CKMT1B Polyclonal Antibody

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CKMT1B Polyclonal Antibody Product Datasheet CKMT1B Polyclonal Antibody Catalog No: #30431 Package Size: #30431-1 50ul #30431-2 100ul Orders: [email protected] Support: [email protected] Description Product Name CKMT1B Polyclonal Antibody Host Species Rabbit Clonality Polyclonal Isotype IgG Purification Affinity purification Applications WB,IHC,IF Species Reactivity Hu,Ms,Rt Immunogen Description Recombinant fusion protein of human CKMT1B (NP_066270.1). Other Names CKMT1B; CKMT; CKMT1; UMTCK; creatine kinase, mitochondrial 1B Accession No. Swiss-Prot#:P12532NCBI Gene ID:1159 Calculated MW 40kDa Formulation Avoid freeze / thaw cycles.|Buffer: PBS with 50% glycerol, pH7.4. Storage Store at -20°C Application Details WB 1:500 - 1:2000IHC 1:50 - 1:100IF 1:50 - 1:100 Images Western blot analysis of extracts of various cell lines, using CKMT1B antibody. Immunohistochemistry of paraffin-embedded human colon using CKMT1B antibody. Address: 8400 Baltimore Ave., Suite 302, College Park, MD 20740, USA http://www.sabbiotech.com 1 Immunofluorescence analysis of NIH-3T3 cells using CKMT1B Polyclonal Antibody. Immunofluorescence analysis of U-2 OS cells using CKMT1B Polyclonal Antibody. Background Mitochondrial creatine (MtCK) kinase is responsible for the transfer of high energy phosphate from mitochondria to the cytosolic carrier, creatine. It belongs to the creatine kinase isoenzyme family. It exists as two isoenzymes, sarcomeric MtCK and ubiquitous MtCK, encoded by separate genes. Mitochondrial creatine kinase occurs in two different oligomeric forms: dimers and octamers, in contrast to the exclusively dimeric cytosolic creatine kinase isoenzymes. Many malignant cancers with poor prognosis have shown overexpression of ubiquitous mitochondrial creatine kinase; this may be related to high energy turnover and failure to eliminate cancer cells via apoptosis. Ubiquitous mitochondrial creatine kinase has 80% homology with the coding exons of sarcomeric mitochondrial creatine kinase. Two genes located near each other on chromosome 15 have been identified which encode identical mitochondrial creatine kinase proteins. Note: This product is for in vitro research use only and is not intended for use in humans or animals. Address: 8400 Baltimore Ave., Suite 302, College Park, MD 20740, USA http://www.sabbiotech.com 2.
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