Transfer Learning for Oral Cancer Detection using Microscopic Images
- URL: http://arxiv.org/abs/2011.11610v2
- Date: Fri, 9 Apr 2021 18:41:26 GMT
- Title: Transfer Learning for Oral Cancer Detection using Microscopic Images
- Authors: Rutwik Palaskar, Renu Vyas, Vilas Khedekar, Sangeeta Palaskar, Pranjal
Sahu
- Abstract summary: Oral cancer has more than 83% survival rate if detected in its early stages.
Deep learning techniques can detect patterns of oral cancer cells and can aid in its early detection.
We present the first results of neural networks for oral cancer detection using microscopic images.
- Score: 1.3929484165904207
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Oral cancer has more than 83% survival rate if detected in its early stages,
however, only 29% of cases are currently detected early. Deep learning
techniques can detect patterns of oral cancer cells and can aid in its early
detection. In this work, we present the first results of neural networks for
oral cancer detection using microscopic images. We compare numerous
state-of-the-art models via transfer learning approach and collect and release
an augmented dataset of high-quality microscopic images of oral cancer. We
present a comprehensive study of different models and report their performance
on this type of data. Overall, we obtain a 10-15% absolute improvement with
transfer learning methods compared to a simple Convolutional Neural Network
baseline. Ablation studies show the added benefit of data augmentation
techniques with finetuning for this task.
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