Unification of frequentist inference and machine learning for pterygomaxillary morphometrics.
Shanna MarrinanI T Abdul-WahaabV K KonuriA SahaiA K Al-ShalchyPublished in: Folia morphologica (2021)
Although the predictors in our analytics had weak-to-moderate effect size underlining the existence of unknown explanatory factors, it provided novel results on the spatial inclination of the pterygoid process, and reconciled machine learning with non-Bayesian models, the application of which belongs to the realm of oral-maxillofacial surgery.