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RSPSSL: A novel high-fidelity Raman spectral preprocessing scheme to enhance biomedical applications and chemical resolution visualization

Authors :
Jiaqi Hu
Gina Jinna Chen
Chenlong Xue
Pei Liang
Yanqun Xiang
Chuanlun Zhang
Xiaokeng Chi
Guoying Liu
Yanfang Ye
Dongyu Cui
De Zhang
Xiaojun yu
Hong Dang
Wen Zhang
Junfan Chen
Quan Tang
Penglai Guo
Ho-Pui Ho
Yuchao Li
Longqing Cong
Perry Ping Shum
Source :
Light: Science & Applications, Vol 13, Iss 1, Pp 1-21 (2024)
Publication Year :
2024
Publisher :
Nature Publishing Group, 2024.

Abstract

Abstract Raman spectroscopy has tremendous potential for material analysis with its molecular fingerprinting capability in many branches of science and technology. It is also an emerging omics technique for metabolic profiling to shape precision medicine. However, precisely attributing vibration peaks coupled with specific environmental, instrumental, and specimen noise is problematic. Intelligent Raman spectral preprocessing to remove statistical bias noise and sample-related errors should provide a powerful tool for valuable information extraction. Here, we propose a novel Raman spectral preprocessing scheme based on self-supervised learning (RSPSSL) with high capacity and spectral fidelity. It can preprocess arbitrary Raman spectra without further training at a speed of ~1 900 spectra per second without human interference. The experimental data preprocessing trial demonstrated its excellent capacity and signal fidelity with an 88% reduction in root mean square error and a 60% reduction in infinite norm ( $${L}_{{\infty }}$$ L ∞ ) compared to established techniques. With this advantage, it remarkably enhanced various biomedical applications with a 400% accuracy elevation (ΔAUC) in cancer diagnosis, an average 38% (few-shot) and 242% accuracy improvement in paraquat concentration prediction, and unsealed the chemical resolution of biomedical hyperspectral images, especially in the spectral fingerprint region. It precisely preprocessed various Raman spectra from different spectroscopy devices, laboratories, and diverse applications. This scheme will enable biomedical mechanism screening with the label-free volumetric molecular imaging tool on organism and disease metabolomics profiling with a scenario of high throughput, cross-device, various analyte complexity, and diverse applications.

Details

Language :
English
ISSN :
20477538
Volume :
13
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Light: Science & Applications
Publication Type :
Academic Journal
Accession number :
edsdoj.3f85bedae0f349cb9a9b8ef6355dc7b4
Document Type :
article
Full Text :
https://doi.org/10.1038/s41377-024-01394-5