2024
DOI: 10.3390/diagnostics14090890
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The Detection of Pulp Stones with Automatic Deep Learning in Panoramic Radiographies: An AI Pilot Study

Ali Altındağ,
Serkan Bahrilli,
Özer Çelik
et al.

Abstract: This study aims to evaluate the effectiveness of employing a deep learning approach for the automated detection of pulp stones in panoramic imaging. A comprehensive dataset comprising 2409 panoramic radiography images (7564 labels) underwent labeling using the CranioCatch labeling program, developed in Eskişehir, Turkey. The dataset was stratified into three distinct subsets: training (n = 1929, 80% of the total), validation (n = 240, 10% of the total), and test (n = 240, 10% of the total) sets. To optimize th… Show more

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