首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >Gradient liquid chromatographic retention time prediction for suspect screening applications: A critical assessment of a generalised artificial neural network-based approach across 10 multi-residue reversed-phase analytical methods
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Gradient liquid chromatographic retention time prediction for suspect screening applications: A critical assessment of a generalised artificial neural network-based approach across 10 multi-residue reversed-phase analytical methods

机译:用于可疑筛查应用的梯度液相色谱保留时间预测:跨10种多残留反相分析方法的基于广义人工神经网络的方法的关键评估

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摘要

For the first time, the performance of a generalised artificial neural network (ANN) approach for the prediction of 2492 chromatographic retention times (t(R)) is presented for a total of 1117 chemically diverse compounds present in a range of complex matrices and across 10 gradient reversed-phase liquid chromatography-(high resolution) mass spectrometry methods. Probabilistic, generalised regression, radial basis function as well as 2- and 3-layer multilayer perceptron-type neural networks were investigated to determine the most robust and accurate model for this purpose. Multi-layer perceptrons most frequently yielded the best correlations in 8 out of 10 methods. Averaged correlations of predicted versus measured t(R) across all methods were R-2=0.918, 0.924 and 0.898 for the training, verification and test sets respectively. Predictions of blind test compounds (n=8-84 cases) resulted in an average absolute accuracy of 1.02 +/- 0.54 min for all methods. Within this variation, absolute accuracy was observed to marginally improve for shorter runtimes, but was found to be relatively consistent with respect to analyte retention ranges (similar to 5%). Finally, optimised and replicated network dependency on molecular descriptor data is presented and critically discussed across all methods. Overall, ANNs were considered especially suitable for suspects screening applications and could potentially be utilised in bracketed-type analyses in combination with high resolution mass spectrometry. (C) 2015 Elsevier B.V. All rights reserved.
机译:首次,针对在一系列复杂基质中和在不同领域中存在的总共1117种化学多样的化合物,提出了一种用于预测2492个色谱保留时间(t(R))的通用人工神经网络(ANN)方法的性能10种梯度反相液相色谱-(高分辨率)质谱法。对概率,广义回归,径向基函数以及2层和3层多层感知器型神经网络进行了研究,以确定用于此目的的最可靠,最准确的模型。在10种方法中的8种中,多层感知器最经常产生最佳的相关性。在所有方法中,训练,验证和测试集的所有预测和测量t(R)的平均相关性分别为R-2 = 0.918、0.924和0.898。盲测化合物的预测(n = 8-84例)导致所有方法的平均绝对准确度均为1.02 +/- 0.54分钟。在此变化范围内,观察到绝对精度在较短的运行时间中略有提高,但发现相对于分析物保留范围(大约5%)相对稳定。最后,在所有方法中提出并严格讨论了对分子描述符数据的优化和复制网络依赖性。总体而言,人工神经网络被认为特别适合于嫌疑人筛查应用,并有可能与高分辨质谱结合用于方括号分析中。 (C)2015 Elsevier B.V.保留所有权利。

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