Stanislav S. Rubakhin
Affiliations: | University of Illinois, Urbana-Champaign, Urbana-Champaign, IL |
Area:
NeurochemistryGoogle:
"Stanislav Rubakhin"Mean distance: 18.29 (cluster 11) | S | N | B | C | P |
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Publications
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Su P, Hollas MAR, Butun FA, et al. (2024) Single Cell Analysis of Proteoforms. Journal of Proteome Research |
Xie YR, Castro DC, Rubakhin SS, et al. (2024) Multiscale biochemical mapping of the brain through deep-learning-enhanced high-throughput mass spectrometry. Nature Methods |
Lee CJ, Lee DK, Wei IA, et al. (2023) Relations between Glucose and d-Amino Acids in the Modulation of Biochemical and Functional Properties of Rodent Islets of Langerhans. Acs Omega. 8: 47723-47734 |
Tan Y, De La Toba E, Rubakhin SS, et al. (2023) NanoLC-timsTOF-Assisted Analysis of Glycated Albumin in Diabetes-Affected Plasma and Tears. Journal of the American Society For Mass Spectrometry |
Qiu TA, Lee CJ, Huang C, et al. (2023) Biodistribution and racemization of gut-absorbed L/D-alanine in germ-free mice. Communications Biology. 6: 851 |
Xie YR, Castro DC, Rubakhin SS, et al. (2023) Integrative Multiscale Biochemical Mapping of the Brain via Deep-Learning-Enhanced High-Throughput Mass Spectrometry. Biorxiv : the Preprint Server For Biology |
Castro DC, Smith KW, Norsworthy MD, et al. (2023) Single-Cell and Subcellular Analysis Using Ultrahigh Resolution 21 T MALDI FTICR Mass Spectrometry. Analytical Chemistry |
Lee DK, Rubakhin SS, Sweedler JV. (2023) Chemical Decrosslinking-Based Peptide Characterization of Formaldehyde-Fixed Rat Pancreas Using Fluorescence-Guided Single-Cell Mass Spectrometry. Analytical Chemistry |
Eberwine J, Kim J, Anafi RC, et al. (2023) Subcellular omics: a new frontier pushing the limits of resolution, complexity and throughput. Nature Methods. 20: 331-335 |
Xie YR, Chari VK, Castro DC, et al. (2023) Data-Driven and Machine Learning-Based Framework for Image-Guided Single-Cell Mass Spectrometry. Journal of Proteome Research. 22: 491-500 |