4.7 Article

U-net model for brain extraction: Trained on humans for transfer to non-human primates

期刊

NEUROIMAGE
卷 235, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.118001

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资金

  1. National Institutes of Health (NIH BRAIN Initiative) [R01-MH111439, P50-MH109429, R24MH114806, RF1MH117428]
  2. NIMH
  3. NIMH [R01MH121735]
  4. California National Primate Research Center [P51OD011107]
  5. NIH [R01MH101555, R01MH081884, R01MH046729, P50MH084051]
  6. National Nature Science Foundation of China [81571300, 81527901, 31771174]
  7. NIH BRAIN Initiative [RF1MH117040]
  8. Wellcome Trust Investigator Award [108089/Z/15/Z]
  9. Medical Research Council [MR/M023990/1]
  10. [ZIAMH002918]
  11. Wellcome Trust [108089/Z/15/Z] Funding Source: Wellcome Trust

向作者/读者索取更多资源

Brain extraction, a crucial step in neuroimaging pipelines, is often challenging when applied to non-human primate (NHP) data. Recent advancements in deep learning have shown promising results in improving the accuracy of brain extraction in NHP imaging. By utilizing a transfer-learning framework and leveraging a large human imaging dataset, we were able to enhance the performance and generalizability of the model across multiple NHP research sites in the PRIME-DE consortium, outperforming traditional brain extraction routines. The publicly available model, code, and dataset repository provide a valuable resource for the neuroimaging community.
Brain extraction (a.k.a. skull stripping) is a fundamental step in the neuroimaging pipeline as it can affect the accuracy of downstream preprocess such as image registration, tissue classification, etc. Most brain extraction tools have been designed for and applied to human data and are often challenged by non-human primates (NHP) data. Amongst recent attempts to improve performance on NHP data, deep learning models appear to outperform the traditional tools. However, given the minimal sample size of most NHP studies and notable variations in data quality, the deep learning models are very rarely applied to multi-site samples in NHP imaging. To overcome this challenge, we used a transfer-learning framework that leverages a large human imaging dataset to pretrain a convolutional neural network (i.e. U-Net Model), and then transferred this to NHP data using a small NHP training sample. The resulting transfer-learning model converged faster and achieved more accurate performance than a similar U-Net Model trained exclusively on NHP samples. We improved the generalizability of the model by upgrading the transfer-learned model using additional training datasets from multiple research sites in the Primate Data-Exchange (PRIME-DE) consortium. Our final model outperformed brain extraction routines from popular MRI packages (AFNI, FSL, and FreeSurfer) across a heterogeneous sample from multiple sites in the PRIME-DE with less computational cost (20 s similar to 10 min). We also demonstrated the transfer-learning process enables the macaque model to be updated for use with scans from chimpanzees, marmosets, and other mammals (e.g. pig). Our model, code, and the skull-stripped mask repository of 136 macaque monkeys are publicly available for unrestricted use by the neuroimaging community at https://github.com/HumanBrainED/NHP-BrainExtraction.

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