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首页> 外文期刊>BMC Bioinformatics >Factor graph-aggregated heterogeneous network embedding for disease-gene association prediction
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Factor graph-aggregated heterogeneous network embedding for disease-gene association prediction

机译:因子图形聚集的异质网络嵌入疾病 - 基因关联预测

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Exploring the relationship between disease and gene is of great significance for understanding the pathogenesis of disease and developing corresponding therapeutic measures. The prediction of disease-gene association by computational methods accelerates the process. Many existing methods cannot fully utilize the multi-dimensional biological entity relationship to predict disease-gene association due to multi-source heterogeneous data. This paper proposes FactorHNE, a factor graph-aggregated heterogeneous network embedding method for disease-gene association prediction, which captures a variety of semantic relationships between the heterogeneous nodes by factorization. It produces different semantic factor graphs and effectively aggregates a variety of semantic relationships, by using end-to-end multi-perspectives loss function to optimize model. Then it produces good nodes embedding to prediction disease-gene association. Experimental verification and analysis show FactorHNE has better performance and scalability than the existing models. It also has good interpretability and?can be extended to large-scale biomedical network data analysis.
机译:探索疾病和基因之间的关系对于了解疾病发病机制和发展相应的治疗措施具有重要意义。通过计算方法预测疾病 - 基因关联的预测加速了该过程。由于多源异构数据,许多现有方法不能充分利用多维生物实体关系以预测疾病 - 基因关联。本文提出了一种因子,一种因子图簇的异质网络嵌入方法,用于疾病 - 基因关联预测,其通过分解捕获异构节点之间的各种语义关系。它通过使用端到端多视角损失函数来优化模型,产生不同的语义因子图并有效地聚合了各种语义关系。然后它产生嵌入预测疾病基因协会的良好节点。实验验证和分析显示FONFICHNE具有比现有模型更好的性能和可伸缩性。它还具有良好的解释性,并且可以扩展到大规模生物医学网络数据分析。

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