Anti-obesity effects of GIPR antagonists alone and in combination with GLP-1R agonists in preclinical models

医学 药理学 肥胖 内科学 内分泌学 生物信息学 生物
作者
Elizabeth A. Killion,Jinghong Wang,Junming Yie,Stone D.‐H. Shi,D.L. Bates,Xiaoshan Min,Renée Komorowski,Todd Hager,Liying Deng,Larissa Atangan,Shu-Chen Lu,Robert J. Kurzeja,Glenn Sivits,Joanne Lin,Qing Chen,Zhulun Wang,Stephen Thibault,Christina M. Abbott,Shi‐Yuan Meng,Brandon Clavette
出处
期刊:Science Translational Medicine [American Association for the Advancement of Science]
卷期号:10 (472) 被引量:220
标识
DOI:10.1126/scitranslmed.aat3392
摘要

Glucose-dependent insulinotropic polypeptide (GIP) receptor (GIPR) has been identified in multiple genome-wide association studies (GWAS) as a contributor to obesity, and GIPR knockout mice are protected against diet-induced obesity (DIO). On the basis of this genetic evidence, we developed anti-GIPR antagonistic antibodies as a potential therapeutic strategy for the treatment of obesity and observed that a mouse anti-murine GIPR antibody (muGIPR-Ab) protected against body weight gain, improved multiple metabolic parameters, and was associated with reduced food intake and resting respiratory exchange ratio (RER) in DIO mice. We replicated these results in obese nonhuman primates (NHPs) using an anti-human GIPR antibody (hGIPR-Ab) and found that weight loss was more pronounced than in mice. In addition, we observed enhanced weight loss in DIO mice and NHPs when anti-GIPR antibodies were codosed with glucagon-like peptide-1 receptor (GLP-1R) agonists. Mechanistic and crystallographic studies demonstrated that hGIPR-Ab displaced GIP and bound to GIPR using the same conserved hydrophobic residues as GIP. Further, using a conditional knockout mouse model, we excluded the role of GIPR in pancreatic β-cells in the regulation of body weight and response to GIPR antagonism. In conclusion, these data provide preclinical validation of a therapeutic approach to treat obesity with anti-GIPR antibodies.
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