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Data-Driven Modeling of Smartphone-Based Electrochemiluminescence Sensor Data Using Artificial Intelligence

机译:基于人工智能的基于智能手机的电化学发光传感器数据的数据驱动建模

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摘要

Understanding relationships among multimodal data extracted from a smartphone-based electrochemiluminescence (ECL) sensor is crucial for the development of low-cost point-of-care diagnostic devices. In this work, artificial intelligence (AI) algorithms such as random forest (RF) and feedforward neural network (FNN) are used to quantitatively investigate the relationships between the concentration of luminophore and its experimentally measured ECL and electrochemical data. A smartphone-based ECL sensor with /TPrA was developed using disposable screen-printed carbon electrodes. ECL images and amperograms were simultaneously obtained following 1.2-V voltage application. These multimodal data were analyzed by RF and FNN algorithms, which allowed the prediction of concentration using multiple key features. High correlation (0.99 and 0.96 for RF and FNN, respectively) between actual and predicted values was achieved in the detection range between 0.02 µM and 2.5 µM. The AI approaches using RF and FNN were capable of directly inferring the concentration of using easily observable key features. The results demonstrate that data-driven AI algorithms are effective in analyzing the multimodal ECL sensor data. Therefore, these AI algorithms can be an essential part of the modeling arsenal with successful application in ECL sensor data modeling.
机译:理解从基于智能手机的电化学发光(ECL)传感器提取的多峰数据之间的关系对于开发低成本即时诊断设备至关重要。在这项工作中,人工智能(AI)算法(例如随机森林(RF)和前馈神经网络(FNN))用于定量研究发光体浓度与其实验测量的ECL和电化学数据之间的关系。使用一次性丝网印刷碳电极开发了具有/ TPrA的基于智能手机的ECL传感器。在施加1.2V电压后,同时获得了ECL图像和电流图。这些多峰数据通过RF和FNN算法进行了分析,从而可以使用多个关键特征进行浓度预测。在0.02 µM至2.5 µM的检测范围内,实际值与预测值之间具有高度相关性(RF和FNN分别为0.99和0.96)。使用RF和FNN的AI方法能够直接推断使用易于观察的关键特征的集中度。结果表明,数据驱动的AI算法可有效分析多模式ECL传感器数据。因此,这些AI算法可以成功地应用于ECL传感器数据建模中,成为建模库的重要组成部分。

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