VI. TR&D4 - Abstract The overall goal of this project is to develop tools for making maximal use of the information in biological images to enable the construction of predictive, multiscale models of structure and dynamics at the subcellular and cellular level. The tools will be especially useful for studies of how cell organization is created and maintained and how that organization differs from cell type to cell type and during disease. While existing software primarily provides descriptions of images, the focus of this project is on construction of generative models of cell organization. Generative models are learned from a collection of images and are capable of producing new images that are statistically equivalent to the images used for training. These models have distinct advantages over discriminative or descriptive approaches. They attempt to make use of all information in images, rather than to just extract selected descriptors or features. Further, while features are not useful for comparing and communicating results between different laboratories due to their dependence upon the specifics of image acquisition, generative models capture the underlying reality that gave rise to images and can therefore be compared across different microscopes and laboratories. They are also combinable and reusable, in that models can be linked together to make predictions about new relationships, and models for organelle shape and distribution learned for one cell type can be provisionally extended to new cell types. Work during the prior funding led to the development of extensive generative model capabilities that were incorporated into the open source CellOrganizer system. We propose to build upon this work to build new capabilities for constructing models that consider the extensive interrelationships between organelles and structures in cells, and for modeling the dynamics of proteins and organelles. In conjunction with TR&D3, we will also develop new methods for using images to constrain estimation of the affinities between components of a biological system. Lastly, we will develop new approaches for constructing models from both electron and fluorescence microscope images. The proposed work makes use of best available methods in machine learning and computer vision, including advanced inference methods and convolutional neural nets (so called ?deep learning? methods). The work builds on the extensive progress that has been made under what was Aim 1 of TR&D3 in the prior funding period, which resulted in eleven publications that acknowledged P41 support.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Biotechnology Resource Grants (P41)
Project #
5P41GM103712-09
Application #
9990800
Study Section
Special Emphasis Panel (ZRG1)
Project Start
2012-09-24
Project End
2022-07-31
Budget Start
2020-08-01
Budget End
2021-07-31
Support Year
9
Fiscal Year
2020
Total Cost
Indirect Cost
Name
University of Pittsburgh
Department
Type
DUNS #
004514360
City
Pittsburgh
State
PA
Country
United States
Zip Code
15260
Lee, Ji Young; Krieger, James; Herguedas, Beatriz et al. (2018) Druggability Simulations and X-Ray Crystallography Reveal a Ligand-Binding Site in the GluA3 AMPA Receptor N-Terminal Domain. Structure :
Han, Ligong; Murphy, Robert F; Ramanan, Deva (2018) Learning Generative Models of Tissue Organization with Supervised GANs. IEEE Winter Conf Appl Comput Vis 2018:682-690
Ernst, Oliver K; Bartol, Thomas; Sejnowski, Terrence et al. (2018) Learning dynamic Boltzmann distributions as reduced models of spatial chemical kinetics. J Chem Phys 149:034107
Kaya, Cihan; Cheng, Mary H; Block, Ethan R et al. (2018) Heterogeneities in Axonal Structure and Transporter Distribution Lower Dopamine Reuptake Efficiency. eNeuro 5:
Zhao, Yixiu; Zeng, Xiangrui; Guo, Qiang et al. (2018) An integration of fast alignment and maximum-likelihood methods for electron subtomogram averaging and classification. Bioinformatics 34:i227-i236
Antunes, G; Simoes-de-Souza, F M (2018) AMPA receptor trafficking and its role in heterosynaptic plasticity. Sci Rep 8:10349
Sparks, Samuel; Temel, Deniz B; Rout, Michael P et al. (2018) Deciphering the ""Fuzzy"" Interaction of FG Nucleoporins and Transport Factors Using Small-Angle Neutron Scattering. Structure 26:477-484.e4
Donovan-Maiye, Rory M; Langmead, Christopher J; Zuckerman, Daniel M (2018) Systematic Testing of Belief-Propagation Estimates for Absolute Free Energies in Atomistic Peptides and Proteins. J Chem Theory Comput 14:426-443
Li, Jing; Ostmeyer, Jared; Cuello, Luis G et al. (2018) Rapid constriction of the selectivity filter underlies C-type inactivation in the KcsA potassium channel. J Gen Physiol 150:1408-1420
Gupta, Sanjana; Hainsworth, Liam; Hogg, Justin S et al. (2018) Evaluation of Parallel Tempering to Accelerate Bayesian Parameter Estimation in Systems Biology. Proc Euromicro Int Conf Parallel Distrib Netw Based Process 2018:690-697

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