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Erschienen in: Oral Radiology 3/2019

11.12.2018 | Original Article

Deep-learning classification using convolutional neural network for evaluation of maxillary sinusitis on panoramic radiography

verfasst von: Makoto Murata, Yoshiko Ariji, Yasufumi Ohashi, Taisuke Kawai, Motoki Fukuda, Takuma Funakoshi, Yoshitaka Kise, Michihito Nozawa, Akitoshi Katsumata, Hiroshi Fujita, Eiichiro Ariji

Erschienen in: Oral Radiology | Ausgabe 3/2019

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Abstract

Objectives

To apply a deep-learning system for diagnosis of maxillary sinusitis on panoramic radiography, and to clarify its diagnostic performance.

Methods

Training data for 400 healthy and 400 inflamed maxillary sinuses were enhanced to 6000 samples in each category by data augmentation. Image patches were input into a deep-learning system, the learning process was repeated for 200 epochs, and a learning model was created. Newly-prepared testing image patches from 60 healthy and 60 inflamed sinuses were input into the learning model, and the diagnostic performance was calculated. Receiver-operating characteristic (ROC) curves were drawn, and the area under the curve (AUC) values were obtained. The results were compared with those of two experienced radiologists and two dental residents.

Results

The diagnostic performance of the deep-learning system for maxillary sinusitis on panoramic radiographs was high, with accuracy of 87.5%, sensitivity of 86.7%, specificity of 88.3%, and AUC of 0.875. These values showed no significant differences compared with those of the radiologists and were higher than those of the dental residents.

Conclusions

The diagnostic performance of the deep-learning system for maxillary sinusitis on panoramic radiographs was sufficiently high. Results from the deep-learning system are expected to provide diagnostic support for inexperienced dentists.
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Metadaten
Titel
Deep-learning classification using convolutional neural network for evaluation of maxillary sinusitis on panoramic radiography
verfasst von
Makoto Murata
Yoshiko Ariji
Yasufumi Ohashi
Taisuke Kawai
Motoki Fukuda
Takuma Funakoshi
Yoshitaka Kise
Michihito Nozawa
Akitoshi Katsumata
Hiroshi Fujita
Eiichiro Ariji
Publikationsdatum
11.12.2018
Verlag
Springer Singapore
Erschienen in
Oral Radiology / Ausgabe 3/2019
Print ISSN: 0911-6028
Elektronische ISSN: 1613-9674
DOI
https://doi.org/10.1007/s11282-018-0363-7

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