MSIght is an open-source Python-based algorithm designed for proteome characterization from the automated integration of histology, LC-MS/MS, and MSI datasets.
Project description
MSIght
MSIght is a program produced by the Lingjun Li Lab at the University of Wisconsin-Madison for automated integration of H&E, MSI, and LC-MS/MS datasets
Getting started
Installation
You can install MSIght directly from PyPI:
pip install msight
How to Cite
Fields, L.; Miles, H. N.; Adrian, A. E.; Patrenets, E.; Ricke, W. A.; Li, L. (2025). MSIght: A Modular Platform for Improved Confidence in Global, Untargeted Mass Spectrometry Imaging Annotation. J. Proteome Res. https://doi.org/10.1021/acs.jproteome.4c01140
Major release notes
Version 0.0.1 (Released 9/17/2024)
- Initial release
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