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Published in: Journal of Medical Systems 1/2023

01-12-2023 | Original Paper

Continuous Automated Analysis Workflow for MRS Studies

Authors: Helge Jörn Zöllner, Christopher W. Davies-Jenkins, Erik G. Lee, Timothy J. Hendrickson, William T. Clarke, Richard A. E. Edden, Jessica L. Wisnowski, Aaron T. Gudmundson, Georg Oeltzschner

Published in: Journal of Medical Systems | Issue 1/2023

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Abstract

Magnetic resonance spectroscopy (MRS) can non-invasively measure levels of endogenous metabolites in living tissue and is of great interest to neuroscience and clinical research. To this day, MRS data analysis workflows differ substantially between groups, frequently requiring many manual steps to be performed on individual datasets, e.g., data renaming/sorting, manual execution of analysis scripts, and manual assessment of success/failure. Manual analysis practices are a substantial barrier to wider uptake of MRS. They also increase the likelihood of human error and prevent deployment of MRS at large scale. Here, we demonstrate an end-to-end workflow for fully automated data uptake, processing, and quality review.
The proposed continuous automated MRS analysis workflow integrates several recent innovations in MRS data and file storage conventions. They are efficiently deployed by a directory monitoring service that automatically triggers the following steps upon arrival of a new raw MRS dataset in a project folder: (1) conversion from proprietary manufacturer file formats into the universal format NIfTI-MRS; (2) consistent file system organization according to the data accumulation logic standard BIDS-MRS; (3) executing a command-line executable of our open-source end-to-end analysis software Osprey; (4) e-mail delivery of a quality control summary report for all analysis steps.
The automated architecture successfully completed for a demonstration dataset. The only manual step required was to copy a raw data folder into a monitored directory.
Continuous automated analysis of MRS data can reduce the burden of manual data analysis and quality control, particularly for non-expert users and multi-center or large-scale studies and offers considerable economic advantages.
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Literature
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go back to reference Stefan D, Cesare FD, Andrasescu A, et al. Quantitation of magnetic resonance spectroscopy signals: the jMRUI software package. Meas Sci Technol. 2009;20(10):104035. doi:2009090503131100CrossRef Stefan D, Cesare FD, Andrasescu A, et al. Quantitation of magnetic resonance spectroscopy signals: the jMRUI software package. Meas Sci Technol. 2009;20(10):104035. doi:2009090503131100CrossRef
Metadata
Title
Continuous Automated Analysis Workflow for MRS Studies
Authors
Helge Jörn Zöllner
Christopher W. Davies-Jenkins
Erik G. Lee
Timothy J. Hendrickson
William T. Clarke
Richard A. E. Edden
Jessica L. Wisnowski
Aaron T. Gudmundson
Georg Oeltzschner
Publication date
01-12-2023
Publisher
Springer US
Published in
Journal of Medical Systems / Issue 1/2023
Print ISSN: 0148-5598
Electronic ISSN: 1573-689X
DOI
https://doi.org/10.1007/s10916-023-01969-6

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