Recombinant Rabbit Anti-Human RAB8A Monoclonal Antibody, Clone NKG-S33-80-4 (CABT- Z616R) This Product Is for Research Use Only and Is Not Intended for Diagnostic Use

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Recombinant Rabbit Anti-Human RAB8A Monoclonal Antibody, Clone NKG-S33-80-4 (CABT- Z616R) This Product Is for Research Use Only and Is Not Intended for Diagnostic Use Recombinant Rabbit Anti-Human RAB8A Monoclonal Antibody, clone NKG-S33-80-4 (CABT- Z616R) This product is for research use only and is not intended for diagnostic use. PRODUCT INFORMATION Immunogen Recombinant full length protein within Human RAB8A aa 1 to the C-terminus. Isotype IgG Source/Host Rabbit Species Reactivity Human Clone NKG-S33-80-4 Purification Protein A purified Conjugate Unconjugated Applications WB, IHC-P, ICC/IF, FC, IP Recommended dilution: WB: 1:1000 IHC-P: 1:1000 ICC/IF: 1:500 FC: 1:600 IP: 1:30 Positive Control WB: HEK-293T, HCT116 and HeLa whole cell lysates. IHC-P: Human bladder cancer and breast tissues. ICC/IF: A549 and HeLa cells. Flow Cyt: A549 cells. IP: A549 whole cell lysate. Format Liquid Concentration Lot specific Size 100 μl Buffer PBS, 40% Glycerol (glycerin, glycerine), 0.05% BSA, pH 7.2. Preservative 0.01% Sodium azide Storage Store at +4℃ short term (1-2 weeks). Upon delivery aliquot. Store at -20℃. Stable for 12 months at -20℃. 45-1 Ramsey Road, Shirley, NY 11967, USA Email: [email protected] Tel: 1-631-624-4882 Fax: 1-631-938-8221 1 © Creative Diagnostics All Rights Reserved Ship Wet ice Warnings This product is for research use only and is not intended for diagnostic use. BACKGROUND Introduction RAB8A may be involved in vesicular trafficking and neurotransmitter release. Together with RAB11A, RAB3IP, the exocyst complex, PARD3, PRKCI, ANXA2, CDC42 and DNMBP promotes transcytosis of PODXL to the apical membrane initiation sites (AMIS), apical surface formation and lumenogenesis. Together with MYO5B and RAB11A participates in epithelial cell polarization. Keywords RAB8A;RAB8A, member RAS oncogene family;MEL, mel transforming oncogene (derived from cell line NK14);ras-related protein Rab-8A;RAB8;oncogene c-mel GENE INFORMATION Gene Name RAB8A Entrez Gene ID 4218 UniProt ID P61006 45-1 Ramsey Road, Shirley, NY 11967, USA Email: [email protected] Tel: 1-631-624-4882 Fax: 1-631-938-8221 2 © Creative Diagnostics All Rights Reserved.
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