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Time Series Modeling of Nano-Gold Immunochromatographic Assay via Expectation Maximization Algorithm

机译:基于期望最大化算法的纳米金免疫色谱分析的时间序列建模

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摘要

In this paper, the expectation maximization (EM) algorithm is applied to the modeling of the nano-gold immunochromatographic assay (nano-GICA) via available time series of the measured signal intensities of the test and control lines. The model for the nano-GICA is developed as the stochastic dynamic model that consists of a first-order autoregressive stochastic dynamic process and a noisy measurement. By using the EM algorithm, the model parameters, the actual signal intensities of the test and control lines, as well as the noise intensity can be identified simultaneously. Three different time series data sets concerning the target concentrations are employed to demonstrate the effectiveness of the introduced algorithm. Several indices are also proposed to evaluate the inferred models. It is shown that the model fits the data very well.
机译:在本文中,期望最大化(EM)算法通过测试线和控制线的测量信号强度的可用时间序列,应用于纳米金免疫色谱分析(nano-GICA)的建模。纳米GICA模型是由一阶自回归随机动态过程和噪声测量组成的随机动态模型。通过使用EM算法,可以同时识别模型参数,测试和控制线的实际信号强度以及噪声强度。关于目标浓度的三个不同的时间序列数据集被用来证明引入算法的有效性。还提出了几个指标来评估推断的模型。结果表明该模型很好地拟合了数据。

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