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首页> 外文期刊>NanoBioscience, IEEE Transactions on >NDRC: A Disease-Causing Genes Prioritized Method Based on Network Diffusion and Rank Concordance
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NDRC: A Disease-Causing Genes Prioritized Method Based on Network Diffusion and Rank Concordance

机译:国家发改委:一种基于网络扩散和等级一致性的致病基因优先方法

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Disease-causing genes prioritization is very important to understand disease mechanisms and biomedical applications, such as design of drugs. Previous studies have shown that promising candidate genes are mostly ranked according to their relatedness to known disease genes or closely related disease genes. Therefore, a dangling gene (isolated gene) with no edges in the network can not be effectively prioritized. These approaches tend to prioritize those genes that are highly connected in the PPI network while perform poorly when they are applied to loosely connected disease genes. To address these problems, we propose a new disease-causing genes prioritization method that based on network diffusion and rank concordance (NDRC). The method is evaluated by leave-one-out cross validation on 1931 diseases in which at least one gene is known to be involved, and it is able to rank the true causal gene first in 849 of all 2542 cases. The experimental results suggest that NDRC significantly outperforms other existing methods such as RWR, VAVIEN, DADA and PRINCE on identifying loosely connected disease genes and successfully put dangling genes as potential candidate disease genes. Furthermore, we apply NDRC method to study three representative diseases, Meckel syndrome 1, Protein C deficiency and Peroxisome biogenesis disorder 1A (Zellweger). Our study has also found that certain complex disease-causing genes can be divided into several modules that are closely associated with different disease phenotype.
机译:引起疾病的基因优先排序对于了解疾病机理和生物医学应用(例如药物设计)非常重要。先前的研究表明,有前途的候选基因大多根据其与已知疾病基因或密切相关疾病基因的相关性进行排名。因此,不能有效地确定网络中没有边缘的悬空基因(分离基因)的优先级。这些方法倾向于优先考虑那些在PPI网络中高度连接的基因,而当将它们应用于松散连接的疾病基因时,其性能却很差。为了解决这些问题,我们提出了一种新的基于网络扩散和等级一致性(NDRC)的致病基因优先排序方法。通过对1931种疾病的留一法交叉验证进行评估,该疾病中至少涉及一个基因,并且能够在所有2542例病例中将真正的因果基因排名第一。实验结果表明,NDRC在识别松散连接的疾病基因并成功地将悬空基因用作潜在的候选疾病基因方面,明显优于其他现有方法,例如RWR,VAVIEN,DADA和PRINCE。此外,我们采用NDRC方法研究了三种代表性疾病,即Meckel综合征1,蛋白C缺乏症和过氧化物酶体生物发生障碍1A(Zellweger)。我们的研究还发现,某些复杂的致病基因可以分为与不同疾病表型密切相关的几个模块。

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