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Inhibiting GIT1 reduces the growth, invasion, and angiogenesis of osteosarcoma

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Figure

Table 1 immunohistochemical staining of giT1 in all patient-derived Os tissues
Figure 2 Knockdown efficacy of GIT1.by giT1-shRna in OsT cells detected by real-time RT-PCR
Figure 3 Knockdown of giT1 inhibited invasion of osteosarcoma cells.assay. (nC-shRna and giT1-shRna group was conducted (scale bar: 20 µm; *Notes: OsT cells were infected with giT1-shRna, nC-shRna or blank control for 24 and 48 hours respectively
Figure 4 Knockdown of giT1 inhibited angiogenesis of osteosarcoma.Notes: (A) The elisa results of VegF concentration released from OsT cells infected with giT1-shRna or nC-shRna
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