Combining machine learning and homology-based approaches to accurately predict subcellular localization in Arabidopsis.
about
Evolution and applications of plant pathway resources and databasesMotif analysis unveils the possible co-regulation of chloroplast genes and nuclear genes encoding chloroplast proteinsUncovering the protein lysine and arginine methylation network in Arabidopsis chloroplastsMining Functional Elements in Messenger RNAs: Overview, Challenges, and PerspectivesJPPRED: Prediction of Types of J-Proteins from Imbalanced Data Using an Ensemble Learning Method.A Novel Feature Extraction Method with Feature Selection to Identify Golgi-Resident Protein Types from Imbalanced DataTESTLoc: protein subcellular localization prediction from EST data.An integrative approach to the identification of Arabidopsis and rice genes involved in xylan and secondary wall development.Proteomic analysis of the Cyanophora paradoxa muroplast provides clues on early events in plastid endosymbiosis.Systematic study of subcellular localization of Arabidopsis PPR proteins confirms a massive targeting to organelles.SLocX: Predicting Subcellular Localization of Arabidopsis Proteins Leveraging Gene Expression Data.A Bayesian method for comparing and combining binary classifiers in the absence of a gold standard.Genome-wide classification and expression analysis of MYB transcription factor families in rice and ArabidopsisPredicting genome-scale Arabidopsis-Pseudomonas syringae interactome using domain and interolog-based approachesLacSubPred: predicting subtypes of Laccases, an important lignin metabolism-related enzyme class, using in silico approaches.The broccoli (Brassica oleracea) phloem tissue proteome.Identification and characterization of plastid-type proteins from sequence-attributed features using machine learning.PHDcleav: a SVM based method for predicting human Dicer cleavage sites using sequence and secondary structure of miRNA precursors.RabGAP22 is required for defense to the vascular pathogen Verticillium longisporum and contributes to stomata immunityPlant genome and transcriptome annotations: from misconceptions to simple solutions.The plant energy sensor: evolutionary conservation and divergence of SnRK1 structure, regulation, and function.Inter-kingdom prediction certainty evaluation of protein subcellular localization tools: microbial pathogenesis approach for deciphering host microbe interaction.Dual Targeting of the Protein Methyltransferase PrmA Contributes to Both Chloroplastic and Mitochondrial Ribosomal Protein L11 Methylation in Arabidopsis.Proteome and metabolome profiling of cytokinin action in Arabidopsis identifying both distinct and similar responses to cytokinin down- and up-regulation.Novel glyoxalases from Arabidopsis thaliana.Green targeting predictor and ambiguous targeting predictor 2: the pitfalls of plant protein targeting prediction and of transient protein expression in heterologous systems.Agrobacterium may delay plant nonhomologous end-joining DNA repair via XRCC4 to favor T-DNA integration.PredAlgo: a new subcellular localization prediction tool dedicated to green algae.
P2860
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P2860
Combining machine learning and homology-based approaches to accurately predict subcellular localization in Arabidopsis.
description
2010 nî lūn-bûn
@nan
2010年の論文
@ja
2010年論文
@yue
2010年論文
@zh-hant
2010年論文
@zh-hk
2010年論文
@zh-mo
2010年論文
@zh-tw
2010年论文
@wuu
2010年论文
@zh
2010年论文
@zh-cn
name
Combining machine learning and ...... r localization in Arabidopsis.
@en
Combining machine learning and ...... r localization in Arabidopsis.
@nl
type
label
Combining machine learning and ...... r localization in Arabidopsis.
@en
Combining machine learning and ...... r localization in Arabidopsis.
@nl
prefLabel
Combining machine learning and ...... r localization in Arabidopsis.
@en
Combining machine learning and ...... r localization in Arabidopsis.
@nl
P2093
P2860
P356
P1433
P1476
Combining machine learning and ...... r localization in Arabidopsis.
@en
P2093
Patrick X Zhao
Rakesh Kaundal
Reena Saini
P2860
P356
10.1104/PP.110.156851
P407
P577
2010-07-20T00:00:00Z