Predicting Outcome in Clear Aligner Treatment: A Machine Learning Analysis
Daniel Wolf,
Gasser Farrag,
Tabea Flügge
et al.
Abstract:Background/Objectives: Machine learning (ML) models predicting the risk of refinement (i.e., a subsequent course of treatment being necessary) in clear aligner therapy (CAT) were developed and evaluated. Methods: An anonymized sample of 9942 CAT patients (70.6% females, 29.4% males, age range 18–64 years, median 30.5 years), as provided by DrSmile, a large European CAT provider based in Berlin, Germany, was used. Three different ML methods were employed: (1) logistic regression with L1 regularization, (2) extr… Show more
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