Analysis of epidemiological association patterns of serum thyrotropin by combining random forests and Bayesian networks.
Ann-Kristin BeckerTill IttermannMarcus DörrStephan B FelixMatthias NauckAlexander TeumerLinus VölkerHenry VölzkeLars KaderaliNeetika NathPublished in: PloS one (2022)
We 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.