Invention Grant
- Patent Title: Correlative multimodal chemical imaging via machine learning
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Application No.: US17337919Application Date: 2021-06-03
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Publication No.: US12057304B2Publication Date: 2024-08-06
- Inventor: Olga S. Ovchinnikova , Anton V. Ievlev , Matthias Lorenz , Nikolay Borodinov , Steven T. King
- Applicant: UT-Battelle, LLC
- Applicant Address: US TN Oak Ridge
- Assignee: UT-Battelle, LLC,University of Tennessee Research Foundation
- Current Assignee: UT-Battelle, LLC,University of Tennessee Research Foundation
- Current Assignee Address: US TN Oak Ridge; US TN Knoxville
- Agency: Scully, Scott, Murphy & Presser, P.C.
- Main IPC: H01J49/00
- IPC: H01J49/00 ; G01N23/2258 ; G06N5/04 ; G06N20/00 ; H01J49/16

Abstract:
Machine learning approach can combine mass spectral imaging (MSI) techniques, one with low spatial resolution but intact molecular spectra and the other with nanometer spatial resolution but fragmented molecular signatures, to predict molecular MSI spectra with submicron spatial resolution. The machine learning approach can perform transformations on the spectral image data of the two MSI techniques to reduce dimensionality, and using a correlation technique, find relationships between the transformed spectral image data. The determined relationships can be used to generate MSI spectra of desired resolution.
Public/Granted literature
- US20210384021A1 CORRELATIVE MULTIMODAL CHEMICAL IMAGING VIA MACHINE LEARNING Public/Granted day:2021-12-09
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