posted on 2019-05-28, 00:00authored byJun Yin, Xing Chen, Chun-Chun Wang, Yan Zhao, Ya-Zhou Sun
As
microRNAs (miRNAs) have been reported to be a type of novel
high-value small molecule (SM) drug targets for disease treatments,
many researchers are engaged in the field of exploring new SM–miRNA
associations. Nevertheless, because of the high cost, adopting traditional
biological experiments constrains the efficiency of discovering new
associations between SMs and miRNAs. Therefore, as an important auxiliary
tool, reliable computational models will be of great help to reveal
SM–miRNA associations. In this article, we developed a computational
model of sparse learning and heterogeneous graph inference for small
molecule–miRNA association prediction (SLHGISMMA). Initially,
the sparse learning method (SLM) was implemented to decompose the
SM–miRNA adjacency matrix. Then, we integrated the reacquired
association information together with the similarity information of
SMs and miRNAs into a heterogeneous graph to infer potential SM–miRNA
associations. Here, the main innovation of SLHGISMMA lies in the introduction
of SLM to eliminate noises of the original adjacency matrix to some
extent, which plays an important role in performance improvement.
In addition, to assess SLHGISMMA’ performance, four different
kinds of cross-validations were performed based on two datasets. As
a result, based on dataset 1 (dataset 2), SLHGISMMA achieved area
under the curves of 0.9273 (0.7774), 0.9365 (0.7973), 0.7703 (0.6556),
and 0.9241 ± 0.0052 (0.7724 ± 0.0032) in global leave-one-out
cross-validation (LOOCV), miRNA-fixed local LOOCV, SM-fixed local
LOOCV, and 5-fold cross-validation, respectively. Moreover, in the
case study on three important SMs via removing their known associations,
the results showed that most of the top 50 predicted miRNAs were confirmed
by the database SM2miR v1.0 or the experimental literature.