Greedy low-rank algorithm for spatial connectome regression
Patrick K\"urschner, Sergey Dolgov, Kameron Decker Harris, Peter, Benner

TL;DR
This paper introduces a fast, scalable greedy low-rank algorithm for reconstructing brain connectomes from large-scale tract tracing data, overcoming previous computational limitations.
Contribution
It presents a novel implementation of a low-rank matrix regression algorithm tailored for high-dimensional connectome reconstruction, with efficient GPU acceleration.
Findings
Significantly faster than previous methods
Moderate ranks provide good approximation quality
Successfully applied to large-scale brain datasets
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., 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 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 Sirkovi\'c, 2015) but never implemented for this connectome problem, leading to a number of challenges. We have had to design judicious stopping…
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