Scientific Reports (Feb 2024)

Automated neonatal nnU-Net brain MRI extractor trained on a large multi-institutional dataset

  • Joshua V. Chen,
  • Yi Li,
  • Felicia Tang,
  • Gunvant Chaudhari,
  • Christopher Lew,
  • Amanda Lee,
  • Andreas M. Rauschecker,
  • Aden P. Haskell-Mendoza,
  • Yvonne W. Wu,
  • Evan Calabrese

DOI
https://doi.org/10.1038/s41598-024-54436-8
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 10

Abstract

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Abstract Brain extraction, or skull-stripping, is an essential data preprocessing step for machine learning approaches to brain MRI analysis. Currently, there are limited extraction algorithms for the neonatal brain. We aim to adapt an established deep learning algorithm for the automatic segmentation of neonatal brains from MRI, trained on a large multi-institutional dataset for improved generalizability across image acquisition parameters. Our model, ANUBEX (automated neonatal nnU-Net brain MRI extractor), was designed using nnU-Net and was trained on a subset of participants (N = 433) enrolled in the High-dose Erythropoietin for Asphyxia and Encephalopathy (HEAL) study. We compared the performance of our model to five publicly available models (BET, BSE, CABINET, iBEATv2, ROBEX) across conventional and machine learning methods, tested on two public datasets (NIH and dHCP). We found that our model had a significantly higher Dice score on the aggregate of both data sets and comparable or significantly higher Dice scores on the NIH (low-resolution) and dHCP (high-resolution) datasets independently. ANUBEX performs similarly when trained on sequence-agnostic or motion-degraded MRI, but slightly worse on preterm brains. In conclusion, we created an automatic deep learning-based neonatal brain extraction algorithm that demonstrates accurate performance with both high- and low-resolution MRIs with fast computation time.