PARALLEL OPTIMIZATION OF FIBER BUNDLE SEGMENTATION FOR MASSIVE TRACTOGRAPHY DATASETS

Vazquez, Andrea; Lopez-Lopez, Narciso; Labra, Nicole; Figueroa, Miguel; Poupon, Cyril; Mangin, Jean-Francois; Hernandez, Cecilia; Guevara, Pamela; IEEE

Abstract

We present an optimized algorithm that performs automatic classification of white matter fibers based on a multi-subject bundle atlas. We implemented a parallel algorithm that improves upon its previous version in both execution time and memory usage. Our new version uses the local memory of each processor, which leads to a reduction in execution time. Hence, it allows the analysis of bigger subject and/or atlas datasets. As a result, the segmentation of a subject of 4,145,000 fibers is reduced from about 14 minutes in the previous version to about 6 minutes, yielding an acceleration of 2.34. In addition, the new algorithm reduces the memory consumption of the previous version by a factor of 0.79.

Más información

Título según WOS: PARALLEL OPTIMIZATION OF FIBER BUNDLE SEGMENTATION FOR MASSIVE TRACTOGRAPHY DATASETS
Título de la Revista: 2016 IEEE 13TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI)
Editorial: IEEE
Fecha de publicación: 2019
Página de inicio: 178
Página final: 181
Notas: ISI