Intra-Individual Variations in How Insulin Sensitivity Responds to Long-Term Exercise: Predictions by Machine Learning Based on Large-Scale Serum Proteomics.
Jonas Krag VikenThomas OlsenChristian André DrevonMarit HjorthKåre Inge BirkelandFrode NorheimSindre Lee-ØdegårdPublished in: Metabolites (2024)
Physical activity is effective for preventing and treating type 2 diabetes, but some individuals do not achieve metabolic benefits from exercise ("non-responders"). We investigated non-responders in terms of insulin sensitivity changes following a 12-week supervised strength and endurance exercise program. We used a hyperinsulinaemic euglycaemic clamp to measure insulin sensitivity among 26 men aged 40-65, categorizing them into non-responders or responders based on their insulin sensitivity change scores. The exercise regimen included VO 2 max, muscle strength, whole-body MRI scans, muscle and fat biopsies, and serum samples. mRNA sequencing was performed on biopsies and Olink proteomics on serum samples. Non-responders showed more visceral and intramuscular fat and signs of dyslipidaemia and low-grade inflammation at baseline and did not improve in insulin sensitivity following exercise, although they showed gains in VO 2 max and muscle strength. Impaired IL6-JAK-STAT3 signalling in non-responders was suggested by serum proteomics analysis, and a baseline serum proteomic machine learning (ML) algorithm predicted insulin sensitivity responses with high accuracy, validated across two independent exercise cohorts. The ML model identified 30 serum proteins that could forecast exercise-induced insulin sensitivity changes.
Keyphrases
- physical activity
- high intensity
- machine learning
- low grade
- type diabetes
- resistance training
- mass spectrometry
- adipose tissue
- computed tomography
- deep learning
- magnetic resonance imaging
- oxidative stress
- cardiovascular disease
- artificial intelligence
- insulin resistance
- contrast enhanced
- body mass index
- high resolution
- big data
- depressive symptoms
- quality improvement
- single cell
- single molecule
- study protocol
- data analysis
- atomic force microscopy