Deep learning model trained on mobile phone-acquired frozen section images effectively detects basal cell carcinoma
Junli Cao, B.S., Junyan Wu, M.S., Jing W. Zhang, M.D., Ph.D., Jay J., Ye, M.D., Ph.D., Limin Yu, M.D., M.S

TL;DR
This study demonstrates that a deep learning model trained on mobile phone-acquired frozen section images can accurately detect basal cell carcinoma, showing promise for real-time intraoperative pathology support.
Contribution
The paper presents a novel application of deep learning to mobile phone images for intraoperative cancer detection, achieving high accuracy and potential for mobile deployment.
Findings
AUC of 0.99 for ROC curve at pixel level
Slide-level classification accuracy of 96%
Model suitable for real-time mobile app deployment
Abstract
Background: Margin assessment of basal cell carcinoma using the frozen section is a common task of pathology intraoperative consultation. Although frequently straight-forward, the determination of the presence or absence of basal cell carcinoma on the tissue sections can sometimes be challenging. We explore if a deep learning model trained on mobile phone-acquired frozen section images can have adequate performance for future deployment. Materials and Methods: One thousand two hundred and forty-one (1241) images of frozen sections performed for basal cell carcinoma margin status were acquired using mobile phones. The photos were taken at 100x magnification (10x objective). The images were downscaled from a 4032 x 3024 pixel resolution to 576 x 432 pixel resolution. Semantic segmentation algorithm Deeplab V3 with Xception backbone was used for model training. Results: The model uses an…
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Taxonomy
TopicsAI in cancer detection · Cutaneous Melanoma Detection and Management
MethodsDepthwise Convolution · Conditional Random Field · Average Pooling · Dilated Convolution · Max Pooling · Softmax · Feedforward Network · 1x1 Convolution · *Communicated@Fast*How Do I Communicate to Expedia? · Residual Connection
