hackaton 2025

I recently took part in a hackathon at work. Here’s the idea I presented. I called my project Dentaface.


The goal of this project is to automate the detection of dental cavities with X-ray images or pictures using a deep learning model (Detectron2 RetinaNet) and expose it via a FastAPI-based backend.

It enables real-time caries detection through image uploads, combined with location-aware cost estimation based on geocoding.

As far as we know, this product has no competitor.

The application is managed using two Docker images, one for the backend-training and one for the frontend, making it easily migratable to Amazon ECS.

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Phase 1: Training RetinaNet

  • Train RetinaNet using open-source datasets such as Roboflow and Mendeley
  • Model is optimized for single class detectioncarie

The first phase of the project consisted in training the model on publicly available datasets, namely Mendeley and Roboflow. The fine-tuning involved adjusting the parameters and allowing the model to train over time.

Phase 2: User Interaction

  • Upload X-ray images through the website
  • Enter postal address
  • If caries are detected:
  • Receive a list of nearby dentists (via OpenStreetMap)
  • Receive treatment quotes

The second phase involved providing a backend application and a frontend interface that allow users to upload their X-ray images and, if needed, receive treatment quotes based on the geolocation of both the user and nearby dentists.

 

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