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BIBSNet: A Deep Learning Baby Image Brain Segmentation Network for MRI Scans.
Hendrickson, Timothy J; Reiners, Paul; Moore, Lucille A; Perrone, Anders J; Alexopoulos, Dimitrios; Lee, Erik G; Styner, Martin; Kardan, Omid; Chamberlain, Taylor A; Mummaneni, Anurima; Caldas, Henrique A; Bower, Brad; Stoyell, Sally; Martin, Tabitha; Sung, Sooyeon; Fair, Ermias; Uriarte-Lopez, Jonathan; Rueter, Amanda R; Yacoub, Essa; Rosenberg, Monica D; Smyser, Christopher D; Elison, Jed T; Graham, Alice; Fair, Damien A; Feczko, Eric.
Afiliação
  • Hendrickson TJ; Minnesota Supercomputing Institute, University of Minnesota.
  • Reiners P; Masonic Institute for the Developing Brain, University of Minnesota.
  • Moore LA; Masonic Institute for the Developing Brain, University of Minnesota.
  • Perrone AJ; Masonic Institute for the Developing Brain, University of Minnesota.
  • Alexopoulos D; Masonic Institute for the Developing Brain, University of Minnesota.
  • Lee EG; Washington University.
  • Styner M; Minnesota Supercomputing Institute, University of Minnesota.
  • Kardan O; Masonic Institute for the Developing Brain, University of Minnesota.
  • Chamberlain TA; Department of Psychiatry, University of North Carolina at Chapel Hill.
  • Mummaneni A; Department of Psychology, University of Chicago.
  • Caldas HA; University of Michigan.
  • Bower B; Department of Psychology, University of Chicago.
  • Stoyell S; Department of Psychology, University of Chicago.
  • Martin T; Department of Psychology, University of Chicago.
  • Sung S; PrimeNeuro.
  • Fair E; Masonic Institute for the Developing Brain, University of Minnesota.
  • Uriarte-Lopez J; Masonic Institute for the Developing Brain, University of Minnesota.
  • Rueter AR; Masonic Institute for the Developing Brain, University of Minnesota.
  • Yacoub E; Masonic Institute for the Developing Brain, University of Minnesota.
  • Rosenberg MD; Oregon Health & Science University.
  • Smyser CD; Medical School Research Office, University of Minnesota.
  • Elison JT; Department of Radiology, University of Minnesota.
  • Graham A; Center for Magnetic Resonance Research, University of Minnesota.
  • Fair DA; Department of Psychology, University of Chicago.
  • Feczko E; Washington University.
bioRxiv ; 2023 May 03.
Article em En | MEDLINE | ID: mdl-36993540
Objectives: Brain segmentation of infant magnetic resonance (MR) images is vitally important in studying developmental mental health and disease. The infant brain undergoes many changes throughout the first years of postnatal life, making tissue segmentation difficult for most existing algorithms. Here, we introduce a deep neural network BIBSNet (Baby and Infant Brain Segmentation Neural Network), an open-source, community-driven model that relies on data augmentation and a large sample size of manually annotated images to facilitate the production of robust and generalizable brain segmentations. Experimental Design: Included in model training and testing were MR brain images on 84 participants with an age range of 0-8 months (median postmenstrual ages of 13.57 months). Using manually annotated real and synthetic segmentation images, the model was trained using a 10-fold cross-validation procedure. Testing occurred on MRI data processed with the DCAN labs infant-ABCD-BIDS processing pipeline using segmentations produced from gold standard manual annotation, joint-label fusion (JLF), and BIBSNet to assess model performance. Principal Observations: Using group analyses, results suggest that cortical metrics produced using BIBSNet segmentations outperforms JLF segmentations. Additionally, when analyzing individual differences, BIBSNet segmentations perform even better. Conclusions: BIBSNet segmentation shows marked improvement over JLF segmentations across all age groups analyzed. The BIBSNet model is 600x faster compared to JLF and can be easily included in other processing pipelines.

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: BioRxiv Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: BioRxiv Ano de publicação: 2023 Tipo de documento: Article