MetGenX is a structure-informed encoder-decoder neural network that enables efficient and controllable generation of metabolite structures directly from MS2 spectra. By reformulating the spectrum-to-structure task as a structure-to-structure generation problem, MetGenX significantly improves generation accuracy and chemical space coverage. This dataset collection covers NIST plasma and Mouse liver with 200 metabolite standards spiked. This dataset provide a valuable resource for the development, benchmarking, and validation of metabolomics annotation algorithms across diverse biological matrices.
[doi:10.25345/C5H12VN3K]
[dataset license: CC0 1.0 Universal (CC0 1.0)]
Keywords: metabolomics ; NIST plasma ; mouse liver ; DatasetType:Metabolomics
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Principal Investigators: (in alphabetical order) |
Zhu Zheng-Jiang, University Of Chinese Academy Of Sciences, China |
| Submitting User: | Water |
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