Back to Search Start Over

Utilizing deep learning for automated detection of oral lesions: A multicenter study.

Authors :
Ye, Yong-Jin
Han, Ying
Liu, Yang
Guo, Zhen-Lin
Huang, Ming-Wei
Source :
Oral Oncology. Aug2024, Vol. 155, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

• Our model outperforms experienced experts in detecting oral cancer-related diseases. • Our model improved oral lesion diagnosis accuracy of general dentists and specialists. • It brought general dentists and specialists comparable to experienced experts. • Our app integrates our model for timely detection of oral cancer in smartphone photos. We aim to develop a YOLOX-based convolutional neural network model for the precise detection of multiple oral lesions, including OLP, OLK, and OSCC, in patient photos. We collected 1419 photos for model development and evaluation, conducting both a comparative analysis to gauge the model's capabilities and a multicenter evaluation to assess its diagnostic aid, where 24 participants from 14 centers across the nation were invited. We further integrated this model into a mobile application for rapid and accurate diagnostics. In the comparative analysis, our model overperformed the senior group (comprising three most experienced experts with more than 10 years of experience) in macro-average recall (85 % vs 77.5 %), precision (87.02 % vs 80.29 %), and specificity (95 % vs 92.5 %). In the multicenter model-assisted diagnosis evaluation, the dental, general, and community hospital groups showed significant improvement when aided by the model, reaching a level comparable to the senior group, with all macro-average metrics closely aligning or even surpassing with those of the latter (recall of 78.67 %, 74.72 %, 83.54 % vs 77.5 %, precision of 80.56 %, 76.42 %, 85.15 % vs 80.29 %, specificity of 92.89 %, 91.57 %, 94.51 % vs 92.5 %). Our model exhibited a high proficiency in detection of oral lesions, surpassing the performance of highly experienced specialists. The model can also help specialists and general dentists from dental and community hospitals in diagnosing oral lesions, reaching the level of highly experienced specialists. Moreover, our model's integration into a mobile application facilitated swift and precise diagnostic procedures. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
13688375
Volume :
155
Database :
Academic Search Index
Journal :
Oral Oncology
Publication Type :
Academic Journal
Accession number :
178069754
Full Text :
https://doi.org/10.1016/j.oraloncology.2024.106873