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Machine Learning-Assisted High-Throughput Identification and Quantification of Protein Biomarkers with Printed Heterochains

Authors :
Pan, Xiangyu
Zhang, Zeying
Yun, Yang
Zhang, Xu
Sun, Yali
Zhang, Zixuan
Wang, Huadong
Yang, Xu
Tan, Zhiyu
Yang, Yaqi
Xie, Hongfei
Bogdanov, Bogdan
Zmaga, Georgii
Senyushkin, Pavel
Wei, Xuemei
Song, Yanlin
Su, Meng
Source :
Journal of the American Chemical Society; 20240101, Issue: Preprints
Publication Year :
2024

Abstract

Advanced in vitro diagnosis technologies are highly desirable in early detection, prognosis, and progression monitoring of diseases. Here, we engineer a multiplex protein biosensing strategy based on the tunable liquid confinement self-assembly of multi-material heterochains, which show improved sensitivity, throughput, and accuracy compared to standard ELISA kits. By controlling the material combination and the number of ligand nanoparticles (NPs), we observe robust near-field enhancement as well as both strong electromagnetic resonance in polymer–semiconductor heterochains. In particular, their optical signals show a linear response to the coordination number of the semiconductor NPs in a wide range. Accordingly, a visible nanophotonic biosensor is developed by functionalizing antibodies on central polymer chains that can identify target proteins attached to semiconductor NPs. This allows for the specific detection of multiple protein biomarkers from healthy people and pancreatic cancer patients in one step with an ultralow detection limit (1 pg/mL). Furthermore, rapid and high-throughput quantification of protein expression levels in diverse clinical samples such as buffer, urine, and serum is achieved by combining a neural network algorithm, with an average accuracy of 97.3%. This work demonstrates that the heterochain-based biosensor is an exemplary candidate for constructing next-generation diagnostic tools and suitable for many clinical settings.

Details

Language :
English
ISSN :
00027863 and 15205126
Issue :
Preprints
Database :
Supplemental Index
Journal :
Journal of the American Chemical Society
Publication Type :
Periodical
Accession number :
ejs66773744
Full Text :
https://doi.org/10.1021/jacs.4c04460