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BRWMDA:Predicting Microbe-Disease Associations Based on Similarities and Bi-Random Walk on Disease and Microbe Networks

机译:BRWMDA:以异同和双随机行走在疾病和微生物网络上预测微生物疾病关联

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Many current studies have evidenced that microbes play important roles in human diseases. Therefore, discovering the associations between microbes and diseases is beneficial to systematically understanding the mechanisms of diseases, diagnosing, and treating complex diseases. It is well known that finding new potential microbe-disease associations via biological experiments is a time-consuming and expensive process. However, the computation methods can provide an opportunity to effectively predict microbe-disease associations. In recent years, efforts toward predicting microbe-disease associations are not in proportional to the importance of microbes to human diseases. In this study, we develop a method (called BRWMDA) to predict new microbe-disease associations based on similarity and improving bi-random walk on the disease and microbe networks. BRWMDA integrates microbe network, disease network, and known microbe-disease associations into a single network. After calculating the Gaussian Interaction Profile (GIP) kernel similarity of microbes based on known microbe-disease associations, the microbe network is obtained by adjusting the similarity with the logistics function. In addition, the disease network is computed by the similarity network fusion (SNF) method with the symptom-based similarity and the GIP kernel similarity based on known microbe-disease associations. Then, these two networks of microbe and disease are connected by known microbe-disease associations. Based on the assumption that similar microbes are normally associated with similar diseases and vice versa, BRWMDA is employed to predict new potential microbe-disease associations via random walk with different steps on microbe and disease networks, which reasonably uses the similarity of microbe network and disease network. The 5-fold cross validation and Leave One Out Cross Validation (LOOCV) are adopted to assess the prediction performance of our BRWMDA algorithm, as well as other competing methods for comparison. 5-fold cross validation experiments show that BRWMDA obtained the maximum AUC value of 0.9087, which is again superior to other methods of 0.9025(NGRHMDA), 0.8797 (LRLSHMDA), 0.8571 (KATZHMDA), 0.7782 (HGBI), and 0.5629 (NBI). In addition, BRWMDA also outperforms other methods in terms of LOOCV, whose AUC value is 0.9397, which is superior to other methods of 0.9111(NGRHMDA), 0.8909 (LRLSHMDA), 0.8644 (KATZHMDA), 0.7866 (HGBI), and 0.5553 (NBI). Case studies also illustrate that BRWMDA is an effective method to predict microbe-disease associations.
机译:许多目前的研究已经证明,微生物在人类疾病中起重要作用。因此,发现微生物和疾病之间的关联是有利于系统地理解疾病,诊断和治疗复杂疾病的机制。众所周知,通过生物实验发现新的潜在的微生物疾病关联是一种耗时和昂贵的过程。然而,计算方法可以提供有效预测微生物疾病关联的机会。近年来,预测微生物疾病关联的努力与微生物对人类疾病的重要性成比例。在这项研究中,我们开发一种方法(称为BRWMDA),以预测基于相似性和改善疾病和微生物网络的双随机行走的新微生物疾病关联。 BRWMDA将微生物网络,疾病网络和已知的微生物疾病关联集成到一个网络中。在计算基于已知的微生物疾病关联的微生物的高斯相互作用谱(GIP)核相似性之后,通过与物流功能调整相似度来获得微生物网络。此外,疾病网络通过相似性网络融合(SNF)方法计算,基于已知的微生物疾病关联的基于症状的相似性和GIP核相似性。然后,通过已知的微生物疾病关联连接这两个微生物和疾病网络。基于类似微生物通常与类似疾病相关的假设,反之亦然,BrWMDA通过随机行走,通过在微生物和疾病网络上的不同步骤中通过随机行走来预测新的潜在的微生物疾病关联,这合理地使用微生物网络和疾病的相似性网络。采用5倍交叉验证并留出一个外交叉验证(LOOCV)来评估我们BRWMDA算法的预测性能,以及其他竞争方法进行比较。 5倍交叉验证实验表明,BRWMDA获得了0.9087的最大AUC值,其再次优于0.9025(NGRHMDA),0.8797(LRLSHMDA),0.8571(Katzhmda),0.7782(HGBI)和0.5629(NBI)的其他方法。 。此外,BRWMDA还优于LoOCV的其他方法,其AUC值为0.9397,其优于0.9111(NGRHMDA),0.8909(LRLSHMDA),0.8644(Katzhmda),0.7866(HGBI)和0.5553(NBI)的其他方法)。案例研究还说明BRWMDA是预测微生物疾病关联的有效方法。

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