| Literature DB >> 31865912 |
Yingjun Ma1, Tingting He2,3, Leixin Ge4, Chenhao Zhang2, Xingpeng Jiang5,6.
Abstract
BACKGROUND: Studies have shown that miRNAs are functionally associated with the development of many human diseases, but the roles of miRNAs in diseases and their underlying molecular mechanisms have not been fully understood. The research on miRNA-disease interaction has received more and more attention. Compared with the complexity and high cost of biological experiments, computational methods can rapidly and efficiently predict the potential miRNA-disease interaction and can be used as a beneficial supplement to experimental methods.Entities:
Keywords: Bidirectional propagation; Diffusion component analysis; Heterogeneous omics data; Kernel neighborhood similarity; MicroRNA-disease interaction
Mesh:
Substances:
Year: 2019 PMID: 31865912 PMCID: PMC6927119 DOI: 10.1186/s12920-019-0622-4
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.063
Fig. 1The flow diagram of KNMBP model. In Step 1 and Step 2, the red box indicates disease, the grass green triangle indicates the gene, the circle indicates the miRNA, the pentagon indicates the biological process corresponding to the disease, SF and SS represent improved miRNA functional similarity and disease semantic similarity, respectively, WKNNP represents a weighted k-neighborhood profile algorithm used to preprocess the interaction matrix. In Step 3, SI and SI represent disease kernel neighborhood similarity and miRNA kernel neighborhood similarity, respectively. In Step 4, clusDCA represents the network fusion algorithm based on diffusion component analysis
Fig. 2Performance comparisons between KNMBP and other state-of-the-art methods (RWRMDA, RLSMDA, BNPMDA, KRLSM, IMCMDA) in terms of AUC based on 5-fold cross validation. a perform CVa on Dataset I; b perform CVa on Dataset II; c perform CVd on Dataset II; d perform CVm on Dataset II
Fig. 3The influence of neighbor proportion parameter PN and Laplace regularization parameter λ on the predictive performance of the model. a CVa on dataset1; b CVa on dataset2; c CVd on dataset2; d CVm on dataset2
Fig. 4For different thresholds, the proportion of candidate mirnas that have been confirmed to be associated with the disease
Fig. 5The percentage of confirmed candidate miRNAs in the Top group and Bottom group of the four diseases and the corresponding significance level of Fisher’s exact test