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Synthetic data in generalizable, learning-based neuroimaging

Karthnik Gopinath, Andrew Hoopes, Daniel C Alexander, Steven E Arnold, Benjamin Billot, Adrià Casamitjana, You Cheng, Russ Yue Zhi Chua, Brian L Edlow, Bruce Fischl, Harshvardhan Gazula, C Dirk Keene, Seunghoi Kim, W Taylor Kimberly, Sonia Laguna, Kathleen E Larson, Koen Van Leemput, Oula Puonti, Livia Rodrigues, Matthew RosenHenry F J Tregidgo, Divya Varadarajan, Sean I Young, Adrian V Dalca, Juan Eugenio Iglesias

16 Citations (Scopus)

Abstract

Synthetic data have emerged as an attractive option for developing machine-learning methods in human neuroimaging, particularly in magnetic resonance imaging (MRI)—a modality where image contrast depends enormously on acquisition hardware and parameters. This retrospective paper reviews a family of recently proposed methods, based on synthetic data, for generalizable machine learning in brain MRI analysis. Central to this framework is the concept of domain randomization, which involves training neural networks on a vastly diverse array of synthetically generated images with random contrast properties. This technique has enabled robust, adaptable models that are capable of handling diverse MRI contrasts, resolutions, and pathologies, while working out-of-the-box, without retraining. We have successfully applied this method to tasks such as whole-brain segmentation (SynthSeg), skull-stripping (SynthStrip), registration (SynthMorph, EasyReg), super-resolution, and MR contrast transfer (SynthSR). Beyond these applications, the paper discusses other possible use cases and future work in our methodology. Neural networks trained with synthetic data enable the analysis of clinical MRI, including large retrospective datasets, while greatly alleviating (and sometimes eliminating) the need for substantial labeled datasets, and offer enormous potential as robust tools to address various research goals.
Original languageEnglish
JournalImaging Neuroscience
Volume2
Pages (from-to)1-22
Number of pages22
ISSN2837-6056
DOIs
Publication statusPublished - 19 Nov 2024

Keywords

  • EasyReg
  • SynthMorph
  • SynthSR
  • SynthSeg
  • SynthStrip

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