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首页> 外文期刊>Sensors and Actuators >Using support vector machine regression to model the retention of peptides in immobilized metal-affinity chromatography
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Using support vector machine regression to model the retention of peptides in immobilized metal-affinity chromatography

机译:使用支持向量机回归建模固定化金属亲和色谱中的肽保留

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Retention of histidine-containing peptides in immobilized metal-affinity chromatography (IMAC) has been studied using several hundred model peptides. Retention in a Nickel column is primarily driven by the number of histidine residues; however, the amino acid composition of the peptide also plays a significant role. A regression model based on support vector machines was used to learn and subsequently predict the relationship between the amino acid composition and the retention time on a Nickel column. The model was predominantly governed by the count of the histidine residues, and the isoelectric point of the peptide.
机译:已经使用数百种模型肽研究了固定化金属亲和色谱法(IMAC)中含有组氨酸的肽的保留。保留在镍柱中的主要原因是组氨酸残基的数量。然而,该肽的氨基酸组成也起着重要作用。使用基于支持向量机的回归模型来学习并随后预测氨基酸组成和在镍柱上的保留时间之间的关系。该模型主要由组氨酸残基的计数和肽的等电点控制。

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