Recombinant Human STEAP4 Protein Catalog Number: ATGP2593

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Recombinant Human STEAP4 Protein Catalog Number: ATGP2593 Recombinant human STEAP4 protein Catalog Number: ATGP2593 PRODUCT INPORMATION Expression system E.coli Domain 1-152aa UniProt No. Q687X5 NCBI Accession No. NP_078912 Alternative Names tumor necrosis factor alpha-induced protein 9, tumor necrosis factor, alpha-induced protein 9, DKFZp666D049, FLJ23153, STAMP2, TIARP, TNFAIP9 PRODUCT SPECIFICATION Molecular Weight 20.6 kDa (188aa) Concentration 1mg/ml (determined by Bradford assay) Formulation Liquid in. 20mM Tris-HCl buffer (pH 8.0) containing 0.4M uREA, 10% glycerol Purity > 90% by SDS-PAGE Tag His-Tag Application SDS-PAGE,Denatured Storage Condition Can be stored at +2C to +8C for 1 week. For long term storage, aliquot and store at -20C to -80C. Avoid repeated freezing and thawing cycles. BACKGROUND Description STEAP4 belongs to the STEAP (six transmembrane epithelial antigen of prostate) family, and resides in the golgi apparatus. It functions as a metalloreductase that has the ability to reduce both Fe (3+) to Fe (2+) and Cu (2+) to Cu (1+), using NAD (+) as acceptor. Studies in mice and human suggest that this gene maybe involved in adipocyte development and metabolism, and may contribute to the normal biology of the prostate cell, as well as prostate cancer progression. Alternatively spliced transcript variants encoding different isoforms have been 1 Recombinant human STEAP4 protein Catalog Number: ATGP2593 found for this gene. Recombinant human STEAP4 protein, fused to His-tag at N-terminus, was expressed in E. coli. Amino acid Sequence MRGSHHHHHH GMASMTGGQQ MGRDLYDDDD KDRWGSMEKT CIDALPLTMN SSEKQETVCI FGTGDFGRSL GLKMLQCGYS VVFGSRNPQK TTLLPSGAEV LSYSEAAKKS GIIIIAIHRE HYDFLTELTE VLNGKILVDI SNNLKINQYP ESNAEYLAHL VPGAHVVKAF NTISAWALQS GALDASRQ General References Kim,H.Y, et al. (2012) Exp. Mol. Med. 44 (10), 622-632 Tanaka,Y., et al. (2012) Clin. Exp. Rheumatol. 30 (1), 99-102 DATA SDS-PAGE 3ug by SDS-PAGE under reducing condition and visualized by coomassie blue stain. 2.
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