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Glucose Oxidase Biosensor Modeling and Predictors Optimization by Machine Learning Methods

机译:葡萄糖氧化酶生物传感器建模和预测器优化的机器学习方法

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摘要

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.
机译:生物传感器是结合了生物识别元件和物理化学传感器的小型分析设备,可将生物信号转换为电读数。如今,它们的技术吸引力在于它们的快速性能,高灵敏度和连续测量能力。但是,仍在研究中。本文旨在为生物技术这个不断发展的领域做出贡献,重点是通过回归分析的统计学习方法对葡萄糖氧化酶生物传感器(GOB)建模。我们通过几种机器学习算法,对GOB在不同条件下(例如温度,苯醌,pH和葡萄糖浓度)具有因变量的安培响应进行建模。由于GOB响应的敏感性与这些因变量密切相关,因此应优化它们的相互作用以最大化输出信号,为此需要使用遗传算法和模拟退火。我们报告了一个模型,该模型显示出良好的泛化误差并与优化一致。

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