about
A primer to frequent itemset mining for bioinformaticsGetting your peaks in line: a review of alignment methods for NMR spectral data.Beta-Poisson model for single-cell RNA-seq data analyses.An integrated workflow for robust alignment and simplified quantitative analysis of NMR spectrometry data.The radiosensitising effect of gemcitabine and its main metabolite dFdU under low oxygen conditions is in vitro not dependent on functional HIF-1 protein.Unravelling associations between unassigned mass spectrometry peaks with frequent itemset mining techniques.Comprehensive landscape of subtype-specific coding and non-coding RNA transcripts in breast cancer.The role of monocytes in the development of Tuberculosis-associated Immune Reconstitution Inflammatory Syndrome.Efficient reduction of candidate matches in peptide spectrum library searching using the top k most intense peaks.(1)H NMR based metabolomics of CSF and blood serum: a metabolic profile for a transgenic rat model of Huntington disease.InSourcerer: a high-throughput method to search for unknown metabolite modifications by mass spectrometry.Isoform-level gene expression patterns in single-cell RNA-sequencing data.speaq 2.0: A complete workflow for high-throughput 1D NMR spectra processing and quantification.1H-NMR study of the metabolome of an exceptionally anoxia tolerant vertebrate, the crucian carp (Carassius carassius)A fast detection of fusion genes from paired-end RNA-seq dataReproducibility of Methods to Detect Differentially Expressed Genes from Single-Cell RNA SequencingAccumulation of potential driver genes with genomic alterations predicts survival of high-risk neuroblastoma patientsCell-level somatic mutation detection from single-cell RNA sequencingAlternating EM algorithm for a bilinear model in isoform quantification from RNA-seq data
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description
onderzoeker
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researcher
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հետազոտող
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name
Trung N. Vu
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Trung N. Vu
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Trung N. Vu
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Trung N. Vu
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Trung N. Vu
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Trung N. Vu
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Trung N. Vu
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Trung N. Vu
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Trung N. Vu
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P1053
N-6546-2016
P106
P1153
49965109400
P2456
P31
P3829
P496
0000-0001-7945-5750