N,O-Bis-acetyl-L-tyrosine
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N,O-Bis-acetyl-L-tyrosine

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Category
L-Amino Acids
Catalog number
BAT-004059
CAS number
17355-23-6
Molecular Formula
C13H15NO5
Molecular Weight
265.27
N,O-Bis-acetyl-L-tyrosine
IUPAC Name
(2S)-2-acetamido-3-(4-acetyloxyphenyl)propanoic acid
Synonyms
Ac-L-Tyr(Ac)-OH; N-acetyl-L-tyrosyl acetate; N,O-BIS ACETYL-L-TYROSINE; N,O-DIACETYL-L-TYROSINE; N-acetyl-O-acetyl-L-tyrosine; N-Acetyl-L-tyrosine acetate
Appearance
White crystalline powder
Purity
≥ 98% (HPLC)
Density
1.261 g/cm3
Melting Point
162-168 °C
Boiling Point
516.5 °C at 760 mmHg
Storage
Store at 2-8 °C
InChI
InChI=1S/C13H15NO5/c1-8(15)14-12(13(17)18)7-10-3-5-11(6-4-10)19-9(2)16/h3-6,12H,7H2,1-2H3,(H,14,15)(H,17,18)/t12-/m0/s1
InChI Key
ZUAVWNTVXZCOEL-LBPRGKRZSA-N
Canonical SMILES
CC(=O)NC(CC1=CC=C(C=C1)OC(=O)C)C(=O)O
1. Advancing Pan-cancer Gene Expression Survial Analysis by Inclusion of Non-coding RNA
Bo Ye, et al. RNA Biol. 2020 Nov;17(11):1666-1673. doi: 10.1080/15476286.2019.1679585. Epub 2019 Oct 18.
Non-coding RNAs occupy a significant fraction of the human genome. Their biological significance is backed up by a plethora of emerging evidence. One of the most robust approaches to demonstrate non-coding RNA's biological relevance is through their prognostic value. Using the rich gene expression data from The Cancer Genome Altas (TCGA), we designed Advanced Expression Survival Analysis (AESA), a web tool which provides several novel survival analysis approaches not offered by previous tools. In addition to the common single-gene approach, AESA computes the gene expression composite score of a set of genes for survival analysis and utilizes permutation test or cross-validation to assess the significance of log-rank statistic and the degree of over-fitting. AESA offers survival feature selection with post-selection inference and utilizes expanded TCGA clinical data including overall, disease-specific, disease-free, and progression-free survival information. Users can analyse either protein-coding or non-coding regions of the transcriptome. We demonstrated the effectiveness of AESA using several empirical examples. Our analyses showed that non-coding RNAs perform as well as messenger RNAs in predicting survival of cancer patients. These results reinforce the potential prognostic value of non-coding RNAs. AESA is developed as a module in the freely accessible analysis suite MutEx.
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