利用无标记表面增强拉曼光谱和可解释深度学习同时定量分析多种代谢物

Xianli Tian , Peng Wang , Guoqiang Fang , Xiang Lin , Jing Gao
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引用次数: 0

摘要

代谢物是重要的生物标记物,能反映生理和病理状态,为疾病进展和早期检测提供洞察力。本研究介绍了一种将无标记表面增强拉曼光谱(SERS)与深度学习相结合的先进分析技术,并利用SHAP(SHapley Additive exPlanations)对深度学习模型的预测原理进行可视化解释分析,从而促进多种代谢物的同时检测和定量分析。通过三相界面自组装方法制造了单层银纳米粒子SERS基底,从而捕获了混合溶液中目标代谢物的复杂光谱信息。利用定制的深度神经网络模型和多通道特征提取,预测了尿酸(R2 = 0.976)、黄嘌呤(R2 = 0.971)、次黄嘌呤(R2 = 0.977)和肌酐(R2 = 0.940)的浓度。该方法的可扩展性得到了验证,因为同时检测的目标物越多,其性能越稳定。这种方法为代谢物分析提供了一种灵敏、经济、快速的替代方法,对临床诊断和个性化医疗具有重要意义。
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Simultaneous quantitative analysis of multiple metabolites using label-free surface-enhanced Raman spectroscopy and explainable deep learning
Metabolites serve as vital biomarkers, reflecting physiological and pathological states and offering insights into disease progression and early detection. This study introduces an advanced analytical technique integrating label-free Surface-Enhanced Raman Spectroscopy (SERS) with deep learning, and leverages SHAP (SHapley Additive exPlanations) to provide a visual interpretative analysis of the predictive rationale of the deep learning model, facilitating simultaneous detection and quantitative analysis of multiple metabolites. Monolayer silver nanoparticle SERS substrates were fabricated via a triple-phase interfacial self-assembly method, which captured complex spectral information of target metabolites in mixed solutions. A custom-built deep neural network model with multi-channel feature extraction was employed to predict the concentrations of uric acid (R2 = 0.976), xanthine (R2 = 0.971), hypoxanthine (R2 = 0.977), and creatinine (R2 = 0.940). The method’s scalability was validated as the performance remained consistent with an increasing number of simultaneous targets. This approach offers a sensitive, cost-effective, and rapid alternative for metabolite analysis, with significant implications for clinical diagnostics and personalized medicine.
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来源期刊
CiteScore
8.40
自引率
11.40%
发文量
1364
审稿时长
40 days
期刊介绍: Spectrochimica Acta, Part A: Molecular and Biomolecular Spectroscopy (SAA) is an interdisciplinary journal which spans from basic to applied aspects of optical spectroscopy in chemistry, medicine, biology, and materials science. The journal publishes original scientific papers that feature high-quality spectroscopic data and analysis. From the broad range of optical spectroscopies, the emphasis is on electronic, vibrational or rotational spectra of molecules, rather than on spectroscopy based on magnetic moments. Criteria for publication in SAA are novelty, uniqueness, and outstanding quality. Routine applications of spectroscopic techniques and computational methods are not appropriate. Topics of particular interest of Spectrochimica Acta Part A include, but are not limited to: Spectroscopy and dynamics of bioanalytical, biomedical, environmental, and atmospheric sciences, Novel experimental techniques or instrumentation for molecular spectroscopy, Novel theoretical and computational methods, Novel applications in photochemistry and photobiology, Novel interpretational approaches as well as advances in data analysis based on electronic or vibrational spectroscopy.
期刊最新文献
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