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FGF2 binds to the allosteric site (site 2) and activates αvβ3 integrin and FGF1 binds to site 2 but suppresses integrin activation by FGF2: a potential mechanism of anti-inflammatory action of FGF1

Takada, Y. K.; Wu, X.; Wei, D.; Hwang, S.; Takada, Y.

2024-04-18 biochemistry
10.1101/2024.04.17.589976 bioRxiv
Show abstract

FGF1 is known as an anti-inflammatory and has suppresses insulin resistance. Its homologue FGF2 is pro-inflammatory. Mechanism of FGF1s anti-inflammatory action and FGF2s pro-inflammatory action are unknown. Several inflammatory cytokines (e.g., CX3CL1, CCL5, and CXCL12, and CD40L) bind to the classical ligand (RGD)-binding site (site 1) of integrin v{beta}3. In addition, they bind to the allosteric site (site 2) of v{beta}3, which is distinct from site 1, and allosterically activate v{beta}3. Site 2 is involved in inflammatory signals since inflammatory lipid mediator 5-hydroxycholesterol binds to site 2 and induces integrin activation and inflammatory signals (e.g., TNF and IL-6 secretion). We thus hypothesized that FGF1 and FGF2 bind to site 2 and affect activation status of integrins. Here we describe that FGF2 bound to site 2 and allosterically activated v{beta}3 integrin. Point mutations in the site 2-binding interface of FGF2 suppressed this activation, indicating that FGF2 binding to site 2 is required for inducing integrin activation. In contrast, FGF1 bound to site 2 but did not activate v{beta}3, and instead suppressed integrin activation induced by FGF2, indicating that FGF1 acts as an antagonist of site 2. These findings suggest that FGF1s anti-inflammatory action is mediated by blocking site 2. FGF1 has potential as an anti-inflammatory agent, but is not appropriate for long-term use since it is potent mitogen. A non-mitogenic FGF1 mutant (R50E), which is defective in binding to site 1 of v{beta}3, suppressed v{beta}3 activation by FGF2 as effectively as WT FGF1. We propose that FGF1 R50E has therapeutic potential for inflammatory diseases.

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