Anti-TCEA2 Monoclonal Antibody (DCABH-13722) This Product Is for Research Use Only and Is Not Intended for Diagnostic Use

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Anti-TCEA2 Monoclonal Antibody (DCABH-13722) This Product Is for Research Use Only and Is Not Intended for Diagnostic Use Anti-TCEA2 monoclonal antibody (DCABH-13722) This product is for research use only and is not intended for diagnostic use. PRODUCT INFORMATION Antigen Description The protein encoded by this gene is found in the nucleus, where it functions as an SII class transcription elongation factor. Elongation factors in this class are responsible for releasing RNA polymerase II ternary complexes from transcriptional arrest at template-encoded arresting sites. The encoded protein has been shown to interact with general transcription factor IIB, a basal transcription factor. Two transcript variants encoding different isoforms have been found for this gene. Immunogen A synthetic peptide of human TCEA2 is used for rabbit immunization. Isotype IgG Source/Host Rabbit Species Reactivity Human Purification Protein A Conjugate Unconjugated Applications Western Blot (Transfected lysate); ELISA Size 1 ea Buffer In 1x PBS, pH 7.4 Preservative None Storage Store at -20°C or lower. Aliquot to avoid repeated freezing and thawing. GENE INFORMATION Gene Name TCEA2 transcription elongation factor A (SII), 2 [ Homo sapiens ] Official Symbol TCEA2 Synonyms TCEA2; transcription elongation factor A (SII), 2; transcription elongation factor A protein 2; TFIIS; testis-specific S-II; transcription elongation factor TFIIS.1; transcription elongation factor TFIIS.l; transcription elongation factor S-II protein 2; 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 Entrez Gene ID 6919 Protein Refseq NP_003186 UniProt ID Q15560 Chromosome Location 20q13.33 Function DNA binding; metal ion binding; protein binding; translation elongation factor activity; zinc ion binding; 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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