EMAN is one of the most well-established and widely used scientific image processing suites targeting the rapidly growing CryoEM/CryoET community worldwide. In turn, the CryoEM and CryoET studies which it enables permit determination of the structures of interacting macromolecules both in-vitro and in-vivo, and are being used to better understand the biochemical processes taking place in cells, to better identify potential drug targets and develop novel diagnostics. With the higher resolutions now possible in this field, direct drug interaction structural studies are now possible, and being used to gain insight into the mode of action of drugs within the cell. Unlike many newer tools in the field, such as Relion, CisTEM and CryoSparc, which focus on specific refinement tasks, EMAN is a versatile, modular suite capable of performing a variety of image processing tasks with hundreds of algorithms supporting virtually all of the standard file formats and mathematical conventions used in the field, as well as other related imaging fields. It provides an ideal platform for prototyping fundamental new algorithm developments, while still able to achieve data-limited resolution in single particle reconstruction. While high resolution single particle refinement has become routine in recent years, thanks largely to the dramatic data quality improvements provided by new detector technology, there remain significant opportunities for improvements in mitigating model bias, efficient use of data, and analysis of complexes with compositional or conformational variability. Some of the most important problems from a biological perspective involve the sort of compositional and conformational variability which remain challenging problems. The field also remains susceptible to problems of initial model bias, which are exacerbated in systems exhibiting structural variability, and as a result many structures are still published with exaggerated resolution claims. The standard protocols used by many in the field typically involve discarding a very large fraction of the raw data (as much as 80-90% in some cases), often based on qualitative assessments, raising questions related to rigor and reproducibility of structural results. In this proposal, we will develop or adapt image processing techniques to help resolve these issues, based on developments or unrealized concepts from mathematics and computer science.

Public Health Relevance

CryoEM and CryoET are used to study the structures of interacting biomolecules in the cell at resolutions 100x better than the best possible light microscope. This methodology permits new insights into the biomolecules which underlie disease, can shed light on structural changes in diseased cells and provide direct information on how drugs interact with the molecules they target. This grant develops the software used to turn noisy 2-D electron microscope images into reliable 3-D structures of individual molecules extending to near-atomic resolution.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
2R01GM080139-14
Application #
9886087
Study Section
Macromolecular Structure and Function D Study Section (MSFD)
Program Officer
Flicker, Paula F
Project Start
2006-06-01
Project End
2023-08-31
Budget Start
2019-09-24
Budget End
2020-08-31
Support Year
14
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Baylor College of Medicine
Department
Biochemistry
Type
Schools of Medicine
DUNS #
051113330
City
Houston
State
TX
Country
United States
Zip Code
77030
Fan, Guizhen; Baker, Mariah R; Wang, Zhao et al. (2018) Cryo-EM reveals ligand induced allostery underlying InsP3R channel gating. Cell Res 28:1158-1170
Kim, Seung Joong; Fernandez-Martinez, Javier; Nudelman, Ilona et al. (2018) Integrative structure and functional anatomy of a nuclear pore complex. Nature 555:475-482
Su, Zhaoming; Wu, Chao; Shi, Liuqing et al. (2018) Electron Cryo-microscopy Structure of Ebola Virus Nucleoprotein Reveals a Mechanism for Nucleocapsid-like Assembly. Cell 172:966-978.e12
Dai, Wei; Chen, Muyuan; Myers, Christopher et al. (2018) Visualizing Individual RuBisCO and Its Assembly into Carboxysomes in Marine Cyanobacteria by Cryo-Electron Tomography. J Mol Biol 430:4156-4167
Zhang, Kaiming; Keane, Sarah C; Su, Zhaoming et al. (2018) Structure of the 30 kDa HIV-1 RNA Dimerization Signal by a Hybrid Cryo-EM, NMR, and Molecular Dynamics Approach. Structure 26:490-498.e3
Bell, James M; Chen, Muyuan; Durmaz, Tunay et al. (2018) New software tools in EMAN2 inspired by EMDatabank map challenge. J Struct Biol 204:283-290
Sun, Stella Y; Kaelber, Jason T; Chen, Muyuan et al. (2018) Flagellum couples cell shape to motility in Trypanosoma brucei. Proc Natl Acad Sci U S A 115:E5916-E5925
Galaz-Montoya, Jesús G; Ludtke, Steven J (2017) The advent of structural biology in situ by single particle cryo-electron tomography. Biophys Rep 3:17-35
Chen, Muyuan; Dai, Wei; Sun, Stella Y et al. (2017) Convolutional neural networks for automated annotation of cellular cryo-electron tomograms. Nat Methods 14:983-985
Cheng, Tat Cheung; Akey, Ildikó V; Yuan, Shujun et al. (2017) A Near-Atomic Structure of the Dark Apoptosome Provides Insight into Assembly and Activation. Structure 25:40-52

Showing the most recent 10 out of 51 publications