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---
title: VoXMED
emoji: 🐢
colorFrom: red
colorTo: yellow
sdk: streamlit
sdk_version: 1.37.1
app_file: app.py
pinned: false
---
Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference
## One-Step Respiratory Disease Classifier using Digital Stethoscope Sound - Readme
This project provides a user-friendly Streamlit application to classify respiratory diseases using audio data from a digital stethoscope.
**Features:**
- Uploads a digital stethoscope audio file (WAV or MP3 format).
- Extracts features from the audio using a pre-trained Audio Set Transfer (AST) model.
- Predicts the most likely respiratory disease based on the extracted features using a deep learning model.
- Displays informative messages and relevant images based on the prediction.
**Requirements:**
- Python 3.x
- Streamlit (`pip install streamlit`)
- TensorFlow (`pip install tensorflow`)
- PyTorch (`pip install torch`)
- torchaudio (`pip install torchaudio`)
- transformers (`pip install transformers`)
- Pillow (`pip install Pillow`)
**Instructions:**
1. Download the pre-trained AST model or Import it From the Hugging Face Website and disease classification model:
- Download the AST model files (e.g., `pytorch_model.bin`) from [https://huggingface.co/MIT/ast-finetuned-audioset-10-10-0.4593](https://huggingface.co/MIT/ast-finetuned-audioset-10-10-0.4593) (replace with the actual download URL). Place them in a directory.
- Download the disease classification model (`Model.h5`) and place it in the same directory as the AST model files.
2. Update file paths in the code:
- Unzip the Assets zip file
- Modify the following paths to reflect your actual locations:
- `'C:\\Users\\UserName\\Desktop\\RESPIRATORY DISEASE CLASSIFIER\\Model.h5'` (path to your disease classification model)
- `'C:\\Users\\UserName\\Desktop\\RESPIRATORY DISEASE CLASSIFIER\\Assets\\Healthy.gif'` (path to the healthy image)
- `'C:\\Users\\UserName\\Desktop\\RESPIRATORY-DISORDERS-.jpg'` (path to the generic respiratory issues image)
- `'C:\\Users\\UserName\\Desktop\\RESPIRATORY DISEASE CLASSIFIER\\Assets\\COPD.png'` (path to the COPD info image )
3. Run the application:
- Open a terminal and navigate to the directory containing the script (`APP.py`).
- Run the script using `streamlit run APP.py`.
4. Use the application:
- Upload an audio file from your digital stethoscope.
- The application will display the predicted disease, relevant information, and images.
- For COPD prediction, an additional information button can be clicked to display a detailed explanation.
**Disclaimer:**
This application is for informational purposes only and should not be used for medical diagnosis. Always consult a qualified healthcare professional for any health concerns.
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