TIWMFLP: Two-Tier
Interactive Weighted Matrix Factorization
and Label Propagation Based on Similarity Matrix Fusion for Drug-Disease
Association Prediction
Accurately identifying new therapeutic
uses for drugs
is crucial
for advancing pharmaceutical research and development. Matrix factorization
is often used in association prediction due to its simplicity and
high interpretability. However, existing matrix factorization models
do not enable real-time interaction between molecular feature matrices
and similarity matrices, nor do they consider the geometric structure
of the matrices. Additionally, efficiently integrating multisource
data remains a significant challenge. To address these issues, we
propose a two-tier interactive weighted matrix factorization and label
propagation model based on similarity matrix fusion (TIWMFLP) to assist
in personalized treatment. First, we calculate the Gaussian and Laplace
kernel similarities for drugs and diseases using known drug-disease
associations. We then introduce a new multisource similarity fusion
method, called similarity matrix fusion (SMF), to integrate these
drug/disease similarities. SMF not only considers the different contributions
represented by each neighbor but also incorporates drug-disease association
information to enhance the contextual topological relationships and
potential features of each drug/disease node in the network. Second,
we innovatively developed a two-tier interactive weighted matrix factorization
(TIWMF) method to process three biological networks. This method realizes
for the first time the real-time interaction between the drug/disease
feature matrix and its similarity matrix, allowing for a better capture
of the complex relationships between drugs and diseases. Additionally,
the weighted matrix of the drug/disease similarity matrix is introduced
to preserve the underlying structure of the similarity matrix. Finally,
the label propagation algorithm makes predictions based on the three
updated biological networks. Experimental outcomes reveal that TIWMFLP
consistently surpasses state-of-the-art models on four drug-disease
data sets, two small molecule-miRNA data sets, and one miRNA-disease
data set.