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Body mass index stratification optimizes polygenic prediction of type 2 diabetes in cross-biobank analyses.

Takafumi OjimaShinichi NambaKen SuzukiKenichi YamamotoKyuto SoneharaAkira Naritanull nullnull nullYoichiro KamataniGen TamiyaMasayuki YamamotoToshimasa YamauchiTakashi KadowakiYukinori Okada
Published in: Nature genetics (2024)
Type 2 diabetes (T2D) shows heterogeneous body mass index (BMI) sensitivity. Here, we performed stratification based on BMI to optimize predictions for BMI-related diseases. We obtained BMI-stratified datasets using data from more than 195,000 individuals (n T2D  = 55,284) from BioBank Japan (BBJ) and UK Biobank. T2D heritability in the low-BMI group was greater than that in the high-BMI group. Polygenic predictions of T2D toward low-BMI targets had pseudo-R 2 values that were more than 22% higher than BMI-unstratified targets. Polygenic risk scores (PRSs) from low-BMI discovery outperformed PRSs from high BMI, while PRSs from BMI-unstratified discovery performed best. Pathway-specific PRSs demonstrated the biological contributions of pathogenic pathways. Low-BMI T2D cases showed higher rates of neuropathy and retinopathy. Combining BMI stratification and a method integrating cross-population effects, T2D predictions showed greater than 37% improvements over unstratified-matched-population prediction. We replicated findings in the Tohoku Medical Megabank (n = 26,000) and the second BBJ cohort (n = 33,096). Our findings suggest that target stratification based on existing traits can improve the polygenic prediction of heterogeneous diseases.
Keyphrases
  • body mass index
  • weight gain
  • type diabetes
  • physical activity
  • cardiovascular disease
  • small molecule
  • adipose tissue
  • machine learning
  • gene expression
  • artificial intelligence
  • single cell
  • glycemic control