MOOSE 2.0 is here!
🎉 Announcing MOOSE 2.0: Leaner. Meaner. Stronger 🎉
Exciting times are ahead! We're thrilled to unveil MOOSE 2.0, taking 3D medical image segmentation to unprecedented heights! 🚀
🌟 Features at a Glance:
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Leaner: Optimized for efficiency, MOOSE 2.0 doesn't demand extensive resources. It's compatible with various OS and even works without high-end GPUs (a bit slower though).
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Meaner: A remarkable speed upgrade – we're talking about a version that's 5x faster than version 1! Designed for both clinical and preclinical (coming soon) settings, this is a segmentation powerhouse. ⚡
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Stronger: The strength of MOOSE 2.0 is undeniable, backed by Data-centric AI principles and a staggering 2.5k datasets.
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Versatility: Whether you prefer command-line tools for batch processing or using it as a library for your Python projects, MOOSE 2.0 offers unmatched flexibility. 😎
📌 Ready to Dive In?
Before you start, ensure you meet the requirements:
- OS Compatibility: Windows, Mac, or Linux.
- Memory: At least 32GB RAM.
- GPU: For enhanced speed, an NVIDIA GPU is recommended.
- Python: Version 3.9 or above.
🔧 Quick Installation:
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For Linux and MacOS:
python3 -m venv moose-env source moose-env/bin/activate pip install moosez
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For Windows:
python -m venv moose-env .\moose-env\Scripts\activate pip install moosez
✨ How to Use:
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As a Command-Line Tool:
moosez -d <path_to_image_dir> -m <model_name>
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As a Library in Python Projects:
from moosez import moose moose(model_name, input_dir, output_dir, accelerator)
📂 Adherence to the specified directory structure and naming conventions is crucial for the best results with MOOSE 2.0.
🎁 Contribute to MooseZ:
Join the MooseZ community! Add your custom nnUNetv2 models to MooseZ and enjoy the speed and efficiency it offers.
🔍 The 'Z' in our Python Packages:
Our signature 'Z' is a testament to our innovative spirit at QIMP. It signifies our quest for the unknown, always pushing the boundaries in medical imaging.
Dive into the complete README for a detailed exploration. Here's to redefining the future of medical image segmentation! Join us in this exhilarating journey with MOOSE 2.0. 🚀🔬
Happy segmenting! 💡🎊