Anti-LSP1 Antibody (ARG55377)

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Anti-LSP1 Antibody (ARG55377) Product datasheet [email protected] ARG55377 Package: 50 μl anti-LSP1 antibody Store at: -20°C Summary Product Description Rabbit Polyclonal antibody recognizes LSP1 Tested Reactivity Hu Tested Application WB Host Rabbit Clonality Polyclonal Isotype IgG Target Name LSP1 Antigen Species Human Immunogen Synthetic peptide corresponding to aa. 121-149 of Human LSP1. Conjugation Un-conjugated Alternate Names Lymphocyte-specific protein 1; pp52; 52 kDa phosphoprotein; 47 kDa actin-binding protein; WP34; Lymphocyte-specific antigen WP34 Application Instructions Application table Application Dilution WB 1:1000 Application Note * The dilutions indicate recommended starting dilutions and the optimal dilutions or concentrations should be determined by the scientist. Positive Control Daudi Calculated Mw 37 kDa Properties Form Liquid Purification Affinity purification with immunogen. Buffer PBS (without Mg2+ and Ca2+, pH 7.4), 150mM NaCl, 0.02% Sodium azide and 50% Glycerol Preservative 0.02% Sodium azide Stabilizer 50% Glycerol Storage instruction For continuous use, store undiluted antibody at 2-8°C for up to a week. For long-term storage, aliquot and store at -20°C. Storage in frost free freezers is not recommended. Avoid repeated freeze/thaw cycles. Suggest spin the vial prior to opening. The antibody solution should be gently mixed before use. Note For laboratory research only, not for drug, diagnostic or other use. www.arigobio.com 1/2 Bioinformation Database links GeneID: 4046 Human Swiss-port # P33241 Human Gene Symbol LSP1 Gene Full Name lymphocyte-specific protein 1 Background This gene encodes an intracellular F-actin binding protein. The protein is expressed in lymphocytes, neutrophils, macrophages, and endothelium and may regulate neutrophil motility, adhesion to fibrinogen matrix proteins, and transendothelial migration. Alternative splicing results in multiple transcript variants encoding different isoforms. [provided by RefSeq, Jul 2008] Function May play a role in mediating neutrophil activation and chemotaxis. [UniProt] Research Area Immune System antibody; Signaling Transduction antibody Cellular Localization Cell membrane; Peripheral membrane protein; Cytoplasmic side Images ARG55377 anti-LSP1 antibody WB image Western blot: 35 µg of Daudi cell lysate stained with ARG55377 anti- LSP1 antibody at 1:1000 dilution. www.arigobio.com 2/2 Powered by TCPDF (www.tcpdf.org).
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