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Journal ArticleOpen Access

Benign and Malignant Oral Lesion Image Classification Using Fine-Tuned Transfer Learning Techniques

Author Affiliations
Daffodil International University, Jahangirnagar University, Woosong University, Yeungnam University
Published InDiagnostics
Year2023
Citations24

Abstract

Oral lesions are a prevalent manifestation of oral disease, and the timely identification of oral lesions is imperative for effective intervention. Fortunately, deep learning algorithms have shown great potential for automated lesion detection. The primary aim of this study was to employ deep learning-based image classification algorithms to identify oral lesions. We used three deep learning models, namely VGG19, DeIT, and MobileNet, to assess the efficacy of various categorization methods. To evaluate the accuracy and reliability of the models, we employed a dataset consisting of oral pictures encompassing two distinct categories: benign and malignant lesions. The experimental findings indicate that VGG19 and MobileNet attained an almost perfect accuracy rate of 100%, while DeIT achieved a slightly lower accuracy rate of…
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