Using random forest machine learning on data from a large, representative cohort of the general population improves clinical spirometry references.
Kris KristensenPernille H OlesenAnna K RoerbaekLouise NielsenHelle K HansenSimon Lebech CichoszMorten H JensenOle HejlesenPublished in: The clinical respiratory journal (2023)
The results point toward machine learning models such as RF have the potential to improve the prediction of estimated lung function for individual patients. These predictions are used as reference values and are an important part of assessing spirometry measurements in clinical practice. Further work is necessary in order to reduce the size of the intercepts obtained through these results.