Auto-evaluation of skull radiograph accuracy using unsupervised anomaly detection.

Anomaly detection autoencoder skull radiograph unsupervised learning variational autoencoder

Journal

Journal of X-ray science and technology
ISSN: 1095-9114
Titre abrégé: J Xray Sci Technol
Pays: Netherlands
ID NLM: 9000080

Informations de publication

Date de publication:
25 Jun 2024
Historique:
medline: 29 6 2024
pubmed: 29 6 2024
entrez: 29 6 2024
Statut: aheadofprint

Résumé

Radiography plays an important role in medical care, and accurate positioning is essential for providing optimal quality images. Radiographs with insufficient diagnostic value are rejected, and retakes are required. However, determining the suitability of retaking radiographs is a qualitative evaluation. To evaluate skull radiograph accuracy automatically using an unsupervised learning-based autoencoder (AE) and a variational autoencoder (VAE). In this study, we eliminated visual qualitative evaluation and used unsupervised learning to identify skull radiography retakes from the quantitative evaluation. Five skull phantoms were imaged on radiographs, and 1,680 images were acquired. These images correspond to two categories: normal images captured at appropriate positions and images captured at inappropriate positions. This study verified the discriminatory ability of skull radiographs using anomaly detection methods. The areas under the curves for AE and VAE were 0.7060 and 0.6707, respectively, in receiver operating characteristic analysis. Our proposed method showed a higher discrimination ability than those of previous studies which had an accuracy of 52%. Our findings suggest that the proposed method has high classification accuracy in determining the suitability of retaking skull radiographs. Automation of optimal image consideration, whether or not to retake radiographs, contributes to improving operational efficiency in busy X-ray imaging operations.

Sections du résumé

BACKGROUND UNASSIGNED
Radiography plays an important role in medical care, and accurate positioning is essential for providing optimal quality images. Radiographs with insufficient diagnostic value are rejected, and retakes are required. However, determining the suitability of retaking radiographs is a qualitative evaluation.
OBJECTIVE UNASSIGNED
To evaluate skull radiograph accuracy automatically using an unsupervised learning-based autoencoder (AE) and a variational autoencoder (VAE). In this study, we eliminated visual qualitative evaluation and used unsupervised learning to identify skull radiography retakes from the quantitative evaluation.
METHODS UNASSIGNED
Five skull phantoms were imaged on radiographs, and 1,680 images were acquired. These images correspond to two categories: normal images captured at appropriate positions and images captured at inappropriate positions. This study verified the discriminatory ability of skull radiographs using anomaly detection methods.
RESULTS UNASSIGNED
The areas under the curves for AE and VAE were 0.7060 and 0.6707, respectively, in receiver operating characteristic analysis. Our proposed method showed a higher discrimination ability than those of previous studies which had an accuracy of 52%.
CONCLUSIONS UNASSIGNED
Our findings suggest that the proposed method has high classification accuracy in determining the suitability of retaking skull radiographs. Automation of optimal image consideration, whether or not to retake radiographs, contributes to improving operational efficiency in busy X-ray imaging operations.

Identifiants

pubmed: 38943422
pii: XST230431
doi: 10.3233/XST-230431
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Auteurs

Haruyuki Watanabe (H)

School of Radiological Technology, Gunma Prefectural College of Health Sciences, Maebashi, Japan.

Yuina Ezawa (Y)

School of Radiological Technology, Gunma Prefectural College of Health Sciences, Maebashi, Japan.

Eri Matsuyama (E)

Faculty of Informatics, The University of Fukuchiyama, Fukuchiyama, Japan.

Yohan Kondo (Y)

Graduate School of Health Sciences, Niigata University, Niigata, Japan.

Norio Hayashi (N)

School of Radiological Technology, Gunma Prefectural College of Health Sciences, Maebashi, Japan.

Sho Maruyama (S)

School of Radiological Technology, Gunma Prefectural College of Health Sciences, Maebashi, Japan.

Toshihiro Ogura (T)

School of Radiological Technology, Gunma Prefectural College of Health Sciences, Maebashi, Japan.

Masayuki Shimosegawa (M)

School of Radiological Technology, Gunma Prefectural College of Health Sciences, Maebashi, Japan.

Classifications MeSH