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The cleverSuite approach for protein characterization: predictions of structural properties, solubility, chaperone requirements and RNA-binding abilities

机译:用于蛋白质表征的cleverSuite方法:结构特性,溶解度,伴侣要求和RNA结合能力的预测

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Motivation: The recent shift towards high-throughput screening is posing new challenges for the interpretation of experimental results. Here we propose the cleverSuite approach for large-scale characterization of protein groups. Description: The central part of the cleverSuite is the cleverMachine (CM), an algorithm that performs statistics on protein sequences by comparing their physico-chemical propensities. The second element is called cleverClassifier and builds on top of the models generated by the CM to allow classification of new datasets. Results: We applied the cleverSuite to predict secondary structure properties, solubility, chaperone requirements and RNA-binding abilities. Using cross-validation and independent datasets, the cleverSuite reproduces experimental findings with great accuracy and provides models that can be used for future investigations.
机译:动机:最近向高通量筛选的转变对解释实验结果提出了新的挑战。在这里,我们提出用于蛋白质组大规模表征的cleverSuite方法。描述:cleverSuite的核心部分是cleverMachine(CM),该算法通过比较蛋白质的理化倾向对蛋白质序列进行统计。第二个元素称为cleverClassifier,它基于CM生成的模型之上,以允许对新数据集进行分类。结果:我们将cleverSuite应用于预测二级结构性质,溶解度,伴侣要求和RNA结合能力。通过使用交叉验证和独立的数据集,cleverSuite可以非常准确地重现实验结果,并提供可用于将来研究的模型。

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