4.7 Article

Using staining as reference for spectral imaging: Its application for the development of an analytical method to predict the presence of bacterial biofilms

Journal

TALANTA
Volume 261, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.talanta.2023.124655

Keywords

Spectral imaging; Hyperspectral; Image treatment; Staining; Biofilm; Machine learning; Neural networks

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Currently, the lack of reference methods is hindering the full potential of spectral imaging, despite its ability to provide valuable information. This study proposes a staining-based reference method with digital image treatment for spectral imaging, aiming to predict the presence of biofilms in a fast, efficient, contactless, and non-invasive way.
At present, although spectral imaging is known to have a great potential to provide a massive amount of valuable information, the lack of reference methods remains as one of the bottlenecks to access the full capacity of this technique. This work aims to present a staining-based reference method with digital image treatment for spectral imaging, in order to propose a fast, efficient, contactless and non-invasive analytical method to predict the presence of biofilms. Spectral images of Pseudomonas aeruginosa biofilms formed on high density polyethylene coupons were acquired in visible and near infrared (vis-NIR) range between 400 and 1000 nm. Crystal violet staining served as a biofilm indicator, allowing the bacterial cells and the extracellular matrix to be marked on the coupon. Treated digital images of the stained biofilms were used as a reference. The size and pixels of the hyperspectral and digital images were scaled and matched to each other. Intensity color thresholds were used to differentiate the pixels associate to areas containing biofilms from those ones placed in biofilm-free areas. The model facultative Gram-negative bacterium, P. aeruginosa, which can form highly irregularly shaped and het-erogeneous biofilm structures, was used to enhance the strength of the method, due to its inherent difficulties. The results showed that the areas with high and low intensities were modeled with good performance, but the moderate intensity areas (with potentially weak or nascent biofilms) were quite challenging. Image processing and artificial neural networks (ANN) methods were performed to overcome the issues resulted from biofilm heterogeneity, as well as to train the spectral data for biofilm predictions.

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