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18.03.2024 | Original Article

Artificial intelligence for caries detection: a novel diagnostic tool using deep learning algorithms

verfasst von: Yiliang Liu, Kai Xia, Yueyan Cen, Sancong Ying, Zhihe Zhao

Erschienen in: Oral Radiology

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Abstract

Objectives

The aim of this study was to develop an assessment tool for automatic detection of dental caries in periapical radiographs using convolutional neural network (CNN) architecture.

Methods

A novel diagnostic model named ResNet + SAM was established using numerous periapical radiographs (4278 images) annotated by medical experts to automatically detect dental caries. The performance of the model was compared to the traditional CNNs (VGG19, ResNet-50), and the dentists. The Gradient-weighted Class Activation Mapping (Grad-CAM) technique shows the region of interest in the image for the CNNs.

Results

ResNet + SAM demonstrated significantly improved performance compared to the modified ResNet-50 model, with an average F1 score of 0.886 (95% CI 0.855–0.918), accuracy of 0.885 (95% CI 0.862–0.901) and AUC of 0.954 (95% CI 0.924–0.980). The comparison between the performance of the model and the dentists revealed that the model achieved higher accuracy than that of the junior dentists. With the assist of the tool, the dentists achieved superior metrics with a mean F1 score of 0.827 and the interobserver agreement for dental caries is enhanced from 0.592/0.610 to 0.706/0.723.

Conclusions

According to the results obtained from the experiments, the automatic assessment tool using the ResNet + SAM model shows remarkable performance and has excellent possibilities in identifying dental caries. The use of the assessment tool in clinical practice can be of great benefit as a clinical decision-making support in dentistry and reduce the workload of dentists.
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Metadaten
Titel
Artificial intelligence for caries detection: a novel diagnostic tool using deep learning algorithms
verfasst von
Yiliang Liu
Kai Xia
Yueyan Cen
Sancong Ying
Zhihe Zhao
Publikationsdatum
18.03.2024
Verlag
Springer Nature Singapore
Erschienen in
Oral Radiology
Print ISSN: 0911-6028
Elektronische ISSN: 1613-9674
DOI
https://doi.org/10.1007/s11282-024-00741-x

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