Keyword search (4,163 papers available)

"Dugré M" Authored Publications:

Title Authors PubMed ID
1 An analysis of performance bottlenecks in MRI preprocessing Dugré M; Chatelain Y; Glatard T; 40072903
ENCS
2 Predicting Parkinson's disease trajectory using clinical and functional MRI features: A reproduction and replication study Germani E; Bhagwat N; Dugré M; Gau R; Montillo AA; Nguyen KP; Sokolowski A; Sharp M; Poline JB; Glatard T; 39982930
ENCS
3 Longitudinal brain structure changes in Parkinson's disease: A replication study Sokolowski A; Bhagwat N; Chatelain Y; Dugré M; Hanganu A; Monchi O; McPherson B; Wang M; Poline JB; Sharp M; Glatard T; 38295031
ENCS
4 Data and Tools Integration in the Canadian Open Neuroscience Platform Poline JB; Das S; Glatard T; Madjar C; Dickie EW; Lecours X; Beaudry T; Beck N; Behan B; Brown ST; Bujold D; Beauvais M; Caron B; Czech C; Dharsee M; Dugré M; Evans K; Gee T; Ippoliti G; Kiar G; Knoppers BM; Kuehn T; Le D; Lo D; Mazaheri M; MacFarlane D; Muja N; O' Brien EA; O' Callaghan L; Paiva S; Park P; Quesnel D; Rabelais H; Rioux P; Legault M; Tremblay-Mercier J; Rotenberg D; Stone J; Strauss T; Zaytseva K; Zhou J; Duchesne S; Khan AR; Hill S; Evans AC; 37024500
ENCS
5 An analysis of security vulnerabilities in container images for scientific data analysis Kaur B; Dugré M; Hanna A; Glatard T; 34080631
ENCS

 

Title:An analysis of performance bottlenecks in MRI preprocessing
Authors:Dugré MChatelain YGlatard T
Link:https://pubmed.ncbi.nlm.nih.gov/40072903/
DOI:10.1093/gigascience/giae098
Publication:GigaScience
Keywords:MRIneuroimagingperformancepreprocessingprofiling
PMID:40072903 Category: Date Added:2025-03-12
Dept Affiliation: ENCS
1 Concordia University, Department of Computer Science and Software Engineering, 1455 Blvd. De Maisonneuve Ouest, Montreal, Quebec H3G 1M8, Canada.
2 Centre for Addiction and Mental Health, Krembil Centre for Neuroinformatics, 60 Leonard Ave, Toronto, Ontario M5T 0S8, Canada.

Description:

Magnetic resonance imaging (MRI) preprocessing is a critical step for neuroimaging analysis. However, the computational cost of MRI preprocessing pipelines is a major bottleneck for large cohort studies and some clinical applications. While high-performance computing and, more recently, deep learning have been adopted to accelerate the computations, these techniques require costly hardware and are not accessible to all researchers. Therefore, it is important to understand the performance bottlenecks of MRI preprocessing pipelines to improve their performance. Using the Intel VTune profiler, we characterized the bottlenecks of several commonly used MRI preprocessing pipelines from the Advanced Normalization Tools (ANTs), FMRIB Software Library, and FreeSurfer toolboxes. We found few functions contributed to most of the CPU time and that linear interpolation was the largest contributor. Data access was also a substantial bottleneck. We identified a bug in the Insight Segmentation and Registration Toolkit library that impacts the performance of the ANTs pipeline in single precision and a potential issue with the OpenMP scaling in FreeSurfer recon-all. Our results provide a reference for future efforts to optimize MRI preprocessing pipelines.





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