deepmriprep: Voxel-based Morphometry (VBM) Preprocessing via Deep Neural Networks
Abstract
Voxel-based Morphometry (VBM) has emerged as a powerful approach in neuroimaging research, utilized in over 7,000 studies since the year 2000. Using Magnetic Resonance Imaging (MRI) data, VBM assesses variations in the local density of brain tissue and examines its associations with biological and psychometric variables. Here, we present deepmriprep, a neural network-based pipeline that performs all necessary preprocessing steps for VBM analysis of T1-weighted MR images using deep neural networks. Utilizing the Graphics Processing Unit (GPU), deepmriprep is 37 times faster than CAT12, the leading VBM preprocessing toolbox. The proposed method matches CAT12 in accuracy for tissue segmentation and image registration across more than 100 datasets and shows strong correlations in VBM results. Tissue segmentation maps from deepmriprep have over 95% agreement with ground truth maps, and its non-linear registration, using supervised SYMNet, predicts smooth deformation fields comparable to CAT12. The high processing speed of deepmriprep enables rapid preprocessing of extensive datasets and thereby fosters the application of VBM analysis to large-scale neuroimaging studies and opens the door to real-time applications. Finally, deepmripreps straightforward, modular design enables researchers to easily understand, reuse, and advance the underlying methods, fostering further advancements in neuroimaging research. deepmriprep can be conveniently installed as a Python package and is publicly accessible at https://github.com/wwu-mmll/deepmriprep.
Cite
@article{arxiv.2408.10656,
title = {deepmriprep: Voxel-based Morphometry (VBM) Preprocessing via Deep Neural Networks},
author = {Lukas Fisch and Nils R. Winter and Janik Goltermann and Carlotta Barkhau and Daniel Emden and Jan Ernsting and Maximilian Konowski and Ramona Leenings and Tiana Borgers and Kira Flinkenflügel and Dominik Grotegerd and Anna Kraus and Elisabeth J. Leehr and Susanne Meinert and Frederike Stein and Lea Teutenberg and Florian Thomas-Odenthal and Paula Usemann and Marco Hermesdorf and Hamidreza Jamalabadi and Andreas Jansen and Igor Nenadic and Benjamin Straube and Tilo Kircher and Klaus Berger and Benjamin Risse and Udo Dannlowski and Tim Hahn},
journal= {arXiv preprint arXiv:2408.10656},
year = {2024}
}