Bone Fracture Detection using deep learning (Resnet50) - Final project in the fourth year of the degree
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Updated
Jan 20, 2023 - Python
Bone Fracture Detection using deep learning (Resnet50) - Final project in the fourth year of the degree
MediScan: AI-powered bone fracture detection system achieving 99.8% accuracy through deep learning. Features real-time X-ray analysis, transparent Grad-CAM visualizations, and clinical integration tools. Built with Python/FastAPI backend and responsive HTML/CSS frontend, making advanced medical diagnostics more accessible to healthcare providers.
This repository contains code the official code for the paper "Pediatric Wrist Fracture Detection in X-rays via YOLOv10 Algorithm and Dual Label Assignment System"
This project in a X-ray bone fracture detection App protoype to assist medical professionals to fast-forward the diagnosis process, it runs on the user's device.
Bone fracture detection in Xray images 🙋
Bone fracture detection from X-ray image using CNN (EfficientNetB3 architecture)
Bone-fracture classification with a focus on robustness and interpretability.
Deep learning models for automated fracture detection and body part classification in musculoskeletal radiographs using the MURA dataset. Includes CNN, ResNet50, DenseNet169, and EfficientNet-B0 architectures in a multi-task learning setup.
one Fracture Detection in X-ray Images using YOLOv8 — A deep learning project for medical imaging, fracture classification, and automated healthcare diagnosis.(this is a practice project )
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