School of Information Science and Engineering, Central South University, Changsha, 410083, China.
Sci Rep. 2018 May 23;8(1):8034. doi: 10.1038/s41598-018-26448-8.
Increasing evidence shows that microbes are closely related to various human diseases. Obtaining a comprehensive and detailed understanding of the relationships between microbes and diseases would not only be beneficial to disease prevention, diagnosis and prognosis, but also would lead to the discovery of new drugs. However, because of a lack of data, little effort has been made to predict novel microbe-disease associations. To date, few methods have been proposed to solve the problem. In this study, we developed a new computational model based on network consistency projection to infer novel human microbe-disease associations (NCPHMDA) by integrating Gaussian interaction profile kernel similarity of microbes and diseases, and symptom-based disease similarity. NCPHMDA is a non-parametric and global network based model that combines microbe space projection and disease space projection to achieve the final prediction. Experimental results demonstrated that the integrated space projection of microbes and diseases, and symptom-based disease similarity played roles in the model performance. Cross validation frameworks and case studies further illustrated the superior predictive performance over other methods.
越来越多的证据表明,微生物与各种人类疾病密切相关。全面详细地了解微生物与疾病之间的关系不仅有利于疾病的预防、诊断和预后,而且还将导致新药物的发现。然而,由于数据的缺乏,很少有努力来预测新的微生物-疾病关联。迄今为止,很少有方法被提出来解决这个问题。在这项研究中,我们开发了一种新的基于网络一致性投影的计算模型,通过整合微生物和疾病的高斯互作用轮廓核相似性以及基于症状的疾病相似性,来推断新型人类微生物-疾病关联(NCPHMDA)。NCPHMDA 是一种非参数和基于全局网络的模型,它结合了微生物空间投影和疾病空间投影,以实现最终的预测。实验结果表明,微生物和疾病的综合空间投影以及基于症状的疾病相似性在模型性能中发挥了作用。交叉验证框架和案例研究进一步说明了该方法优于其他方法的预测性能。