Deep learning assisted SERS detection of prolines and hydroxylated prolines using nitrilotriacetic acid functionalized gold nanopillars
Yuan Zhang, Kuo Zhan, Peilin Xin, Yingqi Zhao, Shubo Wang, Aliaksandr, Hubarevich, Xuejin Zhang, Jianan Huang

TL;DR
This study introduces a novel SERS-based method using functionalized gold nanopillars combined with machine learning to specifically detect and distinguish proline and hydroxyproline, crucial for diagnosing connective tissue disorders.
Contribution
The paper presents a new approach integrating NTA-Ni functionalized gold nanopillars with machine learning for specific detection of Pro and Hyp, overcoming structural similarity challenges.
Findings
Successful differentiation of Pro and Hyp using SERS and machine learning.
Enhanced specificity achieved through NTA-Ni affinity capture.
Potential for improved biomolecule detection in medical diagnostics.
Abstract
Proline (Pro) is one kind of proteinogenic amino acid and an important signaling molecule in the process of metabolism. Hydroxyproline (Hyp) is a product on Pro oxygen sensing post-translational modification (PTM), which is efficiently modulated tumor cells for angiogenesis. Distinguishing between Pro and Hyp is crucial for diagnosing connective tissue disorders, as elevated levels of Hyp can indicate abnormal collagen metabolism, often associated with diseases like osteogenesis imperfecta or fibrosis. However, there is a very small difference between molecular structures of Pro and Hyp, which is a big challenge for current detection technologies to distinguish them. For surface-enhanced Raman scattering (SERS) sensors, the similar molecule structure leads to similar Raman spectra that are difficult to distinguish. Furthermore, another problem is the weak affinity between amino acids…
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Taxonomy
TopicsAdvanced Nanomaterials in Catalysis · Electrochemical sensors and biosensors · Spectroscopy and Chemometric Analyses
