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Densenet121 Res224 Rsna

Developed by torchxrayvision
A convolutional neural network based on the DenseNet architecture, specifically designed for X-ray image classification tasks, achieving dense inter-layer connections through dense blocks.
Downloads 16
Release Time : 6/21/2022

Model Overview

This model is a pre-trained DenseNet121 architecture for classifying chest X-ray images, capable of identifying multiple chest diseases.

Model Features

Densely Connected Architecture
Utilizes dense block design where all layers are directly interconnected, enhancing feature transfer and reuse.
Multi-disease Recognition
Capable of identifying multiple chest diseases, outputting 18 different pathology classification results.
Pre-trained Model
Pre-trained on multiple public chest X-ray datasets, ready for direct inference or fine-tuning.

Model Capabilities

Chest X-ray Image Classification
Multi-label Disease Recognition
Medical Image Analysis

Use Cases

Medical Diagnosis Assistance
Chest Disease Screening
Assists doctors in identifying abnormalities in chest X-rays, such as pneumonia, pneumothorax, etc.
Provides probability predictions for multiple diseases, aiding doctors in rapid screening of potential issues.
Medical Research
Disease Pattern Analysis
Researchers can use this model to analyze the manifestation patterns of different diseases in X-ray images.
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