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Deep learning can accelerate and quantify simulated localized correlated spectroscopy

Authors :
Iqbal, Zohaib
Iqbal, Zohaib
Nguyen, Dan
Thomas, Michael Albert
Jiang, Steve
Iqbal, Zohaib
Iqbal, Zohaib
Nguyen, Dan
Thomas, Michael Albert
Jiang, Steve
Source :
SCIENTIFIC REPORTS; vol 11, iss 1; 2045-2322
Publication Year :
2021

Abstract

Nuclear magnetic resonance spectroscopy (MRS) allows for the determination of atomic structures and concentrations of different chemicals in a biochemical sample of interest. MRS is used in vivo clinically to aid in the diagnosis of several pathologies that affect metabolic pathways in the body. Typically, this experiment produces a one dimensional (1D) 1H spectrum containing several peaks that are well associated with biochemicals, or metabolites. However, since many of these peaks overlap, distinguishing chemicals with similar atomic structures becomes much more challenging. One technique capable of overcoming this issue is the localized correlated spectroscopy (L-COSY) experiment, which acquires a second spectral dimension and spreads overlapping signal across this second dimension. Unfortunately, the acquisition of a two dimensional (2D) spectroscopy experiment is extremely time consuming. Furthermore, quantitation of a 2D spectrum is more complex. Recently, artificial intelligence has emerged in the field of medicine as a powerful force capable of diagnosing disease, aiding in treatment, and even predicting treatment outcome. In this study, we utilize deep learning to: 1) accelerate the L-COSY experiment and 2) quantify L-COSY spectra. We demonstrate that our deep learning model greatly outperforms compressed sensing based reconstruction of L-COSY spectra at higher acceleration factors. Specifically, at four-fold acceleration, our method has less than 5% normalized mean squared error, whereas compressed sensing yields 20% normalized mean squared error. We also show that at low SNR (25% noise compared to maximum signal), our deep learning model has less than 8% normalized mean squared error for quantitation of L-COSY spectra. These pilot simulation results appear promising and may help improve the efficiency and accuracy of L-COSY experiments in the future.

Details

Database :
OAIster
Journal :
SCIENTIFIC REPORTS; vol 11, iss 1; 2045-2322
Notes :
application/pdf, SCIENTIFIC REPORTS vol 11, iss 1 2045-2322
Publication Type :
Electronic Resource
Accession number :
edsoai.on1367475592
Document Type :
Electronic Resource