Glucose Oxidase Biosensor Modeling and Predictors Optimization by Machine Learning Methods

Sensors (Basel). 2016 Oct 26;16(11):1483. doi: 10.3390/s16111483.

Abstract

Biosensors are small analytical devices incorporating a biological recognition element and a physico-chemical transducer to convert a biological signal into an electrical reading. Nowadays, their technological appeal resides in their fast performance, high sensitivity and continuous measuring capabilities; however, a full understanding is still under research. This paper aims to contribute to this growing field of biotechnology, with a focus on Glucose-Oxidase Biosensor (GOB) modeling through statistical learning methods from a regression perspective. We model the amperometric response of a GOB with dependent variables under different conditions, such as temperature, benzoquinone, pH and glucose concentrations, by means of several machine learning algorithms. Since the sensitivity of a GOB response is strongly related to these dependent variables, their interactions should be optimized to maximize the output signal, for which a genetic algorithm and simulated annealing are used. We report a model that shows a good generalization error and is consistent with the optimization.

Keywords: PLS; biosensors; glucose-oxidase; machine learning; multivariate polynomial regression; neural networks; optimization; support vector machines.

MeSH terms

  • Benzoquinones / chemistry
  • Benzoquinones / metabolism
  • Biosensing Techniques / methods*
  • Glucose / analysis*
  • Glucose Oxidase / metabolism*
  • Hydrogen-Ion Concentration
  • Least-Squares Analysis
  • Machine Learning*
  • Temperature

Substances

  • Benzoquinones
  • Glucose Oxidase
  • Glucose