首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >The Human Interactome Knowledge Base (HINT-KB): an integrative human protein interaction database enriched with predicted protein-protein interaction scores using a novel hybrid technique
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The Human Interactome Knowledge Base (HINT-KB): an integrative human protein interaction database enriched with predicted protein-protein interaction scores using a novel hybrid technique

机译:人类交互蛋白质组知识库(HINT-KB):使用新型杂合技术,富含预测的蛋白质-蛋白质相互作用得分的综合人类蛋白质相互作用数据库

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摘要

Proteins are the functional components of many cellular processes and the identification of their physical protein-protein interactions (PPIs) is an area of mature academic research. Various databases have been developed containing information about experimentally and computationally detected human PPIs as well as their corresponding annotation data. However, these databases contain many false positive interactions, are partial and only a few of them incorporate data from various sources. To overcome these limitations, we have developed HINT-KB (http://biotools.ceid.upatras.gr/hint-kb/), a knowledge base that integrates data from various sources, provides a user-friendly interface for their retrieval, calculates a set of features of interest and computes a confidence score for every candidate protein interaction. This confidence score is essential for filtering the false positive interactions which are present in existing databases, predicting new protein interactions and measuring the frequency of each true protein interaction. For this reason, a novel machine learning hybrid methodology, called (Evolutionary Kalman Mathematical Modelling - EvoKalMaModel), was used to achieve an accurate and interpretable scoring methodology. The experimental results indicated that the proposed scoring scheme outperforms existing computational methods for the prediction of PPIs.
机译:蛋白质是许多细胞过程的功能组成部分,其物理蛋白质-蛋白质相互作用(PPI)的鉴定是成熟的学术研究领域。已开发出各种数据库,其中包含有关通过实验和计算方式检测到的人类PPI及其相应的注释数据的信息。但是,这些数据库包含许多误报互动,它们是局部的,并且只有少数几个合并了来自各种来源的数据。为克服这些限制,我们开发了HINT-KB(http://biotools.ceid.upatras.gr/hint-kb/),该知识库集成了来自各种来源的数据,为检索它们提供了用户友好的界面,计算一组感兴趣的特征,并计算每种候选蛋白质相互作用的置信度得分。该置信度分数对于过滤现有数据库中存在的假阳性相互作用,预测新的蛋白质相互作用以及测量每种真实的蛋白质相互作用的频率至关重要。由于这个原因,一种称为(进化卡尔曼数学模型-EvoKalMaModel)的新型机器学习混合方法被用于实现准确且可解释的评分方法。实验结果表明,提出的评分方案优于现有的预测PPI的计算方法。

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