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One or more keywords matched the following items that are connected to Ruan, Jianhua
Item TypeName
Academic Article An ensemble learning approach to reverse-engineering transcriptional regulatory networks from time-series gene expression data.
Academic Article A general co-expression network-based approach to gene expression analysis: comparison and applications.
Academic Article A top-performing algorithm for the DREAM3 gene expression prediction challenge.
Academic Article A particle swarm optimization-based algorithm for finding gapped motifs.
Academic Article A novel swarm intelligence algorithm for finding DNA motifs.
Academic Article Systematic identification of functional modules and cis-regulatory elements in Arabidopsis thaliana.
Academic Article A Steiner tree-based method for biomarker discovery and classification in breast cancer metastasis.
Academic Article A novel link prediction algorithm for reconstructing protein-protein interaction networks by topological similarity.
Academic Article A personalized committee classification approach to improving prediction of breast cancer metastasis.
Academic Article A novel algorithm for network-based prediction of cancer recurrence.
Concept Algorithms
Academic Article An iterated loop matching approach to the prediction of RNA secondary structures with pseudoknots.
Academic Article ILM: a web server for predicting RNA secondary structures with pseudoknots.
Academic Article A bi-dimensional regression tree approach to the modeling of gene expression regulation.
Academic Article CAGER: classification analysis of gene expression regulation using multiple information sources.
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  • Algorithms
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