Litcius/Paper detail

Learning Representations to Predict Intermolecular Interactions on Large-Scale Heterogeneous Molecular Association Network

Hai-Cheng Yi, Zhu‐Hong You, De-Shuang Huang, Zhen-Hao Guo, Keith C. C. Chan, Yangming Li

2020iScience30 citationsDOIOpen Access PDF

Abstract

Molecular components that are functionally interdependent in human cells constitute molecular association networks. Disease can be caused by disturbance of multiple molecular interactions. New biomolecular regulatory mechanisms can be revealed by discovering new biomolecular interactions. To this end, a heterogeneous molecular association network is formed by systematically integrating comprehensive associations between miRNAs, lncRNAs, circRNAs, mRNAs, proteins, drugs, microbes, and complex diseases. We propose a machine learning method for predicting intermolecular interactions, named MMI-Pred. More specifically, a network embedding model is developed to fully exploit the network behavior of biomolecules, and attribute features are also calculated. Then, these discriminative features are combined to train a random forest classifier to predict intermolecular interactions. MMI-Pred achieves an outstanding performance of 93.50% accuracy in hybrid associations prediction under 5-fold cross-validation. This work provides systematic landscape and machine learning method to model and infer complex associations between various biological components.

Topics & Concepts

Computer scienceRandom forestDiscriminative modelArtificial intelligenceIntermolecular forceComputational biologyMachine learningAssociation (psychology)Biological systemBiologyChemistryMoleculeEpistemologyPhilosophyOrganic chemistryCancer-related molecular mechanisms researchRNA modifications and cancerMicroRNA in disease regulation
Learning Representations to Predict Intermolecular Interactions on Large-Scale Heterogeneous Molecular Association Network | Litcius