PLoS ONE (Jan 2022)

Analysis of epidemiological association patterns of serum thyrotropin by combining random forests and Bayesian networks.

  • Ann-Kristin Becker,
  • Till Ittermann,
  • Markus Dörr,
  • Stephan B Felix,
  • Matthias Nauck,
  • Alexander Teumer,
  • Uwe Völker,
  • Henry Völzke,
  • Lars Kaderali,
  • Neetika Nath

DOI
https://doi.org/10.1371/journal.pone.0271610
Journal volume & issue
Vol. 17, no. 7
p. e0271610

Abstract

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BackgroundApproaching epidemiological data with flexible machine learning algorithms is of great value for understanding disease-specific association patterns. However, it can be difficult to correctly extract and understand those patterns due to the lack of model interpretability.MethodWe here propose a machine learning workflow that combines random forests with Bayesian network surrogate models to allow for a deeper level of interpretation of complex association patterns. We first evaluate the proposed workflow on synthetic data. We then apply it to data from the large population-based Study of Health in Pomerania (SHIP). Based on this combination, we discover and interpret broad patterns of individual serum TSH concentrations, an important marker of thyroid functionality.ResultsEvaluations using simulated data show that feature associations can be correctly recovered by combining random forests and Bayesian networks. The presented model achieves predictive accuracy that is similar to state-of-the-art models (root mean square error of 0.66, mean absolute error of 0.55, coefficient of determination of R2 = 0.15). We identify 62 relevant features from the final random forest model, ranging from general health variables over dietary and genetic factors to physiological, hematological and hemostasis parameters. The Bayesian network model is used to put these features into context and make the black-box random forest model more understandable.ConclusionWe demonstrate that the combination of random forest and Bayesian network analysis is helpful to reveal and interpret broad association patterns of individual TSH concentrations. The discovered patterns are in line with state-of-the-art literature. They may be useful for future thyroid research and improved dosing of therapeutics.