Machine learning approach on plasma proteomics identifies signatures associated with obesity in the KORA FF4 cohort

Jiefei Niu, Jonathan Adam, Thomas Skurk, Jochen Seissler, Qiuling Dong, Esienanwan Efiong, Christian Gieger, Annette Peters, Sapna Sharma, Harald Grallert

Research output: Contribution to journalArticlepeer-review

Abstract

Aims: This study investigated the role of plasma proteins in obesity to identify predictive biomarkers and explore underlying biological mechanisms. Methods: In the Cooperative Health Research in the Region of Augsburg (KORA) FF4 study, 809 proteins were measured in 2045 individuals (564 obese and 1481 non-obese). Multivariate logistic regression adjusted for confounders (basic and full models) was used to identify obesity-associated proteins. Priority-Lasso was applied for feature selection, followed by machine learning models (support vector machine [SVM], random forest [RF], k-nearest neighbour [KNN] and adaptive boosting [Adaboost]) for prediction. Correlation and enrichment analyses were performed to elucidate relationships between protein biomarkers, obesity risk factors and perturbed pathways. Mendelian randomisation (MR) assessed causal links between proteins and obesity. Results: A total of 16 proteins were identified as significantly associated with obesity through multivariable logistic regression in the basic model and subsequent Priority-Lasso analysis. Enrichment analyses highlighted immune response, lipid metabolism and inflammation regulation were linked to obesity. Machine learning models demonstrated robust predictive performance with area under the curves (AUC) of 0.820 (SVM), 0.805 (RF), 0.791 (KNN) and 0.819 (Adaboost). All 16 proteins correlated with obesity-related risk factors such as blood pressure and lipid levels. MR analysis identified AFM, CRP and CFH as causal and potentially modifiable proteins. Conclusions: The protein signatures identified in our study showed promising predictive potential for obesity. These findings warrant further investigation to evaluate their clinical applicability, offering insights into obesity prevention and treatment strategies.

Original languageEnglish
Pages (from-to)2626-2636
Number of pages11
JournalDiabetes, Obesity and Metabolism
Volume27
Issue number5
DOIs
StatePublished - May 2025

Keywords

  • cohort study
  • machine learning
  • obesity
  • proteomics

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