Last updated:
Author(s):
Duaa I. Olwi, Lena R. Kaisinger, Katherine A. Kentistou, Marc Vaudel, Stasa Stankovic, Pål R. Njølstad, Stefan Johansson, John R. B. Perry, Felix R. Day, Ken K. Ong
Publish date:
22 August 2024
Journal:
International Journal of Obesity
PubMed ID:
39174749

Abstract

BackgroundCirculating insulin and insulin-like growth factor-1 (IGF-1) concentrations are positively correlated with adiposity. However, the causal effects of insulin and IGF-1 on adiposity are unclear.MethodsWe performed two-sample Mendelian randomization analyses to estimate the likely causal effects of fasting insulin and IGF-1 on relative childhood adiposity and adult body mass index (BMI). To improve accuracy and biological interpretation, we applied Steiger filtering (to avoid reverse causality) and ‘biological effect’ filtering of fasting insulin and IGF-1 associated variants.ResultsFasting insulin-increasing alleles (35 variants also associated with higher fasting glucose, indicative of insulin resistance) were associated with lower relative childhood adiposity (P = 3.8 × 10−3) and lower adult BMI (P = 1.4 × 10−5). IGF-1-increasing alleles also associated with taller childhood height (351 variants indicative of greater IGF-1 bioaction) showed no association with relative childhood adiposity (P = 0.077) or adult BMI (P = 0.562). Conversely, IGF-1-increasing alleles also associated with shorter childhood height (306 variants indicative of IGF-1 resistance) were associated with lower relative childhood adiposity (P = 6.7 × 10−3), but effects on adult BMI were inconclusive.ConclusionsGenetic causal modelling indicates negative effects of insulin resistance on childhood and adult adiposity, and negative effects of IGF-1 resistance on childhood adiposity. Our findings demonstrate the need to distinguish between bioaction and resistance when modelling variants associated with biomarker concentrations.

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