This high-performance substrate enables sensitive and reproducible detection of clinical specimens. To address spectral resolution and range inconsistencies among different Raman instruments, a cross-instrument spectral preprocessing algorithm was developed to standardize input spectra. Among the ML pipelines evaluated, the NearMiss-2 (NM2)-logistic regression (LR) model demonstrated the highest classification performance in both internal and external validations. Notably, when applied to spectra from a portable Raman spectrometer, the NM2-LR pipeline achieved a 0.95 true positive rate and a 1.00 true negative rate. This Au@Ag nanopillar-based ML-SERS platform provides a rapid, cost-effective, and portable solution for CSF rhinorrhea diagnosis, with significant potential for broader biomedical applications.

키워드

Au@Ag bimetallicCerebrospinal fluid rhinorrheaMachine learningSpectral preprocessingSurface-enhanced raman scatteringCEREBROSPINAL-FLUIDRAMANDIAGNOSIS
제목
Ultrasensitive CSF rhinorrhea screening via machine learning-aided SERS on Au@Ag nanopillars
저자
Park, EugenePark, HyunjunKim, WoochangPark, JoohyungChai, KyunghwanKim, GayoungKang, ChaeyeongKim, ChihyunKang, MinheeRyu, GwanghuiPark, Jinsung
DOI
10.1016/j.jmst.2025.11.047
발행일
2026-09-20
유형
Article
저널명
Journal of Materials Science and Technology
266
페이지
236 ~ 249