2023
DOI: 10.3390/jcm12175464
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Machine Learning to Predict Apical Lesions: A Cross-Sectional and Model Development Study

Sascha Rudolf Herbst,
Vinay Pitchika,
Joachim Krois
et al.

Abstract: (1) Background: We aimed to identify factors associated with the presence of apical lesions (AL) in panoramic radiographs and to evaluate the predictive value of the identified factors. (2) Methodology: Panoramic radiographs from 1071 patients (age: 11–93 a, mean: 50.6 a ± 19.7 a) with 27,532 teeth were included. Each radiograph was independently assessed by five experienced dentists for AL. A range of shallow machine learning algorithms (logistic regression, k-nearest neighbor, decision tree, random forest, s… Show more

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