REAL

Using GPUs to accelerate computational diffusion MRI: From microstructure estimation to tractography and connectomes

Hernandez-Fernandez, Moises and Reguly, István and Jbabdi, Saad and Giles, Mike and Smith, Stephen (2019) Using GPUs to accelerate computational diffusion MRI: From microstructure estimation to tractography and connectomes. NEUROIMAGE, 188. pp. 598-615. ISSN 1053-8119

[img]
Preview
Text
1-s2.0-S1053811918321591-main.pdf
Available under License Creative Commons Attribution.

Download (6MB) | Preview

Abstract

The great potential of computational diffusion MRI (dMRI) relies on indirect inference of tissue microstructure and brain connections, since modelling and tractography frameworks map diffusion measurements to neuroanatomical features. This mapping however can be computationally highly expensive, particularly given the trend of increasing dataset sizes and the complexity in biophysical modelling. Limitations on computing resources can restrict data exploration and methodology development. A step forward is to take advantage of the computational power offered by recent parallel computing architectures, especially Graphics Processing Units (GPUs). GPUs are massive parallel processors that offer trillions of floating point operations per second, and have made possible the solution of computationally-intensive scientific problems that were intractable before. However, they are not inherently suited for all problems. Here, we present two different frameworks for accelerating dMRI computations using GPUs that cover the most typical dMRI applications: a framework for performing biophysical modelling and microstructure estimation, and a second framework for performing tractography and long-range connectivity estimation. The former provides a front-end and automatically generates a GPU executable file from a user-specified biophysical model, allowing accelerated non-linear model fitting in both deterministic and stochastic ways (Bayesian inference). The latter performs probabilistic tractography, can generate whole-brain connectomes and supports new functionality for imposing anatomical constraints, such as inherent consideration of surface meshes (GIFTI files) along with volumetric images. We validate the frameworks against well-established CPU-based implementations and we show that despite the very different challenges for parallelising these problems, a single GPU achieves better performance than 200 CPU cores thanks to our parallel designs.

Item Type: Article
Uncontrolled Keywords: GPGPU; Scientific computing; Biophysical modelling; Non-linear optimisation; Bayesian inference; Fibre orientations; Fibre dispersion; Brain connectivity; Medical imaging
Subjects: Q Science / természettudomány > QA Mathematics / matematika > QA75 Electronic computers. Computer science / számítástechnika, számítógéptudomány
SWORD Depositor: MTMT SWORD
Depositing User: MTMT SWORD
Date Deposited: 18 Sep 2019 12:50
Last Modified: 18 Sep 2019 12:50
URI: http://real.mtak.hu/id/eprint/99794

Actions (login required)

Edit Item Edit Item