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Greedy low-rank algorithm for spatial connectome regression
- Source :
- Journal of Mathematical Neuroscience, Journal of Mathematical Neuroscience, Vol 9, Iss 1, Pp 1-22 (2019), The Journal of Mathematical Neuroscience
- Publication Year :
- 2019
- Publisher :
- Springer, 2019.
-
Abstract
- Recovering brain connectivity from tract tracing data is an important computational problem in the neurosciences. Mesoscopic connectome reconstruction was previously formulated as a structured matrix regression problem (Harris et al. in Neural Information Processing Systems, 2016), but existing techniques do not scale to the whole-brain setting. The corresponding matrix equation is challenging to solve due to large scale, ill-conditioning, and a general form that lacks a convergent splitting. We propose a greedy low-rank algorithm for the connectome reconstruction problem in very high dimensions. The algorithm approximates the solution by a sequence of rank-one updates which exploit the sparse and positive definite problem structure. This algorithm was described previously (Kressner and Sirković in Numer Lin Alg Appl 22(3):564–583, 2015) but never implemented for this connectome problem, leading to a number of challenges. We have had to design judicious stopping criteria and employ efficient solvers for the three main sub-problems of the algorithm, including an efficient GPU implementation that alleviates the main bottleneck for large datasets. The performance of the method is evaluated on three examples: an artificial “toy” dataset and two whole-cortex instances using data from the Allen Mouse Brain Connectivity Atlas. We find that the method is significantly faster than previous methods and that moderate ranks offer a good approximation. This speedup allows for the estimation of increasingly large-scale connectomes across taxa as these data become available from tracing experiments. The data and code are available online. ispartof: Journal Of Mathematical Neuroscience vol:9 issue:1 ispartof: location:Germany status: Published online
- Subjects :
- Mathematics, Interdisciplinary Applications
Speedup
Rank (linear algebra)
Computer science
Neuroscience (miscellaneous)
Low-rank approximation
010103 numerical & computational mathematics
Tracing
01 natural sciences
Bottleneck
lcsh:RC321-571
03 medical and health sciences
FOS: Mathematics
Matrix equations
Mathematics - Numerical Analysis
0101 mathematics
OPTIMIZATION
lcsh:Neurosciences. Biological psychiatry. Neuropsychiatry
030304 developmental biology
0303 health sciences
Sequence
Science & Technology
Quantitative Biology::Neurons and Cognition
lcsh:Mathematics
Research
Neurosciences
Numerical Analysis (math.NA)
lcsh:QA1-939
15A24, 15A83, 65F10 92C20, 94A08
KRYLOV SUBSPACE METHODS
Computational neuroscience
Physical Sciences
Connectome
Mathematical & Computational Biology
Neurosciences & Neurology
Computational problem
Networks
Algorithm
Life Sciences & Biomedicine
MATRIX
Mathematics
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Journal of Mathematical Neuroscience, Journal of Mathematical Neuroscience, Vol 9, Iss 1, Pp 1-22 (2019), The Journal of Mathematical Neuroscience
- Accession number :
- edsair.doi.dedup.....a4ad190e61cbfd42c599f35965fcfd9a