Author:
Marrett Karl,Moradi Keivan,Park Chris Sin,Yan Ming,Choi Chris,Zhu Muye,Akram Masood,Nanda Sumit,Xue Qing,Mun Hyun-Seung,Gutierrez Adriana E.,Rudd Mitchell,Zingg Brian,Magat Gabrielle,Wijaya Kathleen,Dong Hongwei,Yang X. William,Cong Jason
Abstract
AbstractNeuronal reconstruction–a process that transforms image volumes into 3D geometries and skeletons of cells– bottlenecks the study of brain function, connectomics and pathology. Domain scientists needexactandcompletesegmentations to study subtle topological differences. Existing methods are diskbound, dense-access, coupled, single-threaded, algorithmically unscalable and require manual cropping of small windows and proofreading of skeletons due to low topological accuracy. Designing a data-intensive parallel solution suited to a neurons’ shape, topology and far-ranging connectivity is particularly challenging due to I/O and load-balance, yet by abstracting these vision tasks into strategically ordered specializations of search, we progressively lower memory by 4 orders of magnitude. This enables 1 mouse brain to be fully processed in-memory on a single server, at 67× the scale with 870× less memory while having 78% higher automated yield than APP2, the previous state of the art in performant reconstruction.
Publisher
Cold Spring Harbor Laboratory