Other MALDI-ToF MS Ressources: Difference between revisions
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<li> [https://maldibot.ar/ MALDI-BOT] - an AI assistant specialized in interpretation of mass spectrometry results (RENAEM, Argentina) | <li> [https://maldibot.ar/ MALDI-BOT] - an AI assistant specialized in interpretation of mass spectrometry results (RENAEM, Argentina) | ||
<li> [https://msi.happy-dev.fr// MSI Happy] - online identification of arthropods, fungi, amanita, alternaria, and bacteria. The platform was developed by Assistance Publique-Hôpitaux de Paris, Sorbonne University, and the BCCM/IHEM/Sciensano collection in Brussels. | |||
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Revision as of 11:33, 1 May 2026
Below is a list of resources that may be useful for MALDI-ToF MS-based identification of bacteria. This list is not exhaustive and will be updated regularly. Please report outdated links (lasch at microbe-ms dot com).
- MALDI Biotyper (MBT), a commercial solution for microbial research from Bruker Daltonics
- VITEK MS PRIME MALDI-ToF mass spectrometry from bioMérieux for routine microbial identification (commercial)
- MicrobeNet, a free online resource maintained by the Centers for Disease Control and Prevention (CDC, Atlanta, USA)
- Open Source Spectrometry - Matthias Mailänder's Blog (OpenChrom, Lablicate)
- MALDI-UP - a free catalogue enabling the exchange of MALDI-TOF-MS spectra between users working in the field of microbiology, food analytics and in other fields, hosted at the CVUA Stuttgart
- Biospean - a freeware tool for processing spectra from MALDI intact cell/spore mass spectrometry
- IDBac - a place to ID bacteria, organize strain collections & ask research questions
- Mabritec & Mabriteccentral - comprehensive in silico MALDI-ToF MS databases as attractive alternatives for fast, accurate and cost-effective germ identification
- MALDI-BOT - an AI assistant specialized in interpretation of mass spectrometry results (RENAEM, Argentina)
- MSI Happy - online identification of arthropods, fungi, amanita, alternaria, and bacteria. The platform was developed by Assistance Publique-Hôpitaux de Paris, Sorbonne University, and the BCCM/IHEM/Sciensano collection in Brussels.