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Fang Wang

Researcher at Nanjing Medical University

Publications -  207
Citations -  8213

Fang Wang is an academic researcher from Nanjing Medical University. The author has contributed to research in topics: DNA methylation & Cancer. The author has an hindex of 33, co-authored 202 publications receiving 5945 citations. Previous affiliations of Fang Wang include Sun Yat-sen University & University of Texas MD Anderson Cancer Center.

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Comprehensive Characterization of Cancer Driver Genes and Mutations.

TL;DR: This study reports a PanCancer and PanSoftware analysis spanning 9,423 tumor exomes (comprising all 33 of The Cancer Genome Atlas projects) and using 26 computational tools to catalog driver genes and mutations, identifying 299 driver genes with implications regarding their anatomical sites and cancer/cell types.
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Generation of Gene-Modified Cynomolgus Monkey via Cas9/RNA-Mediated Gene Targeting in One-Cell Embryos

TL;DR: By coinjection of Cas9 mRNA and sgRNAs into one-cell-stage embryos, this system successfully achieves precise gene targeting in cynomolgus monkeys and enables simultaneous disruption of two target genes in one step, and no off-target mutagenesis was detected by comprehensive analysis.
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Erratum: Comprehensive Characterization of Cancer Driver Genes and Mutations (ARTICLE (2018) 173(2) (371–385), (S009286741830237X), (10.1016/j.cell.2018.02.060))

Matthew A. Bailey, +761 more
- 09 Aug 2018 - 
TL;DR: In this article, the authors made two errors in preparation of this manuscript and corrected them in the revised Figure S7 by re-ordering the mutations by frequency for COAD and READ independently.
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Delineating copy number and clonal substructure in human tumors from single-cell transcriptomes.

TL;DR: CopyKAT as discussed by the authors uses an integrative Bayesian segmentation approach called copy number karyotyping of aneuploid tumors to estimate genomic copy number profiles at an average genomic resolution of 5'mb from read depth in high-throughput single-cell RNA sequencing (scRNA-seq) data.