Automated detection of otosclerosis with interpretable deep learning using temporal bone computed tomography images

This study aimed to develop an automated detection schema for otosclerosis with interpretable deep learning using temporal bone computed tomography images. With approval from the institutional review board, we retrospectively analyzed high-resolution computed tomography scans of the temporal bone of...

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Bibliographic Details
Published inHeliyon Vol. 10; no. 8; p. e29670
Main Authors Wang, Zheng, Song, Jian, Lin, Kaibin, Hong, Wei, Mao, Shuang, Wu, Xuewen, Zhang, Jianglin
Format Journal Article
LanguageEnglish
Published England Elsevier Ltd 30.04.2024
Elsevier
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Summary:This study aimed to develop an automated detection schema for otosclerosis with interpretable deep learning using temporal bone computed tomography images. With approval from the institutional review board, we retrospectively analyzed high-resolution computed tomography scans of the temporal bone of 182 participants with otosclerosis (67 male subjects and 115 female subjects; average age, 36.42 years) and 157 participants without otosclerosis (52 male subjects and 102 female subjects; average age, 30.61 years) using deep learning. Transfer learning with the pretrained VGG19, Mask RCNN, and EfficientNet models was used. In addition, 3 clinical experts compared the system's performance by reading the same computed tomography images for a subset of 35 unseen subjects. An area under the receiver operating characteristic curve and a saliency map were used to further evaluate the diagnostic performance. In prospective unseen test data, the diagnostic performance of the automatically interpretable otosclerosis detection system at the optimal threshold was 0.97 and 0.98 for sensitivity and specificity, respectively. In comparison with the clinical acumen of otolaryngologists at P < 0.05, the proposed system was not significantly different. Moreover, the area under the receiver operating characteristic curve for the proposed system was 0.99, indicating satisfactory diagnostic accuracy. Our research develops and evaluates a deep learning system that detects otosclerosis at a level comparable with clinical otolaryngologists. Our system is an effective schema for the differential diagnosis of otosclerosis in computed tomography examinations. •OtoModel detects otosclerosis in CT scans with high accuracy and interpretability.•EfficientNet-based system rivals experts in diagnosing otosclerosis presence/absence.•Gradient-weighted class activation mapping enhances system's interpretability.•Study confirms OtoModel's robustness in otosclerosis detection at the fenestra-anterior.•OtoModel significantly reduces diagnosis time compared to clinical experts.
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These authors contributed equally to this work.
ISSN:2405-8440
2405-8440
DOI:10.1016/j.heliyon.2024.e29670