Fast segmentation with the NextBrain histological atlas

Journal: bioRxiv
Published Date:

Abstract

Structural brain analysis at the subregion level offers critical insights into healthy aging and neurodegenerative diseases. The NextBrain histological atlas was recently introduced to support such fine-grained investigations, but its existing Bayesian segmentation framework remains computationally prohibitive, particularly for large-scale studies. We present a new, open-source tool that dramatically accelerates segmentation using a hybrid approach combining: machine learning, contrast-adaptive segmentation; target-specific image synthesis; and fast diffeomorphic registration (all three with GPU support). Our method enables highly granular segmentation of brain MRI scans of any resolution and contrast (in vivo or ex vivo) at a fraction of the computational cost of the original method (<5 minutes on a GPU). We validate our tool on four different modalities (in vivo MRI, ex vivo MRI, HiP-CT, and photography) across a total of approximately 4,000 brain scans. Our results demonstrate that the accelerated approach achieves comparable accuracy to the original method in terms of Dice scores, while reducing runtime by over an order of magnitude. This work enables high-resolution anatomical analysis at unprecedented scale and flexibility, providing a practical solution for large neuroimaging studies. Our tool is publicly available in FreeSurfer (https://surfer.nmr.mgh.harvard.edu/fswiki/HistoAtlasSegmentation).

Authors

  • Oula Puonti; Jackson Nolan; Robert Dicamillo; Yael Balbastre; Adria Casamitjana; Matteo Mancini; Eleanor Robinson; Loic Peter; Roberto Annunziata; Juri Althonayan; Shauna Crampsie; Emily Blackburn; Benjamin Billot; Alessia Atzeni; Peter Schmidt; James Hughes; Jean Augustinack; Brian Edlow; Lilla Zöllei; David L Thomas; Dorit Kliemann; Martina Bocchetta; Catherine Strand; Janice Holton; Zane Jaunmuktane; Juan Eugenio Iglesias