Statistical validation of a deep learning algorithm for dental anomaly detection in intraoral radiographs using paired data
Pieter Van Leemput, Johannes Keustermans, Wouter Mollemans

TL;DR
This study validates a deep learning algorithm for dental anomaly detection in radiographs, showing significant improvements in sensitivity and AUC, and provides a statistical framework for assessing such diagnostic tools.
Contribution
It introduces a comprehensive statistical validation setup for deep learning in dental radiology, demonstrating significant performance improvements over traditional methods.
Findings
Sensitivity increased from 60.7% to 85.9%.
AUC improved significantly from 0.60 to 0.86.
The statistical analysis confirms the effectiveness of the algorithm.
Abstract
This article describes the clinical validation study setup, statistical analysis and results for a deep learning algorithm which detects dental anomalies in intraoral radiographic images, more specifically caries, apical lesions, root canal treatment defects, marginal defects at crown restorations, periodontal bone loss and calculus. The study compares the detection performance of dentists using the deep learning algorithm to the prior performance of these dentists evaluating the images without algorithmic assistance. Calculating the marginal profit and loss of performance from the annotated paired image data allows for a quantification of the hypothesized change in sensitivity and specificity. The statistical significance of these results is extensively proven using both McNemar's test and the binomial hypothesis test. The average sensitivity increases from to , while…
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Taxonomy
TopicsDental Radiography and Imaging · Anomaly Detection Techniques and Applications
