School of Biosystems and Food Engineering, University College Dublin, Belfield, Dublin 4, Ireland.
School of Agriculture and Food Science, University College Dublin, Belfield, Dublin 4, Ireland.
Molecules. 2021 Oct 19;26(20):6318. doi: 10.3390/molecules26206318.
This work investigates the application of reflectance Fourier transform infrared (FTIR) microscopic imaging for rapid, and non-invasive detection and classification between and cell suspensions dried onto metallic substrates (stainless steel (STS) and aluminium (Al) slides) in the optical density (OD) concentration range of 0.001 to 10. Results showed that reflectance FTIR of samples with OD lower than 0.1 did not present an acceptable spectral signal to enable classification. Two modelling strategies were devised to evaluate model performance, transferability and consistency among concentration levels. Modelling strategy 1 involves training the model with half of the sample set, consisting of all concentrations, and applying it to the remaining half. Using this approach, for the STS substrate, the best model was achieved using support vector machine (SVM) classification, providing an accuracy of 96% and Matthews correlation coefficient (MCC) of 0.93 for the independent test set. For the Al substrate, the best SVM model produced an accuracy and MCC of 91% and 0.82, respectively. Furthermore, the aforementioned best model built from one substrate was transferred to predict the bacterial samples deposited on the other substrate. Results revealed an acceptable predictive ability when transferring the STS model to samples on Al (accuracy = 82%). However, the Al model could not be adapted to bacterial samples deposited on STS (accuracy = 57%). For modelling strategy 2, models were developed using one concentration level and tested on the other concentrations for each substrate. Results proved that models built from samples with moderate (1 OD) concentration can be adapted to other concentrations with good model generalization. Prediction maps revealed the heterogeneous distribution of biomolecules due to the coffee ring effect. This work demonstrated the feasibility of applying FTIR to characterise spectroscopic fingerprints of dry bacterial cells on substrates of relevance for food processing.
这项工作研究了反射傅里叶变换红外(FTIR)显微成像在快速、非侵入性检测和分类之间的应用 和 细胞悬浮液在金属基底(不锈钢(STS)和铝(Al)载玻片)上干燥,光学密度(OD)浓度范围为 0.001 至 10。结果表明,OD 低于 0.1 的样品的反射 FTIR 没有呈现出可接受的光谱信号,无法进行分类。设计了两种建模策略来评估模型性能、可转移性和浓度水平之间的一致性。策略 1 涉及使用包含所有浓度的样本集的一半来训练模型,并将其应用于另一半。使用这种方法,对于 STS 基底,使用支持向量机(SVM)分类获得了最佳模型,为独立测试集提供了 96%的准确性和 0.93 的马修斯相关系数(MCC)。对于 Al 基底,最佳的 SVM 模型产生了 91%的准确性和 0.82 的 MCC。此外,从一种基底构建的上述最佳模型被转移来预测沉积在另一种基底上的细菌样本。结果表明,当将 STS 模型转移到沉积在 Al 上的样本时,具有可接受的预测能力(准确性=82%)。然而,Al 模型不能适应沉积在 STS 上的细菌样本(准确性=57%)。对于策略 2,使用一个浓度水平构建模型,并在每个基底上的其他浓度下进行测试。结果证明,从中度(1 OD)浓度的样本中构建的模型可以很好地推广到其他浓度,具有良好的模型泛化能力。预测图显示了由于咖啡环效应导致的生物分子的不均匀分布。这项工作证明了将 FTIR 应用于表征与食品加工相关的基质上干燥细菌细胞的光谱指纹的可行性。