
High-Throughput Mass Spectrometry Imaging with Dynamic Sparse Sampling
Author(s) -
Hang Hu,
David Helminiak,
Manxi Yang,
Daisy Unsihuay,
Ryan T. Hilger,
Dong Hye Ye,
Julia Laskin
Publication year - 2022
Publication title -
acs measurement science au
Language(s) - English
Resource type - Journals
ISSN - 2694-250X
DOI - 10.1021/acsmeasuresciau.2c00031
Subject(s) - mass spectrometry imaging , throughput , computer science , data acquisition , sampling (signal processing) , mass spectrometry , software , focus (optics) , computer hardware , artificial intelligence , computational science , chemistry , computer vision , optics , physics , telecommunications , filter (signal processing) , chromatography , wireless , programming language , operating system
Mass spectrometry imaging (MSI) enables label-free mapping of hundreds of molecules in biological samples with high sensitivity and unprecedented specificity. Conventional MSI experiments are relatively slow, limiting their utility for applications requiring rapid data acquisition, such as intraoperative tissue analysis or 3D imaging. Recent advances in MSI technology focus on improving the spatial resolution and molecular coverage, further increasing the acquisition time. Herein, a deep learning approach for dynamic sampling (DLADS) was employed to reduce the number of required measurements, thereby improving the throughput of MSI experiments in comparison with conventional methods. DLADS trains a deep learning model to dynamically predict molecularly informative tissue locations for active mass spectra sampling and reconstructs high-fidelity molecular images using only the sparsely sampled information. Experimental hardware and software integration of DLADS with nanospray desorption electrospray ionization (nano-DESI) MSI is reported for the first time, which demonstrates a 2.3-fold improvement in throughput for a linewise acquisition mode. Meanwhile, simulations indicate that a 5-10-fold throughput improvement may be achieved using the pointwise acquisition mode.