Applications of Fluorescence Spectroscopy and Machine Learning Methods for Monitoring of Elimination of Carbon Nanoagents from the Body

O. E. Sarmanova, A. D. Kudryashov, K. A. Laptinskiy, S. A. Burikov, M. Yu. Khmeleva, A. A. Fedyanina, S. A. Dolenko, P. V. Golubtsov, T. A. Dolenko
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Abstract

The study considers the application of artificial neural networks to solve the inverse problem of fluorescence (FL) spectroscopy for monitoring the elimination of carbon nanocomplexes’ components from the body – the problem of determining the concentrations of carbon dots (CD) and the anticancer drug doxorubicin (Dox) excreted from the body with urine. The problem was solved in three ways using three sets of FL spectroscopy data: spectral data obtained by exciting FL of urine together with CD and Dox with radiation of 405 nm, 532 nm wavelength as well as spectra obtained by combining these data. Multilayer perceptrons (MLP) were applied to the obtained spectral data, which enabled the determination of the concentrations of CD and Dox in urine. To increase the accuracy of monitoring the excretion of CD and Dox with urine, principal component analysis and autoencoders were additionally used. The conducted studies showed that the best results of solving this problem are provided by the application of a MLP to spectral data compressed using an autoencoder. This approach allows us to determine the concentration of CD in urine with MAE of 39 ng/mL (3.3% of the upper limit of the concentration range) and the concentration of Dox with MAE of 27 ng/mL (2.8% of the upper limit of the concentration range). The proposed approach shows results comparable with analogues, however it lacks several significant drawbacks such as rigid fixation of the CD concentration in the suspension, and it can be used for simultaneous rapid monitoring of a number of substances.

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荧光光谱和机器学习方法在监测体内碳纳米剂消除中的应用
该研究考虑应用人工神经网络来解决荧光(FL)光谱监测碳纳米复合物组分从体内消除的反问题-确定碳点(CD)和抗癌药物多柔比星(Dox)随尿液排出体外的浓度问题。利用三组FL光谱数据,通过三种方式解决了这个问题:用405nm、532nm波长的辐射将尿液FL与CD和Dox一起激发得到的光谱数据,以及将这些数据组合得到的光谱。多层感知器(MLP)应用于获得的光谱数据,可以确定尿中CD和Dox的浓度。为了提高监测尿中CD和Dox排泄的准确性,在此基础上增加了主成分分析和自动编码器。研究表明,将MLP应用于自编码器压缩的光谱数据,可以获得最佳的解决效果。这种方法使我们能够在MAE为39 ng/mL(浓度范围上限的3.3%)时测定尿中CD的浓度,在MAE为27 ng/mL时测定Dox的浓度(浓度范围上限的2.8%)。所提出的方法显示出与类似物相当的结果,但是它缺乏几个明显的缺点,例如悬浮液中CD浓度的刚性固定,并且它可以用于同时快速监测许多物质。
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来源期刊
CiteScore
1.50
自引率
11.10%
发文量
25
期刊介绍: The journal covers a wide range of issues in information optics such as optical memory, mechanisms for optical data recording and processing, photosensitive materials, optical, optoelectronic and holographic nanostructures, and many other related topics. Papers on memory systems using holographic and biological structures and concepts of brain operation are also included. The journal pays particular attention to research in the field of neural net systems that may lead to a new generation of computional technologies by endowing them with intelligence.
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