Machine Learning for Brain MRI Data Harmonisation: A Systematic Review

Author:

Wen Grace1,Shim Vickie12,Holdsworth Samantha Jane234ORCID,Fernandez Justin1,Qiao Miao5,Kasabov Nikola1678ORCID,Wang Alan124

Affiliation:

1. Auckland Bioengineering Institute, University of Auckland, Auckland 1142, New Zealand

2. Centre for Brain Research, University of Auckland, Auckland 1142, New Zealand

3. Mātai Medical Research Institute, Tairāwhiti-Gisborne 4010, New Zealand

4. Department of Anatomy & Medical Imaging, Faculty of Medical and Health Sciences, University of Auckland, Auckland 1142, New Zealand

5. Department of Computer Science, University of Auckland, Auckland 1142, New Zealand

6. Knowledge Engineering and Discovery Research Institute, Auckland University of Technology, Auckland 1010, New Zealand

7. Intelligent Systems Research Centre, Ulster University, Londonderry BT52 1SA, UK

8. Institute for Information and Communication Technologies, Bulgarian Academy of Sciences, 1113 Sofia, Bulgaria

Abstract

Background: Magnetic Resonance Imaging (MRI) data collected from multiple centres can be heterogeneous due to factors such as the scanner used and the site location. To reduce this heterogeneity, the data needs to be harmonised. In recent years, machine learning (ML) has been used to solve different types of problems related to MRI data, showing great promise. Objective: This study explores how well various ML algorithms perform in harmonising MRI data, both implicitly and explicitly, by summarising the findings in relevant peer-reviewed articles. Furthermore, it provides guidelines for the use of current methods and identifies potential future research directions. Method: This review covers articles published through PubMed, Web of Science, and IEEE databases through June 2022. Data from studies were analysed based on the criteria of Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA). Quality assessment questions were derived to assess the quality of the included publications. Results: a total of 41 articles published between 2015 and 2022 were identified and analysed. In the review, MRI data has been found to be harmonised either in an implicit (n = 21) or an explicit (n = 20) way. Three MRI modalities were identified: structural MRI (n = 28), diffusion MRI (n = 7) and functional MRI (n = 6). Conclusion: Various ML techniques have been employed to harmonise different types of MRI data. There is currently a lack of consistent evaluation methods and metrics used across studies, and it is recommended that the issue be addressed in future studies. Harmonisation of MRI data using ML shows promises in improving performance for ML downstream tasks, while caution should be exercised when using ML-harmonised data for direct interpretation.

Funder

Ministry of Business, Innovation and Employment (MBIE) of New Zealand

Health Research Council of New Zealand

Publisher

MDPI AG

Subject

Bioengineering

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