Python package of the Oxynet project
Project description
Pyoxynet package
This README has been intentionally created for Pypi. Please find a more extended and detailed description of the project on the GitHub repository.
Documentation
Please refer to the extended documentation to read the docs.
Installation
Use the package manager pip to install pyoxynet.
pip install --upgrade pip
pip install pyoxynet
Test settings
import pyoxynet
# Load the TFL model
tfl_model = pyoxynet.load_tf_model()
# Make inference on a random input
test_tfl_model(tfl_model)
# Plot the inference on a test dataset
pyoxynet.test_pyoxynet()
Data required for the inference include oxygen uptake (VO2), exhaled CO2 (VCO2), minute ventilation (VE), end tidal O2 (PetO2) and CO2(PetCO2), and ventilatory equivalents (VEVO2 and VEVCO2):
VO2 | VCO2 | VE | PetO2 | PetCO2 | VEVO2 | VEVCO2 |
---|---|---|---|---|---|---|
This structure might evolve with different package version, so please refer to the main GitHub repository README for the latest structure details.
Contributing
Pull requests are welcome. For major changes, please open an issue first to discuss what you would like to change.
License
Please refer to the LICENSE file at the GitHub repository.
Disclaimer
All content found on this website, including: text, images, tables, or other formats are created for informational purposes only. The information provided by this software is not intended to be a substitute for professional medical advice, diagnosis, or treatment. Always seek the advice of your physician or other qualified health provider with any questions you may have regarding a medical condition. Never disregard professional medical advice or delay in seeking it because of something has been provided by this software.
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