TSBP1 (NM 001286474) Human Tagged ORF Clone – RC238900

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TSBP1 (NM 001286474) Human Tagged ORF Clone – RC238900 OriGene Technologies, Inc. 9620 Medical Center Drive, Ste 200 Rockville, MD 20850, US Phone: +1-888-267-4436 [email protected] EU: [email protected] CN: [email protected] Product datasheet for RC238900 TSBP1 (NM_001286474) Human Tagged ORF Clone Product data: Product Type: Expression Plasmids Product Name: TSBP1 (NM_001286474) Human Tagged ORF Clone Tag: Myc-DDK Symbol: TSBP1 Synonyms: C6orf10; TSBP Vector: pCMV6-Entry (PS100001) E. coli Selection: Kanamycin (25 ug/mL) Cell Selection: Neomycin This product is to be used for laboratory only. Not for diagnostic or therapeutic use. View online » ©2021 OriGene Technologies, Inc., 9620 Medical Center Drive, Ste 200, Rockville, MD 20850, US 1 / 4 TSBP1 (NM_001286474) Human Tagged ORF Clone – RC238900 ORF Nucleotide >RC238900 representing NM_001286474 Sequence: Red=Cloning site Blue=ORF Green=Tags(s) TTTTGTAATACGACTCACTATAGGGCGGCCGGGAATTCGTCGACTGGATCCGGTACCGAGGAGATCTGCC GCCGCGATCGCC ATGACAGTCTTGGAAATAACTTTGGCTGTCATCCTGACTCTACTGGGACTTGCCATCCTGGCTATTTTGT TAACAAGATGGGCACGATGTAAGCAAAGTGAAATGTATATCTCCAGATACAGTTCAGAACAAAGTGCTAG ACTTCTGGACTATGAGGATGGTAGAGGATCCCGACATGCATATTCAACACAAAGTGACACTTCATATGAT AACCGAGAGAGATCCAAAAGAGATTACACACCATCAACCAACTCTCTAGCACTGTCTCGATCAAGTATTG CTTTACCTCAAGGATCCATGAGTAGTATAAAATGTTTACAAACAACTGAAGAACCTCCTTCCAGAACTGC AGGAGCCATGATGCAATTCACAGCCCCTATTCCCGGAGCTACAGGACCTATCAAGCTCTCTCAAAAAACC ATTGTGCAAACTCCAGGACCTATTGTACAATATCCTGGATCCAATGCTGGTCCACCTTCAGCACCCCGCG GTCCACCCATGGCACCCATAATAATTTCACAGAGAACCGCAAGTCAGCTGGCAGCACCTATAATAATTTC GCAGAGAACTGCAAGAATACCTCAAGTTCACACTATGGACAGTTCTGGAAAAATCACACTGACTCCTGTG GTTATATTAACAGGTTACATGGATGAAGAACTTGCAAAAAAATCTTGTTCCAAAATCCAGATTCTAAAAT GTGGAGGCACTGCAAGGTCTCAGAATAGCCGAGAAGAAAACAAGGAAGCACTAAAGAATGACATCATATT TACGAATTCTGTAGAATCCTTGAAATCAGCACACATAAAGGAGCCAGAAAGAGAAGGAAAAGGCACTGAT TTAGAGAAAGACAAAATAGGAATGGAGGTCAAGGTAGACAGTGACGCTGGAATACCAAAAAGACAGGAAA CCCAACTAAAAATCAGTGAGATGAGTATACCACAAGGACAGGGAGCCCAAATAAAGAAAAGTGTGTCAGA TGTACCAAGAGGACAGGAGTCCCAAGTAAAGAAGAGTGAGTCAGGTGTCCCAAAAGGACAAGAAGCCCAA GTAACGAAGAGTGGGTTGGTTGTACTGAAAGGACAGGAAGCCCAGGTAGAGAAGAGTGAGATGGGTGTGC CAAGAAGACAGGAATCCCAAGTAAAGAAGAGTCAGTCTGGTGTCTCAAAGGGACAGGAAGCCCAGGTAAA GAAGAGGGAGTCAGTTGTACTGAAAGGACAGGAAGCCCAGGTAGAGAAGAGTGAGTTGAAGGTACCAAAA GGACAAGAAGGCCAAGTAGAGAAGACTGAGGCAGATGTGCCAAAGGAACAAGAGGTCCAAGAAAAGAAGA GTGAGGCAGGTGTACTGAAAGGACCAGAATCCCAAGTAAAGAACACTGAGGTGAGTGTACCAGAAACACT GGAATCCCAAGTAAAGAAGAGTGAGTCAGGTGTACTAAAAGGACAGGAAGCCCAAGAAAAGAAGGAGAGT TTTGAGGATAAAGGAAATAATGATAAAGAAAAGGAGAGAGATGCAGAGAAAGATCCAAATAAAAAAGAAA AAGGTGACAAAAACACAAAAGGTGACAAAGGAAAGGACAAAGTTAAAGGAAAGAGAGAATCAGAAATCAA TGGTGAAAAATCAAAAGGCTCGAAAAGGGCGAAGGCAAATACAGGAAGGAAGTACAACAAAAAAGTGGAA GAG ACGCGTACGCGGCCGCTCGAGCAGAAACTCATCTCAGAAGAGGATCTGGCAGCAAATGATATCCTGGATT ACAAGGATGACGACGATAAGGTTTAA Protein Sequence: >RC238900 representing NM_001286474 Red=Cloning site Green=Tags(s) MTVLEITLAVILTLLGLAILAILLTRWARCKQSEMYISRYSSEQSARLLDYEDGRGSRHAYSTQSDTSYD NRERSKRDYTPSTNSLALSRSSIALPQGSMSSIKCLQTTEEPPSRTAGAMMQFTAPIPGATGPIKLSQKT IVQTPGPIVQYPGSNAGPPSAPRGPPMAPIIISQRTASQLAAPIIISQRTARIPQVHTMDSSGKITLTPV VILTGYMDEELAKKSCSKIQILKCGGTARSQNSREENKEALKNDIIFTNSVESLKSAHIKEPEREGKGTD LEKDKIGMEVKVDSDAGIPKRQETQLKISEMSIPQGQGAQIKKSVSDVPRGQESQVKKSESGVPKGQEAQ VTKSGLVVLKGQEAQVEKSEMGVPRRQESQVKKSQSGVSKGQEAQVKKRESVVLKGQEAQVEKSELKVPK GQEGQVEKTEADVPKEQEVQEKKSEAGVLKGPESQVKNTEVSVPETLESQVKKSESGVLKGQEAQEKKES FEDKGNNDKEKERDAEKDPNKKEKGDKNTKGDKGKDKVKGKRESEINGEKSKGSKRAKANTGRKYNKKVE E TRTRPLEQKLISEEDLAANDILDYKDDDDKV Restriction Sites: SgfI-MluI This product is to be used for laboratory only. Not for diagnostic or therapeutic use. ©2021 OriGene Technologies, Inc., 9620 Medical Center Drive, Ste 200, Rockville, MD 20850, US 2 / 4 TSBP1 (NM_001286474) Human Tagged ORF Clone – RC238900 Cloning Scheme: Plasmid Map: ACCN: NM_001286474 ORF Size: 1683 bp This product is to be used for laboratory only. Not for diagnostic or therapeutic use. ©2021 OriGene Technologies, Inc., 9620 Medical Center Drive, Ste 200, Rockville, MD 20850, US 3 / 4 TSBP1 (NM_001286474) Human Tagged ORF Clone – RC238900 OTI Disclaimer: The molecular sequence of this clone aligns with the gene accession number as a point of reference only. However, individual transcript sequences of the same gene can differ through naturally occurring variations (e.g. polymorphisms), each with its own valid existence. This clone is substantially in agreement with the reference, but a complete review of all prevailing variants is recommended prior to use. More info OTI Annotation: This clone was engineered to express the complete ORF with an expression tag. Expression varies depending on the nature of the gene. RefSeq: NM_001286474.2 RefSeq Size: 2188 bp RefSeq ORF: 1686 bp Locus ID: 10665 UniProt ID: Q5SRN2, A0A1U9X7D1, Q13647 Protein Families: Transmembrane MW: 61.7 kDa This product is to be used for laboratory only. Not for diagnostic or therapeutic use. ©2021 OriGene Technologies, Inc., 9620 Medical Center Drive, Ste 200, Rockville, MD 20850, US 4 / 4.
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