| Literature DB >> 31188363 |
Xuejing Chen1, Luyuan Xie2, Yonghong He1, Tian Guan2, Xuesi Zhou3, Bei Wang3, Guangxia Feng2, Haihong Yu4, Yanhong Ji5.
Abstract
A deep learning network called "residual neural network" (ResNet) was used to decode Raman spectra-encoded suspension arrays (SAs). With narrow bandwidths and stable signals, Raman spectra have ideal encoding properties. The different Raman reporter molecules assembled micro-quartz pieces (MQPs) were grafted with various biomolecule probes, which enabled simultaneous detection of numerous target analytes in a single sample. Multiple types of mixed MQPs were measured by Raman spectroscopy and then decoded by ResNet to acquire the type information of analytes. The good classification performance of ResNet was verified by a t-distributed stochastic neighbor embedding (t-SNE) diagram. Compared with other machine learning models, these experiments showed that ResNet was obviously superior in terms of classification stability and training convergence to different datasets. This method simplified the decoding process and the classification accuracy reached 100%.Year: 2019 PMID: 31188363 DOI: 10.1039/c9an00913b
Source DB: PubMed Journal: Analyst ISSN: 0003-2654 Impact factor: 4.616