| Literature DB >> 27424268 |
Feng Wang1, Huichao Gong2, Gaochao Liu3, Meijing Li3, Chuangye Yan4, Tian Xia5, Xueming Li6, Jianyang Zeng7.
Abstract
Particle picking is a time-consuming step in single-particle analysis and often requires significant interventions from users, which has become a bottleneck for future automated electron cryo-microscopy (cryo-EM). Here we report a deep learning framework, called DeepPicker, to address this problem and fill the current gaps toward a fully automated cryo-EM pipeline. DeepPicker employs a novel cross-molecule training strategy to capture common features of particles from previously-analyzed micrographs, and thus does not require any human intervention during particle picking. Tests on the recently-published cryo-EM data of three complexes have demonstrated that our deep learning based scheme can successfully accomplish the human-level particle picking process and identify a sufficient number of particles that are comparable to those picked manually by human experts. These results indicate that DeepPicker can provide a practically useful tool to significantly reduce the time and manual effort spent in single-particle analysis and thus greatly facilitate high-resolution cryo-EM structure determination. DeepPicker is released as an open-source program, which can be downloaded from https://github.com/nejyeah/DeepPicker-python.Entities:
Keywords: Automation; Cryo-EM; Deep learning; Particle picking
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Year: 2016 PMID: 27424268 DOI: 10.1016/j.jsb.2016.07.006
Source DB: PubMed Journal: J Struct Biol ISSN: 1047-8477 Impact factor: 2.867