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Probing lncRNA–Protein Interactions: Data Repositories, Models, and Algorithms

Lihong Peng, Fuxing Liu, Jialiang Yang, Xiaojun Liu, Yajie Meng, Xiaojun Deng, Cheng Peng, Geng Tian, Liqian Zhou

2020Frontiers in Genetics41 citationsDOIOpen Access PDF

Abstract

Identifying lncRNA-protein interactions (LPIs) is vital to understanding various key biological processes. Wet experiments found a few LPIs, but experimental methods are costly and time-consuming. Therefore, computational methods are increasingly exploited to capture LPI candidates. We introduced relevant data repositories, focused on two types of LPI prediction models: network-based methods and machine learning-based methods. Machine learning-based methods contain matrix factorization-based techniques and ensemble learning-based techniques. To detect the performance of computational methods, we compared parts of LPI prediction models on Leave-One-Out cross-validation (LOOCV) and fivefold cross-validation. The results show that SFPEL-LPI obtained the best performance of AUC. Although computational models have efficiently unraveled some LPI candidates, there are many limitations involved. We discussed future directions to further boost LPI predictive performance.

Topics & Concepts

Computer scienceMachine learningArtificial intelligenceKey (lock)Cross-validationEnsemble learningData miningComputer securityCancer-related molecular mechanisms researchRNA and protein synthesis mechanismsRNA modifications and cancer
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