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Predicting Structural Disruption of Proteins Caused by Crossover

机译:预测由交叉引起的蛋白质结构破坏

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We present a machine learning model that predicts a structural disruption score from a protein’s primary structure. SCHEMA was introduced by Frances Arnold and colleagues as a method for determining putative recombination sites of a protein on the basis of the full (PDB) description of its structure. The present method provides an alternative to SCHEMA that is able to determine the same score from sequence data only. Circumventing the need for resolving the full structure enables the exploration of yet unresolved and even hypothetical sequences for protein design efforts. Deriving the SCHEMA score from a primary structure is achieved using a two step approach: first predicting a secondary structure from the sequence and then predicting the SCHEMA score from the predicted secondary structure. The correlation coefficient for the prediction is 0.88 and indicates the feasibility of replacing SCHEMA with little loss of precision.
机译:我们提出了一种机器学习模型,其预测来自蛋白质的主要结构的结构中断分数。 Frances Arnold及其同事介绍了模式作为确定其结构的完整(PDB)描述来确定蛋白质的调节重组位点的方法。本方法提供了能够仅从序列数据确定相同的分数的模式。规避解决完整结构的需求使得能够探索尚未解决的蛋白质设计努力的假设序列。使用两个步骤方法实现来自主要结构的模式得分:首先从序列预测次要结构,然后从预测的二级结构预测模式得分。预测的相关系数为0.88并表示替换模式的可行性,几乎没有精度损失。

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