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Feature Selection Assists BLSTM for the Ultrasensitive Detection of Bioflavonoids in Different Biological Matrices Based on the 3D Fluorescence Spectra of Gold Nanoclusters

Authors :
Hamada A. A. Noreldeen
Kai-Yuan Huang
Gang-Wei Wu
Qi Zhang
Hua-Ping Peng
Hao-Hua Deng
Wei Chen
Source :
Analytical Chemistry. 94:17533-17540
Publication Year :
2022
Publisher :
American Chemical Society (ACS), 2022.

Abstract

Rapid and on-site qualitative and quantitative analysis of small molecules (including bioflavonoids) in biofluids are of great importance in biomedical applications. Herein, we have developed two deep learning models based on the 3D fluorescence spectra of gold nanoclusters as a single probe for rapid qualitative and quantitative analysis of eight bioflavonoids in serum. The results proved the efficiency and stability of the random forest-bidirectional long short-term memory (RF-BLSTM) model, which was used only with the most important features after deleting the unimportant features that might hinder the performance of the model in identifying the selected bioflavonoids in serum at very low concentrations. The optimized model achieves excellent overall accuracy (98-100%) in the qualitative analysis of the selected bioflavonoids. Next, the optimized model was transferred to quantify the selected bioflavonoids in serum at nanoscale concentrations. The transferred model achieved excellent accuracy, and the overall determination coefficient (R

Details

ISSN :
15206882 and 00032700
Volume :
94
Database :
OpenAIRE
Journal :
Analytical Chemistry
Accession number :
edsair.doi.dedup.....08c2f3a299fe639a1060833846ca2cbf