Using semantic similarity to detect features in yeast protein complexes

P. Guzzi, Marianna Milano, P. Veltri, M. Cannataro
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Abstract

Biological data stored in databases can be associated with information (knowledge) such as experiments, properties and functions, response to drugs etc. Such a knowledge is often stored in biological ontologies. Gene Ontology is one of the main resource of biological knowledge providing both a categorization of terms and a source of annotation for genes and proteins. This enables the use of ontology-based methodologies for the analysis of proteins and their functions. One methodology is based on semantic based similarity measures. Recently there is a growing interest in the use of semantic based methodologies to the analysis of protein interaction data such as the prediction of protein complexes based on semantic similarity measures. Despite this interest, there is the need for an assessment of semantic measures as well as a deep study on the impact of the chosen measure in the obtained results. This paper treats the problem of using semantic similarity measure to analyse protein complexes and to improve protein complexes prediction frameworks. Tests have been performed in yeast protein complexes. Results indicate that there exists a bias among measures as well as an higher value of semantic similarity within proteins that participate in the same complex, proving both a possible use of semantic similarity protein complexes prediction and a suggestion in the measure.
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利用语义相似度检测酵母蛋白复合物的特征
存储在数据库中的生物数据可以与实验、特性和功能、对药物的反应等信息(知识)相关联。这样的知识通常存储在生物本体中。基因本体论是生物学知识的主要来源之一,为基因和蛋白质提供术语分类和注释来源。这使得使用基于本体的方法来分析蛋白质及其功能成为可能。一种方法是基于基于语义的相似度度量。最近,人们对使用基于语义的方法来分析蛋白质相互作用数据越来越感兴趣,例如基于语义相似度量的蛋白质复合物的预测。尽管有这种兴趣,仍然需要对语义度量进行评估,以及对所选度量在获得结果中的影响进行深入研究。本文研究了利用语义相似度来分析蛋白质复合体的问题,并改进了蛋白质复合体的预测框架。已经在酵母蛋白复合物中进行了试验。结果表明,测量之间存在偏差,并且参与同一复合体的蛋白质之间的语义相似值较高,这证明了语义相似蛋白复合体预测的可能用途和测量中的建议。
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