A genetic programming approach to development of clinical prediction models: A case study in symptomatic cardiovascular disease.
Christian A BannisterJulian P HalcoxCraig J CurrieAlun PreeceIrena SpasićPublished in: PloS one (2018)
Using empirical data, we demonstrated that a prediction model developed automatically by GP has predictive ability comparable to that of manually tuned Cox regression. The GP model was more complex, but it was developed in a fully automated way and comprised fewer covariates. Furthermore, it did not require the expertise normally needed for its derivation, thereby alleviating the knowledge elicitation bottleneck. Overall, GP demonstrated considerable potential as a method for the automated development of clinical prediction models for diagnostic and prognostic purposes.