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Neural network prediction of peptide separation in strong anion exchange chromatography

机译:强阴离子交换色谱中肽分离的神经网络预测

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摘要

Motivation: The still emerging combination of technologies that enable description and characterization of all expressed proteins in a biological system is known as proteomics. Although many separation and analysis technologies have been employed in proteomics, it remains a challenge to predict peptide behavior during separation processes. New informatics tools are needed to model the experimental analysis method that will allow scientists to predict peptide separation and assist with required data mining steps, such as protein identification. Results: We developed a software package to predict the separation of peptides in strong anion exchange (SAX) chromatography using artificial neural network based pattern classification techniques. A multi-layer perceptron is used as a pattern classifier and it is designed with feature vectors extracted from the peptides so that the classification error is minimized. A genetic algorithm is employed to train the neural network. The developed system was tested using 14 protein digests, and the sensitivity analysis was carried out to investigate the significance of each feature.
机译:动机:能够描述和表征生物系统中所有表达蛋白质的技术仍在不断涌现,被称为蛋白质组学。尽管蛋白质组学中已经采用了许多分离和分析技术,但是预测分离过程中肽的行为仍然是一个挑战。需要新的信息学工具来对实验分析方法进行建模,这将使科学家能够预测肽的分离并协助所需的数据挖掘步骤,例如蛋白质鉴定。结果:我们开发了一个软件包,该软件包使用基于人工神经网络的模式分类技术在强阴离子交换(SAX)色谱中预测肽的分离。多层感知器用作模式分类器,并使用从肽中提取的特征向量进行设计,以使分类错误最小化。遗传算法用于训练神经网络。使用14种蛋白质消化物对开发的系统进行了测试,并进行了敏感性分析以研究每个功能的重要性。

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