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Gene Function Similarity Method Based on Data Fusion

机译:基于数据融合的基因功能相似度方法

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摘要

At present, gene function similarity calculation is a hot field. The mainstream methods are based on gene ontology to calculate gene function similarity. But the purpose of gene ontology is not to congenital deficiency of gene expression function, but biological pathways have advantages in gene expression function. The single gene ontology information expression ability is weak, a gene function similarity algorithm based on data fusion is proposed, which uses gene ontology and biological pathway fusion. The disease gene identification experiment based on machine learning proves that the proposed algorithm is superior to the method of using gene ontology alone and the method of using biological pathways alone. The precision value P reaches 98.9%, and the minimum recall rate R reaches 97.7%. It shows that the fusion of gene ontology and biological pathway data can effectively improve the accuracy of gene function similarity.
机译:目前,基因功能相似性计算是一个热门领域。主流方法是基于基因本体来计算基因功能相似性。但是基因本体论的目的不是要先天性地缺乏基因表达功能,而是生物学途径在基因表达功能方面具有优势。单基因本体的信息表达能力较弱,提出了一种基于数据融合的基因功能相似性算法,该算法利用基因本体和生物途径融合。基于机器学习的疾病基因识别实验证明,该算法优于单独使用基因本体的方法和单独使用生物途径的方法。精度值P达到98.9%,最小召回率R达到97.7%。结果表明,将基因本体与生物学途径数据融合可以有效提高基因功能相似性的准确性。

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