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Fan-Rong Meng

Researcher at China University of Mining and Technology

Publications -  4
Citations -  131

Fan-Rong Meng is an academic researcher from China University of Mining and Technology. The author has contributed to research in topics: Relevance vector machine & Support vector machine. The author has an hindex of 4, co-authored 4 publications receiving 104 citations.

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Prediction of Drug–Target Interaction Networks from the Integration of Protein Sequences and Drug Chemical Structures

TL;DR: A novel computational approach based on protein sequence, namely PDTPS (Predicting Drug Targets with Protein Sequence) to predict DTI is proposed, which has good prediction performance and is a useful tool and suitable for predicting DTI, as well as other bioinformatics tasks.
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Improving protein–protein interactions prediction accuracy using protein evolutionary information and relevance vector machine model

TL;DR: A novel computational method called RVM‐BiGP that combines the relevance vector machine (RVM) model and Bi‐gram Probabilities (BiGP) for PPIs detection from protein sequences is proposed, which can be an automatic decision support tool for future proteomics research.
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Using the Relevance Vector Machine Model Combined with Local Phase Quantization to Predict Protein-Protein Interactions from Protein Sequences.

TL;DR: The main improvements are the results of representing protein sequences using the LPQ feature representation on a Position Specific Scoring Matrix, reducing the influence of noise using a Principal Component Analysis (PCA), and using a Relevance Vector Machine (RVM) based classifier.
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RVMAB: Using the Relevance Vector Machine Model Combined with Average Blocks to Predict the Interactions of Proteins from Protein Sequences

TL;DR: A novel computational method known as RVM-AB that combines the Relevance Vector Machine (RVM) model and Average Blocks (AB) to predict PPIs from protein sequences is proposed, which can be an automatic decision support tool.