» Articles » PMID: 34736437

Learning from Low-rank Multimodal Representations for Predicting Disease-drug Associations

Overview
Publisher Biomed Central
Date 2021 Nov 5
PMID 34736437
Citations 3
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Disease-drug associations provide essential information for drug discovery and disease treatment. Many disease-drug associations remain unobserved or unknown, and trials to confirm these associations are time-consuming and expensive. To better understand and explore these valuable associations, it would be useful to develop computational methods for predicting unobserved disease-drug associations. With the advent of various datasets describing diseases and drugs, it has become more feasible to build a model describing the potential correlation between disease and drugs.

Results: In this work, we propose a new prediction method, called LMFDA, which works in several stages. First, it studies the drug chemical structure, disease MeSH descriptors, disease-related phenotypic terms, and drug-drug interactions. On this basis, similarity networks of different sources are constructed to enrich the representation of drugs and diseases. Based on the fused disease similarity network and drug similarity network, LMFDA calculated the association score of each pair of diseases and drugs in the database. This method achieves good performance on Fdataset and Cdataset, AUROCs were 91.6% and 92.1% respectively, higher than many of the existing computational models.

Conclusions: The novelty of LMFDA lies in the introduction of multimodal fusion using low-rank tensors to fuse multiple similar networks and combine matrix complement technology to predict potential association. We have demonstrated that LMFDA can display excellent network integration ability for accurate disease-drug association inferring and achieve substantial improvement over the advanced approach. Overall, experimental results on two real-world networks dataset demonstrate that LMFDA able to delivers an excellent detecting performance. Results also suggest that perfecting similar networks with as much domain knowledge as possible is a promising direction for drug repositioning.

Citing Articles

A drug repurposing method based on inhibition effect on gene regulatory network.

Li X, Liao M, Wang B, Zan X, Huo Y, Liu Y Comput Struct Biotechnol J. 2023; 21:4446-4455.

PMID: 37731599 PMC: 10507583. DOI: 10.1016/j.csbj.2023.09.007.


Multiple instance neural networks based on sparse attention for cancer detection using T-cell receptor sequences.

Kim Y, Wang T, Xiong D, Wang X, Park S BMC Bioinformatics. 2022; 23(1):469.

PMID: 36348271 PMC: 9644450. DOI: 10.1186/s12859-022-05012-2.


Drug repositioning in drug discovery of T2DM and repositioning potential of antidiabetic agents.

Zhu S, Bai Q, Li L, Xu T Comput Struct Biotechnol J. 2022; 20:2839-2847.

PMID: 35765655 PMC: 9189996. DOI: 10.1016/j.csbj.2022.05.057.

References
1.
Deng S, Huang D . SFAPS: an R package for structure/function analysis of protein sequences based on informational spectrum method. Methods. 2014; 69(3):207-12. DOI: 10.1016/j.ymeth.2014.08.004. View

2.
Zhu L, Guo W, Deng S, Huang D . ChIP-PIT: Enhancing the Analysis of ChIP-Seq Data Using Convex-Relaxed Pair-Wise Interaction Tensor Decomposition. IEEE/ACM Trans Comput Biol Bioinform. 2016; 13(1):55-63. DOI: 10.1109/TCBB.2015.2465893. View

3.
Jiang H, Huang Y, You Z . Predicting Drug-Disease Associations via Using Gaussian Interaction Profile and Kernel-Based Autoencoder. Biomed Res Int. 2019; 2019:2426958. PMC: 6732622. DOI: 10.1155/2019/2426958. View

4.
Bao W, Jiang Z, Huang D . Novel human microbe-disease association prediction using network consistency projection. BMC Bioinformatics. 2018; 18(Suppl 16):543. PMC: 5751545. DOI: 10.1186/s12859-017-1968-2. View

5.
Wang L, You Z, Huang Y, Huang D, Chan K . An efficient approach based on multi-sources information to predict circRNA-disease associations using deep convolutional neural network. Bioinformatics. 2019; 36(13):4038-4046. DOI: 10.1093/bioinformatics/btz825. View