Evaluating the Performance of Ethanol Electrochemical Nanobiosensor Through Machine for Predictive Analysis of Electric Current in Self-Powered Biosensors

Afshin Farahbakhsh, Javad Mohebbi Najm Abad, Amin Hekmatmanesh, Heikki Handroos
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Abstract

In this study, the focus is on ethanol nano biosensors based on alcohol oxidase (AOX) enzymatic reactions and the feasibility of generating electric current for biobatteries. The aim is to convert the latent energy in ethanol into electrical energy through the enzymatic oxidation process in the presence of an AOX enzyme. The release of electrons and the creation of a potential difference make the use of ethanol as a biofuel cell/self-power biosensor in biologically sensitive systems feasible. To achieve this, glassy carbon electrodes were modified with gold nanoparticles to enhance conductivity, and the AOX enzyme was immobilized on the working electrode. The current generated through the enzymatic process was measured in various pH and analyte concentration conditions. Afterward, machine-learning models, including multilayer perceptron (MLP), deep neural network, decision tree, and random forest, were employed to assess the impact of parameters on electric current generation, evaluate the error rate, and compare the results. The results indicated that the MLP model was the most suitable method for predicting the electric current produced under different pH, temperature, and ethanol concentration values. These findings can be utilized to identify optimal conditions and increase the current output for use as a reliable energy source in self-powered biosensors. In conclusion, this study suggests a promising way to generate electricity by oxidizing ethanol with the AOX enzyme. The use of machine learning to analyze experimental data has provided insight into optimal conditions for maximizing electric current output for developing sustainable energy sources in biologically sensitive systems and biobattery technology.

Abstract Image

基于自供电型生物传感器电流预测分析的乙醇电化学纳米生物传感器性能评价
在本研究中,重点研究了基于乙醇氧化酶(AOX)酶促反应的乙醇纳米生物传感器以及为生物电池产生电流的可行性。目的是将乙醇中的潜在能量转化为电能,通过酶氧化过程中存在的AOX酶。电子的释放和电位差的产生使得在生物敏感系统中使用乙醇作为生物燃料电池/自供电生物传感器是可行的。为了实现这一目标,用金纳米颗粒修饰玻碳电极以提高导电性,并将AOX酶固定在工作电极上。在不同的pH和分析物浓度条件下测量了酶促过程产生的电流。随后,采用多层感知器(MLP)、深度神经网络、决策树和随机森林等机器学习模型,评估参数对电流产生的影响,评估错误率,并比较结果。结果表明,MLP模型是预测不同pH、温度和乙醇浓度下产生电流的最合适方法。这些发现可以用来确定最佳条件,并增加电流输出,作为自供电生物传感器的可靠能源。总之,这项研究提出了一种很有前途的方法,即用AOX酶氧化乙醇来发电。利用机器学习来分析实验数据,为在生物敏感系统和生物电池技术中开发可持续能源提供了最大化电流输出的最佳条件。
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