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揭示基于大量拉曼光谱的模型在预测微生物单细胞拉曼光谱方面的功效。

Unveiling the efficacy of a bulk Raman spectra-based model in predicting single cell Raman spectra of microorganisms.

作者信息

Tewes Thomas J, Kerst Mario, Pavlov Svyatoslav, Huth Miriam A, Hansen Ute, Bockmühl Dirk P

机构信息

Faculty of Life Sciences, Rhine-Waal University of Applied Sciences, Marie-Curie-Straße 1, 47533, Kleve, Germany.

Faculty of Communication and Environment, Rhine-Waal University of Applied Sciences, Friedrich-Heinrich-Allee, 47475, Kamp-Lintfort, Germany.

出版信息

Heliyon. 2024 Mar 9;10(6):e27824. doi: 10.1016/j.heliyon.2024.e27824. eCollection 2024 Mar 30.

Abstract

In a previous publication, we trained predictive models based on Raman bulk spectra of microorganisms placed on a silicon dioxide protected silver mirror slide to make predictions for new Raman spectra, unknown to the models, of microorganisms placed on a different substrate, namely stainless steel. Now we have combined large sections of this data and trained a convolutional neural network (CNN) to make predictions for single cell Raman spectra. We show that a database based on microbial bulk material is conditionally suited to make predictions for the same species in terms of single cells. Data of 13 different microorganisms (bacteria and yeasts) were used. Two of the 13 species could be identified 90% correctly and five other species 71%-88%. The six remaining species were correctly predicted by only 0%-49%. Especially stronger fluorescence in bulk material compared to single cells but also photodegradation of carotenoids are some effects that can complicate predictions for single cells based on bulk data. The results could be helpful in assessing universal Raman tools or databases.

摘要

在之前的一篇出版物中,我们基于放置在二氧化硅保护的银镜载玻片上的微生物的拉曼全光谱训练了预测模型,以便对放置在不同底物(即不锈钢)上的微生物的新拉曼光谱(模型未知)进行预测。现在,我们整合了大量此类数据,并训练了一个卷积神经网络(CNN)来对单细胞拉曼光谱进行预测。我们表明,基于微生物块状材料的数据库在一定条件下适用于对同一物种的单细胞进行预测。使用了13种不同微生物(细菌和酵母)的数据。13个物种中有2个能够被正确识别90%,另外5个物种的识别准确率为71%-88%。其余6个物种的正确预测率仅为0%-49%。与单细胞相比,块状材料中特别强的荧光以及类胡萝卜素的光降解等一些效应,可能会使基于块状数据对单细胞的预测变得复杂。这些结果可能有助于评估通用的拉曼工具或数据库。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e9f0/10950671/db77b3663c42/gr1.jpg

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