MISPEL: A supervised deep learning harmonization method for multi-scanner neuroimaging data
Large-scale data obtained from aggregation of already collected multi-site neuroimaging datasets has brought benefits such as higher statistical power, reliability, and robustness to the studies. Despite these promises from growth in sample size, substantial technical variability stemming from diffe...
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Veröffentlicht in: | Medical image analysis 2023-10, Vol.89, p.102926-102926, Article 102926 |
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Sprache: | eng |
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Zusammenfassung: | Large-scale data obtained from aggregation of already collected multi-site neuroimaging datasets has brought benefits such as higher statistical power, reliability, and robustness to the studies. Despite these promises from growth in sample size, substantial technical variability stemming from differences in scanner specifications exists in the aggregated data and could inadvertently bias any downstream analyses on it. Such a challenge calls for data normalization and/or harmonization frameworks, in addition to comprehensive criteria to estimate the scanner-related variability and evaluate the harmonization frameworks. In this study, we propose MISPEL (Multi-scanner Image harmonization via Structure Preserving Embedding Learning), a supervised multi-scanner harmonization method that is naturally extendable to more than two scanners. We also designed a set of criteria to investigate the scanner-related technical variability and evaluate the harmonization techniques. As an essential requirement of our criteria, we introduced a multi-scanner matched dataset of 3T T1 images across four scanners, which, to the best of our knowledge is one of the few datasets of this kind. We also investigated our evaluations using two popular segmentation frameworks: FSL and segmentation in statistical parametric mapping (SPM). Lastly, we compared MISPEL to popular methods of normalization and harmonization, namely White Stripe, RAVEL, and CALAMITI. MISPEL outperformed these methods and is promising for many other neuroimaging modalities.
•We proposed MISPEL multi-scanner harmonization method.•We introduced a multi-scanner matched dataset of 3T T1 images.•We designed criteria to investigate scanner effects and evaluate harmonization.•We investigated the evaluation criteria using two popular segmentation frameworks.•We compared MISPEL to popular methods of normalization and harmonization.•MISPEL outperformed the competing methods and could be trained for other image modalities. |
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ISSN: | 1361-8415 1361-8423 1361-8423 |
DOI: | 10.1016/j.media.2023.102926 |