Recent Advances and Applications of Rapid Microbial Assessment from a Food Safety Perspective

Sensors (Basel). 2022 Apr 6;22(7):2800. doi: 10.3390/s22072800.

Abstract

Unsafe food is estimated to cause 600 million cases of foodborne disease, annually. Thus, the development of methods that could assist in the prevention of foodborne diseases is of high interest. This review summarizes the recent progress toward rapid microbial assessment through (i) spectroscopic techniques, (ii) spectral imaging techniques, (iii) biosensors and (iv) sensors designed to mimic human senses. These methods often produce complex and high-dimensional data that cannot be analyzed with conventional statistical methods. Multivariate statistics and machine learning approaches seemed to be valuable for these methods so as to "translate" measurements to microbial estimations. However, a great proportion of the models reported in the literature misuse these approaches, which may lead to models with low predictive power under generic conditions. Overall, all the methods showed great potential for rapid microbial assessment. Biosensors are closer to wide-scale implementation followed by spectroscopic techniques and then by spectral imaging techniques and sensors designed to mimic human senses.

Keywords: food microbiology; machine learning; rapid methods; sensors.

Publication types

  • Review

MeSH terms

  • Biosensing Techniques* / methods
  • Food
  • Food Microbiology
  • Food Safety
  • Foodborne Diseases* / diagnosis
  • Foodborne Diseases* / prevention & control
  • Humans

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