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Identification of novel thyroid cancer-related genes and chemicals using shortest path algorithmA genome-wide systematic analysis reveals different and predictive proliferation expression signatures of cancerous vs. non-cancerous cellsA Gene Gravity Model for the Evolution of Cancer Genomes: A Study of 3,000 Cancer Genomes across 9 Cancer TypesIdentification of New Candidate Genes and Chemicals Related to Esophageal Cancer Using a Hybrid Interaction Network of Chemicals and ProteinsGene Network Rewiring to Study Melanoma Stage Progression and Elements Essential for Driving MelanomaCharacterization and Comparative Expression Profiling of Browning Response in Medinilla formosana after CuttingA multiscale statistical mechanical framework integrates biophysical and genomic data to assemble cancer networksStatistically identifying tumor suppressors and oncogenes from pan-cancer genome-sequencing dataIdentification of colorectal cancer-restricted microRNAs and their target genes based on high-throughput sequencing dataIdentification of candidate genes for myeloma-induced osteocyte death based on microarray dataMicroarray data analysis to identify crucial genes regulated by CEBPB in human SNB19 glioma cellsScreening of Tumor Suppressor Genes in Metastatic Colorectal CancerIdentification of molecular characteristics induced by radiotherapy in rectal cancer based on microarray data.Macrophage infiltration and genetic landscape of undifferentiated uterine sarcomas.Integration of DNA methylation and gene transcription across nineteen cell types reveals cell type-specific and genomic region-dependent regulatory patterns.OncoSearch: cancer gene search engine with literature evidence.miRNome landscape analysis reveals a 30 miRNA core in retinoblastoma.Copy number alteration of neuropeptides and receptors in multiple cancers.Studying tumorigenesis through network evolution and somatic mutational perturbations in the cancer interactomeOncodriveROLE classifies cancer driver genes in loss of function and activating mode of actionAnalysis of tumor suppressor genes based on gene ontology and the KEGG pathway.High-frequency aberrantly methylated targets in pancreatic adenocarcinoma identified via global DNA methylation analysis using methylCap-seq.Long non-coding RNAs differentially expressed between normal versus primary breast tumor tissues disclose converse changes to breast cancer-related protein-coding genes.Comparative DNA methylome analysis of endometrial carcinoma reveals complex and distinct deregulation of cancer promoters and enhancers.Global loss of DNA methylation uncovers intronic enhancers in genes showing expression changes.Genome-Scale CRISPR-Mediated Control of Gene Repression and ActivationPatient-derived models of acquired resistance can identify effective drug combinations for cancer.HIV latency. Proliferation of cells with HIV integrated into cancer genes contributes to persistent infection.CoMAGC: a corpus with multi-faceted annotations of gene-cancer relations.Analysis of schizophrenia and hepatocellular carcinoma genetic network with corresponding modularity and pathways: novel insights to the immune systemHIV-1 integration landscape during latent and active infectionMeT-DB: a database of transcriptome methylation in mammalian cells.Molecular mechanisms for alcoholic hepatitis based on analysis of gene expression profileIntegrated network analysis and logistic regression modeling identify stage-specific genes in Oral Squamous Cell CarcinomaThe landscape and therapeutic relevance of cancer-associated transcript fusions.Recurrent somatic mutations in regulatory regions of human cancer genomesCGMD: An integrated database of cancer genes and markers.Screening of potential diagnostic markers and therapeutic targets against colorectal cancer.Multi-omic measurement of mutually exclusive loss-of-function enriches for candidate synthetic lethal gene pairs.LowMACA: exploiting protein family analysis for the identification of rare driver mutations in cancer
P2860
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P2860
description
2012 nî lūn-bûn
@nan
2012年の論文
@ja
2012年学术文章
@wuu
2012年学术文章
@zh-cn
2012年学术文章
@zh-hans
2012年学术文章
@zh-my
2012年学术文章
@zh-sg
2012年學術文章
@yue
2012年學術文章
@zh
2012年學術文章
@zh-hant
name
TSGene: a web resource for tumor suppressor genes.
@ast
TSGene: a web resource for tumor suppressor genes.
@en
type
label
TSGene: a web resource for tumor suppressor genes.
@ast
TSGene: a web resource for tumor suppressor genes.
@en
prefLabel
TSGene: a web resource for tumor suppressor genes.
@ast
TSGene: a web resource for tumor suppressor genes.
@en
P2860
P356
P1476
TSGene: a web resource for tumor suppressor genes.
@en
P2093
Jingchun Sun
Zhongming Zhao
P2860
P304
P356
10.1093/NAR/GKS937
P407
P433
Database issue
P50
P577
2012-10-12T00:00:00Z