MuCoMiD: A Multitask Convolutional Learning Framework for miRNA-Disease Association Prediction

08/08/2021
by   Thi Ngan Dong, et al.
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Growing evidence from recent studies implies that microRNA or miRNA could serve as biomarkers in various complex human diseases. Since wet-lab experiments are expensive and time-consuming, computational techniques for miRNA-disease association prediction have attracted a lot of attention in recent years. Data scarcity is one of the major challenges in building reliable machine learning models. Data scarcity combined with the use of pre-calculated hand-crafted input features has led to problems of overfitting and data leakage. We overcome the limitations of existing works by proposing a novel multi-tasking convolution-based approach, which we refer to as MuCoMiD. MuCoMiD allows automatic feature extraction while incorporating knowledge from 4 heterogeneous biological information sources (interactions between miRNA/diseases and protein-coding genes (PCG), miRNA family information, and disease ontology) in a multi-task setting which is a novel perspective and has not been studied before. The use of multi-channel convolutions allows us to extract expressive representations while keeping the model linear and, therefore, simple. To effectively test the generalization capability of our model, we construct large-scale experiments on standard benchmark datasets as well as our proposed larger independent test sets and case studies. MuCoMiD shows an improvement of at least 5 HMDDv3.0 datasets and at least 49 miRNA and diseases over state-of-the-art approaches. We share our code for reproducibility and future research at https://git.l3s.uni-hannover.de/dong/cmtt.

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