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Estimating complicated baselines in analytical signals using the iterative training of Bayesian regularized artificial neural networks

机译:使用贝叶斯正则化人工神经网络的迭代训练估算分析信号中的复杂基线

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The present work deals with the development of a new baseline correction method based on the comparative learning capabilities of artificial neural networks. The developed method uses the Bayes probability theorem for prevention of the occurrence of the over-fitting and finding a generalized baseline. The developed method has been applied on simulated and real metabolomic gas-chromatography (GC) and Raman data sets. The results revealed that the proposed method can be used to handle different types of baselines with cave, convex, curvelinear, triangular and sinusoidal patterns. For further evaluation of the performances of this method, it has been compared with benchmarking baseline correction methods such as corner-cutting (CC), morphological weighted penalized least squares (MPLS), adaptive iteratively-reweighted penalized least squares (airPLS) and iterative polynomial fitting (iPF). In order to compare the methods, the projected difference resolution (PDR) criterion has been calculated for the data before and after the baseline correction procedure. The calculated values of PDR after the baseline correction using iBRANN, airPLS, MPLS, iPF and CC algorithms for the GC metabolomic data were 4.18, 3.64, 3.88, 1.88 and 3.08, respectively. The obtained results in this work demonstrated that the developed iterative Bayesian regularized neural network (iBRANN) method in this work thoroughly detects the baselines and is superior over the CC, MPLS, airPLS and iPF techniques. A graphical user interface has been developed for the suggested algorithm and can be used for easy implementation of the iBRANN algorithm for the correction of different chromatography, NMR and Raman data sets. (C) 2016 Elsevier B.V. All rights reserved.
机译:目前的工作是基于人工神经网络的比较学习能力,开发一种新的基线校正方法。所开发的方法使用贝叶斯概率定理来防止过度拟合的发生并找到广义的基线。所开发的方法已应用于模拟和真实的代谢组学气相色谱(GC)和拉曼数据集。结果表明,该方法可用于处理具有洞穴,凸形,曲线线性,三角形和正弦形图案的不同类型的基线。为了进一步评估此方法的性能,已将其与基准基线校正方法(例如,切角(CC),形态加权加权最小二乘(MPLS),自适应迭代加权加权最小二乘(airPLS)和迭代多项式)进行了比较拟合(iPF)。为了比较这些方法,已经针对基线校正过程之前和之后的数据计算了预测差异分辨率(PDR)标准。使用iBRANN,airPLS,MPLS,iPF和CC算法对GC代谢组学数据进行基线校正后,PDR的计算值分别为4.18、3.64、3.88、1.88和3.08。在这项工作中获得的结果表明,在这项工作中开发的迭代贝叶斯正则化神经网络(iBRANN)方法可以彻底检测基线,并且优于CC,MPLS,airPLS和iPF技术。已针对建议的算法开发了图形用户界面,可将其轻松用于iBRANN算法的实施,以校正不同的色谱,NMR和拉曼数据集。 (C)2016 Elsevier B.V.保留所有权利。

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