//
sign in
Profile
by @danabra.mov
Profile
by @dansshadow.bsky.social
Profile
by @jimpick.com
AviHandle
by @danabra.mov
AviHandle
by @dansshadow.bsky.social
AviHandle
by @katherine.computer
EventsList
by @katherine.computer
ProfileHeader
by @dansshadow.bsky.social
ProfileHeader
by @danabra.mov
ProfileMedia
by @danabra.mov
ProfilePlays
by @danabra.mov
ProfilePosts
by @danabra.mov
ProfilePosts
by @dansshadow.bsky.social
ProfileReplies
by @danabra.mov
Record
by @atsui.org
Skircle
by @danabra.mov
StreamPlacePlaylist
by @katherine.computer
+ new component
Profile
Loading...








Jan Grau just opened the 7th Central German Meeting on Bioinformatics in Halle, organized by the Martin-Luther-University Halle-Wittenberg, in particular the Institute of Computer Science & the Institute of Agricultural and Nutritional Sciences, and the Leibniz Institute of Plant Biochemistry
2mo
Lange Nacht, die Wissen schafft am 4. Juli am IPB. Feines Experimentierprogramm für Groß und Klein. Mit Quiz und Preisen und Nachwuchsforscherdiplom. Mehr Infos: www.ipb-halle.de/oeffentlichk...
Jun 16, 2025
#Vacancy: We're offering a position as a Research associate in #ComputationalMetabolomics in @sneumann 's group! More information: ipb-halle.de/en/career/jo... #Bioinformatics #Metabolomics #ComputationalBiochemistry #scijobs Please share this post !
Nov 15, 2023
Steffen Neumann
Steffen Neumann
Project 14 here at the #BioHackEU25 will work to assess and improve the state of #mzTab-M for #Metabolomics over the next few days. Plus having fun meeting all the other attendees here near Berlin
7mo
Hi, in case your phone didn't pick up the QR code to the slides of my Hitch-Hikers Guide to Computational Metabolomics talk this morning at #Metabolomics2025, featuring #xcms, #massbank, not #metfrag but #CASMI and #MetFamily, please find them at doi.org/10.5281/zeno...
Out now! xcms in Peak Form: Now Anchoring a Complete Metabolomics Data Preprocessing and Analysis Software Ecosystem doi.org/10.1021/acs.... with Phillipine and @jorainer.bsky.social (EURAC), @metabomichael.bsky.social, Hendrik and Norman from @ipbhalle.bsky.social, @janstanstrup.bsky.social, et al.
🚀 We’ve launched the new MassBank! Now live at massbank.eu & massbank.jp — redesigned with a faster backend, better search, and powerful tools for exploring & sharing mass spectral data. Enjoy the fresh experience! Feedback and ideas welcome, please post them on github.com/MassBank/Mas...
As mentioned in my talk yesterday at #MetSoc2025,@[email protected] and myself offered a bottle of wine to the winners of #CASMI 2016 contest. Pleased to confirm eventual delivery of a fine Czech Merlot to www.linkedin.com/in/tobias-ki... for winningCategory 3: Full Information.
IPB Halle
Zhixu Ni presenting LipidCXSMILES developed together with @egonw.mastodon.social.ap.brid.gy and #epilipidnet and #lipidmaps here at #MetSoc2025 bridging real lipid chemical structures, and the uncertainty because MS gives only so much structural hints.
11mo
6mo
11mo
11mo
11mo
Steffen Neumann
High-quality data preprocessing is essential for untargeted metabolomics experiments, where increasing data set scale and complexity demand adaptable, robust, and reproducible software solutions. Modern preprocessing tools must evolve to integrate seamlessly with downstream analysis platforms, ensuring efficient and streamlined workflows. Since its introduction in 2005, the xcms R package has become one of the most widely used tools for LC-MS data preprocessing. Developed through an open-source, community-driven approach, xcms maintains long-term stability while continuously expanding its capabilities and accessibility. We present recent advancements that position xcms as a central component of a modular and interoperable software ecosystem for metabolomics data analysis. Key improvements include enhanced scalability, enabling the processing of large-scale experiments with thousands of samples on standard computing hardware. These developments empower users to build comprehensive, customizable, and reproducible workflows tailored to diverse experimental designs and analytical needs. An expanding collection of tutorials, documentation, and teaching materials further supports both new and experienced users in leveraging broader R and Bioconductor ecosystems. These resources facilitate the integration of statistical modeling, visualization tools, and domain-specific packages, extending the reach and impact of xcms workflows. Together, these enhancements solidify xcms as a cornerstone of modern metabolomics research.
doi.org
xcms in Peak Form: Now Anchoring a Complete Metabolomics Data Preprocessing and Analysis Software Ecosystem
Steffen Neumann
Steffen Neumann
Steffen Neumann
Steffen Neumann
Steffen Neumann