An overview of implementing Multispectral Imaging coupled with machine learning for the assessment of microbiological quality and authenticity in foods
Anastasia Lytou,
Lemonia-Christina Fengou,
Nette Schultz,
Jens Michael Carstensen,
Yimin Zhang,
Fady Mohareb,
George-John Nychas
Kapitel/Beitrag aus dem Buch: Beyerer, J et al. 2023. OCM 2023 - 6th International Conference on Optical Characterization of Materials, March 22nd – 23rd, 2023, Karlsruhe, Germany : Conference Proceedings.
Multispectral Imaging is an increasingly applied technique
for the estimation of several quality parameters across the
food chain. The microbiological quality and safety as well as
the detection of food fraud are among the most significant aspects
in food quality and safety assessment. MSI analysis was
performed using a VideometerLab instrument (Videometer A/S,
Videometer, Herlev, Denmark), while more than 9000 food samples
were examined in total, for the assessment of microbiological
quality and the detection of food fraud. For estimating microbial
populations, total aerobic counts (TAC) were determined.
Several regression and classification algorithms were employed,
including partial least squares regression (PLS-R), support vector
machines (SVM), partial least squares discriminant analysis
(PLS-DA), tree-based algorithms etc. The slope of the regression
line, root mean squared error (RMSE), coefficient of determination
(R-squared) and accuracy score were used as metrics for the evaluation of models’ performance. In adulteration case,
the prediction of different levels of pork in chicken meat and
vice versa yielded high accuracy scores i.e., over 90% , while,
using the SVM algorithm, the presence of bovine offal in beef
was successfully detected. Additionally, Random Forest algorithm
was efficient (accuracy>93% ) in discriminating seabass
and seabream fish fillets. Concerning microbiological quality, as
indicated by the performance indices, the developed models exhibited
satisfactory performance in predicting microbial load in
different foods (RMSE<1.00, R-squared>0.80). Indicatively, MSI
spectral data combined with PLS-R could satisfactorily predict
TAC and Pseudomonas spp. counts on the surface of chicken fillets
regardless of storage temperature and batch variation based
on the performance metrics (R-squared: 0.89, RMSE: 0.88) while,
this algorithm presented also satisfactory performance in estimation
microbial populations in brown edible seaweed (R-squared:
0.80, RMSE: 0.90). However, in this case, selecting the appropriate
analytical approaches and machine learning algorithms is
still challenging.