BLZF1 Mouse Monoclonal Antibody [Clone ID: OTI3E2] Product Data

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BLZF1 Mouse Monoclonal Antibody [Clone ID: OTI3E2] Product Data OriGene Technologies, Inc. 9620 Medical Center Drive, Ste 200 Rockville, MD 20850, US Phone: +1-888-267-4436 [email protected] EU: [email protected] CN: [email protected] Product datasheet for TA809273 BLZF1 Mouse Monoclonal Antibody [Clone ID: OTI3E2] Product data: Product Type: Primary Antibodies Clone Name: OTI3E2 Applications: WB Recommended Dilution: WB 1:2000 Reactivity: Human Host: Mouse Isotype: IgG1 Clonality: Monoclonal Immunogen: Human recombinant protein fragment corresponding to amino acids 1-246 of human BLZF1(NP_003657) produced in E.coli. Formulation: PBS (PH 7.3) containing 1% BSA, 50% glycerol and 0.02% sodium azide. Concentration: 1 mg/ml Purification: Purified from mouse ascites fluids or tissue culture supernatant by affinity chromatography (protein A/G) Conjugation: Unconjugated Storage: Store at -20°C as received. Stability: Stable for 12 months from date of receipt. Predicted Protein Size: 44.7 kDa Gene Name: basic leucine zipper nuclear factor 1 Database Link: NP_003657 Entrez Gene 8548 Human Q9H2G9 Background: Interacts with GORASP2 and with the GTP-bound form of RAB2, but not with other Golgi Rab proteins. GORASP2 and BLZF1 form a RAB2 effector complex on medial Golgi. [UniProtKB/Swiss-Prot Function] Synonyms: GOLGIN-45; JEM-1; JEM-1s; JEM1 Protein Families: Transcription Factors This product is to be used for laboratory only. Not for diagnostic or therapeutic use. View online » ©2021 OriGene Technologies, Inc., 9620 Medical Center Drive, Ste 200, Rockville, MD 20850, US 1 / 2 BLZF1 Mouse Monoclonal Antibody [Clone ID: OTI3E2] – TA809273 Product images: HEK293T cells were transfected with the pCMV6- ENTRY control (Left lane) or pCMV6-ENTRY BLZF1 ([RC204706], Right lane) cDNA for 48 hrs and lysed. Equivalent amounts of cell lysates (5 ug per lane) were separated by SDS-PAGE and immunoblotted with anti-BLZF1 (1:2000). Positive lysates [LY418515] (100ug) and [LC418515] (20ug) can be purchased separately from OriGene. This product is to be used for laboratory only. Not for diagnostic or therapeutic use. ©2021 OriGene Technologies, Inc., 9620 Medical Center Drive, Ste 200, Rockville, MD 20850, US 2 / 2.
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