Predicting Gene-Drug-Disease Interactions by integrating Heterogeneous Biological Data Through a Network Model

H. Hanaf, B. Hassani, M. Kbir
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引用次数: 2

Abstract

Abstract Prediction of gene-drug-disease interactions have talented new insights in biology. Discovering unknown interactions will provide new therapeutic approaches to explore gene expressions. Recent improvements in machine learning techniques have gotten considerable interest due to higher efficiency, accurate results, and their lower cost. However, most of the studies were ignoring relevant associations, by representing only drug-disease interactions on a network while public available data offers a large variety of interactions. Additionally, some computational techniques used in this domain are faced with new challenges, related to the organization of heterogeneous data which suffer from a high imbalance rate since there are extensively more non-interacting gene-drug-disease triplets than interacting ones. In this paper we present integration of heterogeneous biological data about genes, drugs, and diseases to build a model, and building a new graph representation relating genedrug-disease interactions. Using extreme gradient boosting (XGBoost) algorithm, we have been able to extract a list of valid interactions about gene-drug-disease triplets, and a list of gene-drug pairs related to lung cancer. Keywords: Biological heterogeneous data, Data integration, Gene-DrugDisease interactions, Machine learning.
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通过网络模型整合异质生物学数据预测基因-药物-疾病相互作用
摘要基因-药物-疾病相互作用的预测在生物学中有着新的见解。发现未知的相互作用将为探索基因表达提供新的治疗方法。最近机器学习技术的改进由于其更高的效率、准确的结果和更低的成本而引起了人们的极大兴趣。然而,大多数研究都忽略了相关关联,只在网络上表示药物与疾病的相互作用,而公共可用数据提供了各种各样的相互作用。此外,该领域中使用的一些计算技术面临着新的挑战,涉及异构数据的组织,这些数据具有高不平衡率,因为非相互作用的基因-药物-疾病三联体比相互作用的三联体多得多。在本文中,我们提出了关于基因、药物和疾病的异质生物学数据的集成,以建立一个模型,并建立一个新的与基因-药物-疾病相互作用相关的图表示。使用极限梯度增强(XGBoost)算法,我们已经能够提取关于基因-细菌-三重态的有效相互作用列表,以及与癌症相关的基因-细菌对列表。关键词:生物异构数据,数据集成,基因-药物-疾病相互作用,机器学习。
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来源期刊
International Journal of Advances in Soft Computing and its Applications
International Journal of Advances in Soft Computing and its Applications Computer Science-Computer Science Applications
CiteScore
3.30
自引率
0.00%
发文量
31
期刊介绍: The aim of this journal is to provide a lively forum for the communication of original research papers and timely review articles on Advances in Soft Computing and Its Applications. IJASCA will publish only articles of the highest quality. Submissions will be evaluated on their originality and significance. IJASCA invites submissions in all areas of Soft Computing and Its Applications. The scope of the journal includes, but is not limited to: √ Soft Computing Fundamental and Optimization √ Soft Computing for Big Data Era √ GPU Computing for Machine Learning √ Soft Computing Modeling for Perception and Spiritual Intelligence √ Soft Computing and Agents Technology √ Soft Computing in Computer Graphics √ Soft Computing and Pattern Recognition √ Soft Computing in Biomimetic Pattern Recognition √ Data mining for Social Network Data √ Spatial Data Mining & Information Retrieval √ Intelligent Software Agent Systems and Architectures √ Advanced Soft Computing and Multi-Objective Evolutionary Computation √ Perception-Based Intelligent Decision Systems √ Spiritual-Based Intelligent Systems √ Soft Computing in Industry ApplicationsOther issues related to the Advances of Soft Computing in various applications.
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