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Luciferase-based bioassay for rapid pollutants detection and classification by means of multilayer artificial neural networks

机译:基于荧光素酶的生物测定法,通过多层人工神经网络快速检测和分类污染物

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Biosensors for rapid environmental pollution detection can be designed with biomodule based on the bacterial bioluminescent system. Usually this method returns total value of toxicity and does not allow to distinguish pollutants types. Herein we demonstrate the classification of pollutants by the kinetic analysis utilizing artificial neural networks with multilayer perceptron architecture. The kinetics of light emission of NAD(P)H:FMN-oxidoreductase-luciferase bioluminescent reaction was measured for clean water and in the presence of three environment pollutants (1,4-benzoquinone, copper sulfate and 1,3-dihydroxybenzene) separately with various concentrations. The efficiency of using multilayer perceptron with sigmoid activation function for processing of kinetics of light emission was estimated. It was shown that multilayer perceptrons allowing to distinguish pollutant class and concentration after sufficient training. The architecture consisted of 61 inputs neurons, 3 hidden layers and 3 output neurons was found optimum in sense of learning time for classification of three pollutants. Usage of simplest activation function sigmoid and backpropagation method for multilayer perceptron teaching providing the results been useful for smart signal processing in computational modules of biosensors.
机译:可以使用基于细菌生物发光系统的生物模块设计用于快速环境污染检测的生物传感器。通常,此方法返回毒性的总值,并且不允许区分污染物类型。在本文中,我们通过利用带有多层感知器结构的人工神经网络进行动力学分析来证明污染物的分类。测定了NAD(P)H:FMN-氧化还原酶-荧光素酶生物发光反应的发光动力学,测定了纯净水并分别在三种环境污染物(1,4-苯醌,硫酸铜和1,3-二羟基苯)的存在下进行测量。各种浓度。估计了使用具有S型激活功能的多层感知器来处理发光动力学的效率。结果表明,多层感知器在充分训练后可以区分污染物的种类和浓度。该体系结构由61个输入神经元,3个隐藏层和3个输出神经元组成,在学习时间上对三种污染物的分类是最佳的。将最简单的激活函数S型和反向传播方法用于多层感知器教学,可为生物传感器的计算模块中的智能信号处理提供有用的结果。

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