IVCVLGMLSep 18, 2019

Automated detection of oral pre-cancerous tongue lesions using deep learning for early diagnosis of oral cavity cancer

arXiv:1909.08987v1103 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem of expensive and manual screening for oral cancer, especially in developing countries, by offering an automated, low-cost alternative, though it is incremental as it applies existing deep learning methods to a new medical dataset.

The study tackled early detection of oral cavity cancer by applying deep learning models to identify pre-cancerous tongue lesions from photographic images, achieving up to 0.98 accuracy in classifying benign vs. pre-cancerous lesions and 0.97 accuracy in distinguishing five lesion types.

Discovering oral cavity cancer (OCC) at an early stage is an effective way to increase patient survival rate. However, current initial screening process is done manually and is expensive for the average individual, especially in developing countries worldwide. This problem is further compounded due to the lack of specialists in such areas. Automating the initial screening process using artificial intelligence (AI) to detect pre-cancerous lesions can prove to be an effective and inexpensive technique that would allow patients to be triaged accordingly to receive appropriate clinical management. In this study, we have applied and evaluated the efficacy of six deep convolutional neural network (DCNN) models using transfer learning, for identifying pre-cancerous tongue lesions directly using a small data set of clinically annotated photographic images to diagnose early signs of OCC. DCNN model based on Vgg19 architecture was able to differentiate between benign and pre-cancerous tongue lesions with a mean classification accuracy of 0.98, sensitivity 0.89 and specificity 0.97. Additionally, the ResNet50 DCNN model was able to distinguish between five types of tongue lesions i.e. hairy tongue, fissured tongue, geographic tongue, strawberry tongue and oral hairy leukoplakia with a mean classification accuracy of 0.97. Preliminary results using an (AI+Physician) ensemble model demonstrate that an automated initial screening process of tongue lesions using DCNNs can achieve near-human level classification performance for diagnosing early signs of OCC in patients.

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