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One-Step Urinary EV Capture-to-SERS on a Temperature-Responsive AuEIH Substrate with Transformer-Based Urologic Cancer Classification.

Analytical chemistry 2026

Yin L, Wang R, Guo FL, Han X, Dong-Zhi LJ, Guo W, Xie QP, Wang JH, Yang T

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Urinary extracellular vesicles (EVs) are promising biomarkers for noninvasive diagnosis of urologic cancers, yet current workflows often require labor-intensive EV preisolation and multistep assays th

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APA Yin L, Wang R, et al. (2026). One-Step Urinary EV Capture-to-SERS on a Temperature-Responsive AuEIH Substrate with Transformer-Based Urologic Cancer Classification.. Analytical chemistry. https://doi.org/10.1021/acs.analchem.6c00411
MLA Yin L, et al.. "One-Step Urinary EV Capture-to-SERS on a Temperature-Responsive AuEIH Substrate with Transformer-Based Urologic Cancer Classification.." Analytical chemistry, 2026.
PMID 41964667

Abstract

Urinary extracellular vesicles (EVs) are promising biomarkers for noninvasive diagnosis of urologic cancers, yet current workflows often require labor-intensive EV preisolation and multistep assays that limit clinical translation. Here we develop AuEIH, a temperature-responsive EV-imprinted hydrogel integrated with a monolayer AuNP array, enabling one-step urinary EV capture and in situ SERS profiling on the same substrate. At 25 °C, the boronic-acid-functionalized imprinted hydrogel selectively captures EVs from urine. Raising the temperature to 37 °C triggers hydrogel contraction, decreases AuNP interparticle gaps, and generates abundant plasmonic hot spots, thereby switching the substrate to a detection state for enhanced SERS acquisition at a physiological temperature. We evaluated AuEIH using 56 clinical urine samples (20 healthy volunteers; 12 bladder cancer, 12 prostate cancer, and 12 renal cancer). The platform achieved 100% accuracy in distinguishing cancer patients from healthy volunteers in this cohort. To further enable robust multiclass tumor typing from label-free spectra, we implemented a CNN-embedded Transformer model, which yielded accuracies of 98% (healthy), 98% (bladder), 94% (prostate), and 94% (renal). This capture-to-detection integrated AuEIH platform, coupled with attention-based spectral learning, provides a practical route toward a high-accuracy, noninvasive urologic cancer diagnosis from urinary EVs.

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