CLASEG: advanced multiclassification and segmentation for differential diagnosis of oral lesions using deep learning
Date
2025-06-02
Journal Title
Journal ISSN
Volume Title
Type
Article
Publisher
Nature Research
Series Info
Scientific Reports ; volume 15, Article number: 23016 , (2025)
Scientific Journal Rankings
Abstract
Oral cancer has a high mortality rate primarily due to delayed diagnoses, highlighting the need for
early detection of oral lesions. This study presents a novel deep learning framework for multi-class
classification-based segmentation, enabling accurate differential diagnosis of 14 common oral
lesions—benign, pre-malignant, and malignant—across various mouth locations using photographic
images. A dataset of 2,072 clinical images was used to train and validate the model. The proposed
framework integrates EfficientNet-B3 for classification and ResNet-101-based Mask R-CNN for
segmentation, achieving a classification accuracy of 74.49% and segmentation performance with
an average precision (AP50) of 72.18. The gradient-weighted class activation map technique was
applied to the model outputs to enable visualization of the specific areas that were most influential
for predictive decisions made by the model. This significantly improves upon the state-of-the-art,
where previous models achieved lower segmentation accuracy (AP50<50%). The framework not only
classifies the lesion type but also delineates the lesion boundaries with high precision, which is critical
for early detection and differential diagnosis in clinical practice.
Description
SJR 2024
0.874 Q1
H-Index
347
Keywords
Oral lesion, Oral cancer, Classification, Segmentation, Deep learning, Early detection
Citation
Al-Ali, A., Hamdi, A., Elshrif, M., Isufaj, K., Shaban, K., Chauvin, P., Madathil, S., Daer, A., Tamimi, F., & Ba-Hattab, R. (2025). CLASEG: advanced multiclassification and segmentation for differential diagnosis of oral lesions using deep learning. Scientific Reports, 15(1). https://doi.org/10.1038/s41598-025-03268-1