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首页> 外文期刊>BioTechniques >Computationally assisted screening and design of cell-interactive peptides by a cell-based assay using peptide arrays and a fuzzy neural network algorithm.
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Computationally assisted screening and design of cell-interactive peptides by a cell-based assay using peptide arrays and a fuzzy neural network algorithm.

机译:通过使用肽阵列和模糊神经网络算法的基于细胞的测定,以计算机辅助方式筛选和设计细胞相互作用肽。

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摘要

We developed a method of effective peptide screening that combines experiments and computational analysis. The method is based on the concept that screening efficiency can be enhanced from even limited data by use of a model derived from computational analysis that serves as a guide to screening and combining the model with subsequent repeated experiments. Here we focus on cell-adhesion peptides as a model application of this peptide-screening strategy. Cell-adhesion peptides were screened by use of a cell-based assay of a peptide array. Starting with the screening data obtained from a limited, random 5-mer library (643 sequences), a rule regarding structural characteristics of cell-adhesion peptides was extracted by fuzzy neural network (FNN) analysis. According to this rule, peptides with unfavored residues in certain positions that led to inefficient binding were eliminated from the random sequences. In the restricted, second random library (273 sequences), the yield of cell-adhesion peptides having an adhesion rate more than 1.5-fold to that of the basal array support was significantly high (31%) compared with the unrestricted random library (20%). In the restricted third library (50 sequences), the yield of cell-adhesion peptides increased to 84%. We conclude that a repeated cycle of experiments screening limited numbers of peptides can be assisted by the rule-extracting feature of FNN.
机译:我们开发了一种将实验和计算分析相结合的有效多肽筛选方法。该方法基于这样的概念:通过使用从计算分析中得出的模型可以从有限的数据中提高筛选效率,该模型可作为筛选模型并将其与后续重复实验结合的指南。在这里,我们专注于细胞粘附肽,作为这种肽筛选策略的模型应用。通过使用基于细胞的肽阵列测定法筛选细胞粘附肽。从有限的随机五聚体文库(643个序列)获得的筛选数据开始,通过模糊神经网络(FNN)分析提取有关细胞粘附肽结构特征的规则。根据该规则,从随机序列中消除了在某些位置具有导致无效结合的残基的肽。在限制性第二随机文库(273个序列)中,与非限制性随机文库(20%)相比,与基础阵列支持物的粘附率高1.5倍的细胞粘附肽的产率非常高(31%) %)。在限制性的第三文库(50个序列)中,细胞粘附肽的产率提高到84%。我们得出结论,通过FNN的规则提取功能可以辅助筛选有限数量肽段的实验的重复周期。

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