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In silico discovery and experimental validation of new protein-protein interactions.

机译:在计算机上发现新的蛋白质-蛋白质相互作用并进行实验验证。

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摘要

We introduce a framework for predicting novel protein-protein interactions (PPIs), based on Fisher's method for combining probabilities of predictions that are based on different data sources, such as the biomedical literature, protein domain and mRNA expression information. Our method compares favorably to our previous method based on text-mining alone and other methods such as STRING. We evaluated our algorithms through the prediction of experimentally found protein interactions underlying Muscular Dystrophy, Huntington's Disease and Polycystic Kidney Disease, which had not yet been recorded in protein-protein interaction databases. We found a 1.74-fold increase in the mean average prediction precision for dysferlin and a 3.09-fold for huntingtin when compared to STRING. The top 10 of predicted interaction partners of huntingtin were analysed in depth. Five were identified previously, and the other five were new potential interaction partners. The full matrix of human protein pairs and their prediction scores are available for download. Our framework can be extended to predict other types of relationships such as proteins in a complex, pathway or related disease mechanisms.
机译:基于费舍尔方法,该方法结合了基于不同数据源(如生物医学文献,蛋白质结构域和mRNA表达信息)的预测概率,我们介绍了一种预测新型蛋白质-蛋白质相互作用(PPI)的框架。与仅基于文本挖掘和其他方法(例如STRING)的先前方法相比,我们的方法具有优势。我们通过预测实验发现的肌营养不良症,亨廷顿氏病和多囊肾病的蛋白质相互作用的基础来评估我们的算法,这些蛋白质相互作用尚未记录在蛋白质-蛋白质相互作用数据库中。与STRING相比,我们发现dysferlin的平均平均预测准确度提高了1.74倍,huntingtin的平均预测准确度提高了3.09倍。深入分析了亨廷顿蛋白预测的十大相互作用伙伴。先前确定了五个,另外五个是新的潜在交互伙伴。人类蛋白质对的完整矩阵及其预测分数可供下载。我们的框架可以扩展以预测其他类型的关系,例如复杂,途径或相关疾病机制中的蛋白质。

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