2019
DOI: 10.1609/aaai.v33i01.3301630
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ReAl-LiFE: Accelerating the Discovery of Individualized Brain Connectomes on GPUs

Abstract: Diffusion imaging and tractography enable mapping structural connections in the human brain, in-vivo. Linear Fascicle Evaluation (LiFE) is a state-of-the-art approach for pruning spurious connections in the estimated structural connectome, by optimizing its fit to the measured diffusion data. Yet, LiFE imposes heavy demands on computing time, precluding its use in analyses of large connectome databases. Here, we introduce a GPU-based implementation of LiFE that achieves 50-100x speedups over conventional CPU-b… Show more

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Cited by 5 publications
(8 citation statements)
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“…First, the current version of the ReAl-LiFE algorithm does not take advantage of parallel computations across multiple GPUs. Moreover, ReAl-LiFE is presently not integrated with multi-CPU acceleration schemes 10 , although our speedups exceed (~8.7×) state-of-the-art numbers reported for these approaches. Combining these CPU-based schemes with our GPU implementation, or implementing parallel computations across multiple GPUs, may yield further speedups of the algorithm.…”
mentioning
confidence: 53%
See 1 more Smart Citation
“…First, the current version of the ReAl-LiFE algorithm does not take advantage of parallel computations across multiple GPUs. Moreover, ReAl-LiFE is presently not integrated with multi-CPU acceleration schemes 10 , although our speedups exceed (~8.7×) state-of-the-art numbers reported for these approaches. Combining these CPU-based schemes with our GPU implementation, or implementing parallel computations across multiple GPUs, may yield further speedups of the algorithm.…”
mentioning
confidence: 53%
“…We introduced a preliminary version of the ReAl-LiFE algorithm in an earlier study 10 (Fig. 1a,b); this implementation achieved 50-100× speedups over CPU implementations of LiFE.…”
mentioning
confidence: 99%
“…In order to reduce the inherent computational burden of these strategies, A is implemented in LiFE and COMMIT through a lookup table on a dictionary of precomputed estimations. Moreover, a GPU-based optimized version has recently been proposed for LiFE [29].…”
Section: Life and Commitmentioning
confidence: 99%
“…For applications based on tractography datasets, some methods introduce parallelism using GPUs to improve the execution times for visualization of bundles and streamlines (Guevara et al, 2015 ; Combrisson et al, 2019 ), visualization of fused DTI/HARDI data (Prckovska et al, 2011 ), efficient tractography compression, storage, and visualization (Haehn et al, 2020 ), fiber segmentation (Ros et al, 2011 ; Labra et al, 2017 ), dMRI non-linear model fitting and probabilistic tractography calculation (Hernandez-Fernandez et al, 2019 ), geodesic fiber tracking (van Aart et al, 2011 ), and connectome pruning (Kumar et al, 2019 ).…”
Section: Introductionmentioning
confidence: 99%