Datasheet BA3419 Anti-KIN Antibody

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Datasheet BA3419 Anti-KIN Antibody Product datasheet Anti-KIN Antibody Catalog Number: BA3419 BOSTER BIOLOGICAL TECHNOLOGY Special NO.1, International Enterprise Center, 2nd Guanshan Road, Wuhan, China Web: www.boster.com.cn Phone: +86 27 67845390 Fax: +86 27 67845390 Email: [email protected] Basic Information Product Name Anti-KIN Antibody Gene Name KIN Source Rabbit IgG Species Reactivity human,rat,mouse Tested Application WB Contents 500ug/ml antibody with PBS ,0.02% NaN3 , 1mg BSA and 50% glycerol. Immunogen A synthetic peptide corresponding to a sequence at the N-terminus of human KIN(48-64aa ESHQRQLLLASENPQQF), identical to the related mouse and rat sequences. Purification Immunogen affinity purified. Observed MW 45KD,55KD Dilution Ratios Western blot: 1:500-2000 Storage 12 months from date of receipt,-20℃ as supplied.6 months 2 to 8℃ after reconstitution. Avoid repeated freezing and thawing Background Information DNA/RNA-binding protein KIN17, also known as BTCD or KIN17 is a protein that in humans is encoded by the KIN gene. This gene is mapped to 10p14. The protein encoded by this gene is a nuclear protein that forms intranuclear foci during proliferation and is redistributed in the nucleoplasm during the cell cycle. Short-wave ultraviolet light provokes the relocalization of the protein, suggesting its participation in the cellular response to DNA damage. Originally selected based on protein-binding with RecA antibodies, the mouse protein presents a limited similarity with a functional domain of the bacterial RecA protein, a characteristic shared by this human ortholog. Alternative splicing of this gene results in multiple transcript variants. Reference Anti-KIN Antibody被引用在0文献中。 暂无引用 FOR RESEARCH USE ONLY. NOT FOR DIAGNOSTIC AND CLINICAL USE. 1 Product datasheet Anti-KIN Antibody Catalog Number: BA3419 BOSTER BIOLOGICAL TECHNOLOGY Special NO.1, International Enterprise Center, 2nd Guanshan Road, Wuhan, China Web: www.boster.com.cn Phone: +86 27 67845390 Fax: +86 27 67845390 Email: [email protected] Selected Validation Data Lane 1: Rat Skeletal Muscle Tissue LysateLane 2: Human Placenta Tissue LysateLane 3: Rat Testis Tissue Lysate FOR RESEARCH USE ONLY. NOT FOR DIAGNOSTIC AND CLINICAL USE. 2 Powered by TCPDF (www.tcpdf.org).
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