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Molecular Therapy. Nucleic Acids
|
June 19, 2017
2L-piRNA: A Two-Layer Ensemble Classifier for Identifying Piwi-Interacting RNAs and Their Function
Bin Liu, Fan Yang, Kuo-Chen Chou
Genomics
|
September 5, 2018
pLoc_bal-mHum: Predict subcellular localization of human proteins by PseAAC and quasi-balancing training dataset
Kuo-Chen Chou, Xiang Cheng, Xuan Xiao
Plos One
|
August 23, 2011
NR-2L: a two-level predictor for identifying nuclear receptor subfamilies based on sequence-derived features
Pu Wang, Xuan Xiao, Kuo-Chen Chou
Journal of Theoretical Biology
|
September 12, 2018
pLoc_bal-mGneg: Predict subcellular localization of Gram-negative bacterial proteins by quasi-balancing training dataset and general PseAAC
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Current Protein & Peptide Science
|
October 27, 2005
HIV-1 gp120 V3 loop for structure-based drug design
Suzanne Sirois, Tobias Sing, Kuo-Chen Chou
Genomics
|
August 19, 2017
pLoc-mEuk: Predict subcellular localization of multi-label eukaryotic proteins by extracting the key GO information into general PseAAC
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Gene
|
October 23, 2017
Erratum to "pLoc-mVirus: Predict subcellular localization of multi-location virus proteins via incorporating the optimal GO information into general PseAAC" [Gene 628 (2017) 315-321]
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Gene
|
July 22, 2017
pLoc-mVirus: Predict subcellular localization of multi-location virus proteins via incorporating the optimal GO information into general PseAAC
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Medicinal Chemistry (Shariqah (United Arab Emirates))
|
December 21, 2018
pLoc_bal-mEuk: Predict Subcellular Localization of Eukaryotic Proteins by General PseAAC and Quasi-balancing Training Dataset
Kuo-Chen Chou, Xiang Cheng, Xuan Xiao
Journal of Computational Chemistry
|
November 28, 2008
GPCR-CA: A cellular automaton image approach for predicting G-protein-coupled receptor functional classes
Xuan Xiao, Pu Wang, Kuo-Chen Chou
Page
of 134
Search research articles
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Showing results (161-170 of 1,337) with videos related to
Sort By:
Page
of 134
Molecular Therapy. Nucleic Acids
|
June 19, 2017
2L-piRNA: A Two-Layer Ensemble Classifier for Identifying Piwi-Interacting RNAs and Their Function
Bin Liu, Fan Yang, Kuo-Chen Chou
Genomics
|
September 5, 2018
pLoc_bal-mHum: Predict subcellular localization of human proteins by PseAAC and quasi-balancing training dataset
Kuo-Chen Chou, Xiang Cheng, Xuan Xiao
Plos One
|
August 23, 2011
NR-2L: a two-level predictor for identifying nuclear receptor subfamilies based on sequence-derived features
Pu Wang, Xuan Xiao, Kuo-Chen Chou
Journal of Theoretical Biology
|
September 12, 2018
pLoc_bal-mGneg: Predict subcellular localization of Gram-negative bacterial proteins by quasi-balancing training dataset and general PseAAC
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Current Protein & Peptide Science
|
October 27, 2005
HIV-1 gp120 V3 loop for structure-based drug design
Suzanne Sirois, Tobias Sing, Kuo-Chen Chou
Genomics
|
August 19, 2017
pLoc-mEuk: Predict subcellular localization of multi-label eukaryotic proteins by extracting the key GO information into general PseAAC
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Gene
|
October 23, 2017
Erratum to "pLoc-mVirus: Predict subcellular localization of multi-location virus proteins via incorporating the optimal GO information into general PseAAC" [Gene 628 (2017) 315-321]
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Gene
|
July 22, 2017
pLoc-mVirus: Predict subcellular localization of multi-location virus proteins via incorporating the optimal GO information into general PseAAC
Xiang Cheng, Xuan Xiao, Kuo-Chen Chou
Medicinal Chemistry (Shariqah (United Arab Emirates))
|
December 21, 2018
pLoc_bal-mEuk: Predict Subcellular Localization of Eukaryotic Proteins by General PseAAC and Quasi-balancing Training Dataset
Kuo-Chen Chou, Xiang Cheng, Xuan Xiao
Journal of Computational Chemistry
|
November 28, 2008
GPCR-CA: A cellular automaton image approach for predicting G-protein-coupled receptor functional classes
Xuan Xiao, Pu Wang, Kuo-Chen Chou
Page
of 134