一般描述
Anti-BRCA1 (Ab-4), mouse monoclonal, clone SD118, recognizes the ~220 kDa BRCA1 in HBL-100 and SK-BR3 cells. It is validated for WB, IF, IP, and for frozen sections.
Purified mouse monoclonal antibody generated by immunizing RBF/DnJ mice with the specified immunogen and fusing splenocytes with NS1 mouse myeloma cells (see application references). Recognizes the ~220 kDa BRCA1 protein.
Recognizes the ~220 kDa BRCA1 protein in HBL-100 and SK-BR3 cells. Sold under license of U.S. Patent 5,753,441 and 6,162,897.
其他说明
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Maximal BRCA1 levels are observed in subconfluent cell populations after serum stimulation. Highly specific BRCA1 antibody useful for blotting and IP of full length BRCA1 protein. Antibody should be titrated for optimal results in individual systems.