SH3BGRL3 Polyclonal Antibody

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SH3BGRL3 Polyclonal Antibody PRODUCT DATA SHEET Bioworld Technology,Inc. SH3BGRL3 polyclonal antibody Catalog: BS60479 Host: Rabbit Reactivity: Human BackGround: Applications: SH3BGRL (SH3 domain binding glutamic acid-rich pro- WB: 1:500~1:1000 tein like), also known as SH3BGR, is a 114 amino acid IHC: 1:50~1:200 protein that is ubiquitously expressed and is encoded by a Storage&Stability: gene which maps to the X chromosome of both human Store at 4°C short term. Aliquot and store at -20°C long and mouse. Chromosome X, one of the two human sex term. Avoid freeze-thaw cycles. chromosomes, contains nearly 153 million base pairs and Specificity: encodes over 1,000 genes. In conjunction with chromo- SH3BGRL3 polyclonal antibody detects endogenous lev- some Y, chromosome X is responsible for sex determina- els of SH3BGRL3 protein. tion, as an X and a Y chromosome lead to normal male DATA: development, while two copies of an X chromosome lead to normal female development. There are a number of conditions related to an abnormal number and combina- tion of sex chromosomes , some of which include Turner's syndrome, color blindness, hemophilia and Du- chenne muscular dystrophy. Product: 1 mg/ml in Phosphate buffered saline (PBS) with 0.05% Western blot (WB) analysis of SH3BGRL3 polyclonal antibody at 1:500 sodium azide, approx. pH 7.3. dilution Molecular Weight: Lane1:HEK293T whole cell lysate ~ 10 kDa Lane2:sp2/0 whole cell lysate Swiss-Prot: Lane3:H9C2 whole cell lysate Q9H299 Note: Purification&Purity: For research use only, not for use in diagnostic procedure. The antibody was affinity-purified from rabbit antiserum by affinity-chromatography using epitope-specific im- munogen and the purity is > 95% (by SDS-PAGE). Bioworld Technology, Inc. Bioworld technology, co. Ltd. Add: 1660 South Highway 100, Suite 500 St. Louis Park, Add: No 9, weidi road Qixia District Nanjing, 210046, MN 55416,USA. P. R. China. Email: [email protected] Email: [email protected] Tel: 6123263284 Tel: 0086-025-68037686 Fax: 6122933841 Fax: 0086-025-68035151 .
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