The One World Cryo-EM seminar series is a platform for discussion of algorithms, computational methods and mathematical problems in cryo-EM.
 

Online, Once a Month. Wednesday at 8am PT / 11am ET/ 4pm BST / 5pm CET / 11pm China.

Registration has changed. For zoom links and announcements, please register to our mailing list. This is a read-only mailing list (users cannot post). Please use your institution/ company email – we approve registrations manually and this helps us know who you are . You may receive an email asking you to confirm your registration, it is important that you click the link, otherwise we will not see your request.

Organizers: Joakim Andén, Dorit Hanein, Roy R. Lederman and Steven J. Ludtke


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Next Talk

Sonya Hanson
Research Scientist
Flatiron Institute

Date and time: March 5th, 2025 Wednesday at 8am PST / 11am EST / 4pm GMT / 5pm CET / 12am China

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The Inaugural Flatiron Institute Cryo-EM Conformational Heterogeneity Challenge

Despite the rise of single particle cryo-EM as a premier method for resolving macromolecular structures at atomic resolution, methods to address molecular heterogeneity in vitrified samples have yet to reach maturity. With an increasing number of new methods to analyze the multitude of heterogeneous states captured in single particle images, a systemic approach to benchmarks and metrics in this field is needed. With this motivation, we issued a challenge to the community to analyze two curated cryo-EM image stacks of the thyroglobulin molecule with conformational heterogeneity: the first was a typical experimental dataset, and the second was synthetically generated, allowing control over the distribution of molecular structures in the particle images. This synthetic dataset also enabled direct comparison between participants’ submissions and the ground truth molecular structures and distributions. Participants were asked to submit 80 molecular volumes representing the heterogeneous ensemble in the dataset and estimate their respective populations in the particle stack provided. Participation in the challenge was strong, with submissions from nearly all developers of heterogeneity methods, resulting in 40 submissions across both datasets. Submissions qualitatively exceeded expectations, with the molecular motions identified by methods resembling both each other and the ground truth distribution. However, quantitatively assessing these similarities was a challenge in and of itself.  In the process of assessing the submissions to this challenge, we developed several validation metrics, most of which require reference to the underlying ground truth volumes, but one which does not. These approaches allowed us to assess the similarity and accuracy in map quality, molecular motions, and distribution estimates of different submissions. These metrics and the efforts of all participants will help chart a path forward for the improvements of heterogeneity methods for cryo-EM and future challenges to test these new methods as they continue to be developed by the community.

Last Talk

Roberto Covino
Professor of Computational Life Science, Goethe University Frankfurt
Senior Fellow, Frankfurt Institute for Advanced Studies

Date and time: February 5th, 2025 Wednesday at 8am PST / 11am EST / 4pm GMT / 5pm CET / 12am China

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From Pixels to Bayesian Posteriors: Fast Molecular Conformation Estimation from Cryo-EM with simulation-based inference

Biomolecules are highly dynamic systems. They reorganize between a network of metastable states connected by rare structural intermediates, which is referred to as their conformational ensemble. The ensemble, including the rare intermediate structures, determines biomolecular function in the cell. However, mapping biomolecular conformational ensembles is still an outstanding challenge in both experimental and computational approaches. Cryo-electron microscopy (cryoEM) has emerged as a powerful paradigm for characterizing protein conformational ensembles. However, even though the frozen sample contains information on the entire ensemble, current approaches reconstruct only a few conformations by averaging over many microscopy images. In fact, accurately identifying molecular conformations depicted in a single cryoEM image is still a challenging task. Here, we integrate simulations and probabilistic deep learning to develop the cryoEM simulation-based inference (cryoSBI) framework for inferring molecular conformations and their uncertainties from individual cryoEM images. Given an observed image, cryoSBI enables us to directly estimate the Bayesian posterior using forward model simulations, an embedding network, and a neural posterior estimation framework. CryoSBI is amortized. Training happens only once, after which inference for each experimental image takes only milliseconds to evaluate. Pose and imaging parameters do not have to be estimated, resulting in a high computational speed compared to explicit likelihood methods. For synthetic and experimental data, we could systematically disentangle the molecular conformation from the noisy observation with a confidence interval for the inference and learn about the most relevant features of the observed particles. Our approach paves the way to characterizing entire conformational ensembles from experimental data.

Bio:
Roberto Covino is W3 Professor of Computational Life Science at the Institute of Computer Science at Goethe University Frankfurt, and a Senior Fellow at the Frankfurt Institute for Advanced Studies. His research uses theory, simulation, and statistical modelling of experiments to understand how biomolecular functions emerge from the interplay between structure, dynamics, and complexity. He focuses on understanding the mechanism of key events in proteins and cellular membranes. RC studied physics and theoretical physics at the University of Bologna and obtained his PhD in physics at the University of Trento. He was appointed Professor of AI in Protein Science at Bayreuth University in 2023 and received the call to Goethe University in 2024.