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Maytha Alshammari

Bio: Maytha Alshammari is an academic researcher from Old Dominion University. The author has contributed to research in topics: Cryo-electron microscopy & Computer science. The author has an hindex of 1, co-authored 4 publications receiving 5 citations.

Papers
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Journal ArticleDOI
TL;DR: The F1 score is theoretically normalized to a range from zero to one, providing a local measure of cylindrical agreement between the density and atomic model of a helix, and can be used as a discriminative classifier for validation studies and as a ranking criterion for cryo-EM density features in databases.
Abstract: Cryo-electron microscopy (cryo-EM) density maps at medium resolution (5–10 A) reveal secondary structural features such as α-helices and β-sheets, but they lack the side chain details that would en...

7 citations

DOI
03 Nov 2021
TL;DR: DeepSSETracer as mentioned in this paper uses a pre-trained gradient of episodic memory (GEM)-Unet model to detect protein secondary structures from high-resolution component maps.
Abstract: Although cryo-electron microscopy (cryo-EM) has been successfully used to derive atomic structures for many proteins, it is still challenging to derive atomic structures when the resolution of cryo-EM density maps is in the medium resolution range, such as 5-10 A. Detection of protein secondary structures, such as helices and β-sheets, from cryo-EM density maps provides constraints for deriving atomic structures from such maps. As more deep learning methodologies are being developed for solving various molecular problems, effective tools are needed for users to access them. We have developed an effective software bundle, DeepSSETracer, for the detection of protein secondary structure from cryo-EM component maps in medium resolution. The bundle contains the network architecture and a pre-trained gradient of episodic memory (GEM)-Unet model. The bundle integrates the deep-learning methodology with the visualization capacity provided in ChimeraX. Using a Linux server that is remotely accessed from Windows users, it takes about 6 seconds on one CPU and one GPU for the deep learning architecture to detect secondary structures for a cryo-EM component map containing 446 amino acids. A test using 28 chain components of cryo-EM maps shows overall residue-level F1 scores of 0.72 and 0.65 to detect helices and β-sheets, respectively. Although deep learning applications are built on software frameworks, such as PyTorch and Tensorflow, our pioneer work here shows that integration of deep learning applications with ChimeraX is a promising and effective approach. Our experiments show that the F1 score measured at the residue level is an effective evaluation of secondary structure detection for individual classes. The test using 28 cryo-EM component maps shows that DeepSSETracer detects β-sheets more accurately than Emap2sec+, with a weighted average residue-level F1 score of 0.65 and 0.42 respectively. It also shows that Emap2sec+ detects helices more accurately than DeepSSETracer with a weighted average residue-level F1 score of 0.77 and 0.72 respectively.

4 citations

Journal ArticleDOI
TL;DR: In this paper , the Phenix refinement suite for AlphaFold2 models was introduced to study the robustness of model refinement at a lower resolution of interest, i.e., hybrid maps (i.e. experimental cryo-EM maps) filtered to lower resolutions by real space convolution.
Abstract: Abstract Abstract Recent breakthroughs in deep learning-based protein structure prediction show that it is possible to obtain highly accurate models for a wide range of difficult protein targets for which only the amino acid sequence is known. The availability of accurately predicted models from sequences can potentially revolutionise many modelling approaches in structural biology, including the interpretation of cryo-EM density maps. Although atomic structures can be readily solved from cryo-EM maps of better than 4 Å resolution, it is still challenging to determine accurate models from lower-resolution density maps. Here, we report on the benefits of models predicted by AlphaFold2 (the best-performing structure prediction method at CASP14) on cryo-EM refinement using the Phenix refinement suite for AlphaFold2 models. To study the robustness of model refinement at a lower resolution of interest, we introduced hybrid maps (i.e. experimental cryo-EM maps) filtered to lower resolutions by real-space convolution. The AlphaFold2 models were refined to attain good accuracies above 0.8 TM scores for 9 of the 13 cryo-EM maps. TM scores improved for AlphaFold2 models refined against all 13 cryo-EM maps of better than 4.5 Å resolution, 8 hybrid maps of 6 Å resolution, and 3 hybrid maps of 8 Å resolution. The results show that it is possible (at least with the Phenix protocol) to extend the refinement success below 4.5 Å resolution. We even found isolated cases in which resolution lowering was slightly beneficial for refinement, suggesting that high-resolution cryo-EM maps might sometimes trap AlphaFold2 models in local optima.

2 citations

Proceedings ArticleDOI
21 Sep 2020
TL;DR: In this paper, a method for protein structure prediction that combines three sources of information: the secondary structure traces detected from the cryo-EM density map, predicted secondary structure sequence segments, and amino acid contact pairs predicted using MULTICOM was proposed.
Abstract: Cryo-electron microscopy is a major structure determination technique for large molecular machines and membrane-associated complexes. Although atomic structures have been determined directly from cryo-EM density maps with high resolutions, current structure determination methods for medium resolution (5 to 10 A) cryo-EM maps are limited by the availability of structure templates. Secondary structure traces are lines detected from a cryo-EM density map for α-helices and β-strands of a protein. When combined with secondary structure sequence segments predicted from a protein sequence, it is possible to generate a set of likely topologies of α-traces and β-sheet traces. A topology describes the overall folding relationship among secondary structures; it is a critical piece of information for deriving the corresponding atomic structure. We propose a method for protein structure prediction that combines three sources of information: the secondary structure traces detected from the cryo-EM density map, predicted secondary structure sequence segments, and amino acid contact pairs predicted using MULTICOM. A case study shows that using amino acid contact prediction from MULTICOM improves the ranking of the true topology. Our observations convey that using a small set of highly voted secondary structure contact pairs enhances the ranking in all experiments conducted for this case.

1 citations

Proceedings ArticleDOI
06 Dec 2022
TL;DR: In this article , the authors evaluated the utility of deep learning-based protein structure prediction approaches, specifically AlphaFold2, in the interpretation of 4-6Å resolution cryo-EM maps.
Abstract: This work provides new evidence of the utility of deep learning-based protein structure prediction approaches, specifically AlphaFold2, in the interpretation of 4-6Å resolution cryo-EM maps. We describe the dependencies, as well as the strengths and limitations, of integrating experimental and AI-based approaches to building accurate models, even from poorly resolved density maps. The test followed recent work that implemented a refinement protocol in the Phenix program, which successfully refined AlphaFold2 models in high-resolution maps but which at lower resolution relied on simulated “hybrid density maps”. To study the noise and imperfections present in experimental cryo-EM maps more realistically, in this work, we selected only experimental map/model pairs in the 4-6Å resolution range where refinement performance starts to degrade. Most of the AlphaFold2 predicted models are highly accurate, particularly for the 9 larger chains (226-373 residues long) of the 10 cases, exhibiting TM-scores above 0.9. A small chain of 115 residues in length containing three helices was poorly predicted, with a TM-score of 0.52. The observed success of the subsequent refinement step depends significantly on the quality of the AlphaFold2 prediction, the quality of the experimental cryo-EM data, and the quality of the alignment of the model with the density.

Cited by
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Journal ArticleDOI
TL;DR: In this article, the authors proposed SAUA-FFR scheme, which combines de novo modeling combined with flexible fitting refinement (FFR) to build a structure of new proteins.
Abstract: Structural modeling of proteins from cryo-electron microscopy (cryo-EM) density maps is one of the challenging issues in structural biology. De novo modeling combined with flexible fitting refinement (FFR) has been widely used to build a structure of new proteins. In de novo prediction, artificial conformations containing local structural errors such as chirality errors, cis peptide bonds, and ring penetrations are frequently generated and cannot be easily removed in the subsequent FFR. Moreover, refinement can be significantly suppressed due to the low mobility of atoms inside the protein. To overcome these problems, we propose an efficient scheme for FFR, in which the local structural errors are fixed first, followed by FFR using an iterative simulated annealing (SA) molecular dynamics protocol with the united atom (UA) model in an implicit solvent model; we call this scheme "SAUA-FFR". The best model is selected from multiple flexible fitting runs with various biasing force constants to reduce overfitting. We apply our scheme to the decoys obtained from MAINMAST and demonstrate an improvement of the best model of eight selected proteins in terms of the root-mean-square deviation, MolProbity score, and RWplus score compared to the original scheme of MAINMAST. Fixing the local structural errors can enhance the formation of secondary structures, and the UA model enables progressive refinement compared to the all-atom model owing to its high mobility in the implicit solvent. The SAUA-FFR scheme realizes efficient and accurate protein structure modeling from medium-resolution maps with less overfitting.

8 citations

DOI
03 Nov 2021
TL;DR: DeepSSETracer as mentioned in this paper uses a pre-trained gradient of episodic memory (GEM)-Unet model to detect protein secondary structures from high-resolution component maps.
Abstract: Although cryo-electron microscopy (cryo-EM) has been successfully used to derive atomic structures for many proteins, it is still challenging to derive atomic structures when the resolution of cryo-EM density maps is in the medium resolution range, such as 5-10 A. Detection of protein secondary structures, such as helices and β-sheets, from cryo-EM density maps provides constraints for deriving atomic structures from such maps. As more deep learning methodologies are being developed for solving various molecular problems, effective tools are needed for users to access them. We have developed an effective software bundle, DeepSSETracer, for the detection of protein secondary structure from cryo-EM component maps in medium resolution. The bundle contains the network architecture and a pre-trained gradient of episodic memory (GEM)-Unet model. The bundle integrates the deep-learning methodology with the visualization capacity provided in ChimeraX. Using a Linux server that is remotely accessed from Windows users, it takes about 6 seconds on one CPU and one GPU for the deep learning architecture to detect secondary structures for a cryo-EM component map containing 446 amino acids. A test using 28 chain components of cryo-EM maps shows overall residue-level F1 scores of 0.72 and 0.65 to detect helices and β-sheets, respectively. Although deep learning applications are built on software frameworks, such as PyTorch and Tensorflow, our pioneer work here shows that integration of deep learning applications with ChimeraX is a promising and effective approach. Our experiments show that the F1 score measured at the residue level is an effective evaluation of secondary structure detection for individual classes. The test using 28 cryo-EM component maps shows that DeepSSETracer detects β-sheets more accurately than Emap2sec+, with a weighted average residue-level F1 score of 0.65 and 0.42 respectively. It also shows that Emap2sec+ detects helices more accurately than DeepSSETracer with a weighted average residue-level F1 score of 0.77 and 0.72 respectively.

4 citations

Journal ArticleDOI
TL;DR: A dynamic programming-based framework to characterizing the structural arrangement of filaments in the challenging 3D maps of subcellular components is developed and it is found that a bipyramidal accumulation scheme for path density is superior to straight-line accumulation.
Abstract: Within cells, cytoskeletal filaments are often arranged into loosely aligned bundles. These fibrous bundles are dense enough to exhibit a certain regularity and mean direction, however, their packing is not sufficient to impose a symmetry between—or specific shape on—individual filaments. This intermediate regularity is computationally difficult to handle because individual filaments have a certain directional freedom, however, the filament densities are not well segmented from each other (especially in the presence of noise, such as in cryo-electron tomography). In this paper, we develop a dynamic programming-based framework, Spaghetti Tracer, to characterizing the structural arrangement of filaments in the challenging 3D maps of subcellular components. Assuming that the tomogram can be rotated such that the filaments are oriented in a mean direction, the proposed framework first identifies local seed points for candidate filament segments, which are then grown from the seeds using a dynamic programming algorithm. We validate various algorithmic variations of our framework on simulated tomograms that closely mimic the noise and appearance of experimental maps. As we know the ground truth in the simulated tomograms, the statistical analysis consisting of precision, recall, and F1 scores allows us to optimize the performance of this new approach. We find that a bipyramidal accumulation scheme for path density is superior to straight-line accumulation. In addition, the multiplication of forward and backward path densities provides for an efficient filter that lifts the filament density above the noise level. Resulting from our tests is a robust method that can be expected to perform well (F1 scores 0.86–0.95) under experimental noise conditions.

3 citations

Journal ArticleDOI
TL;DR: In this paper , the Phenix refinement suite for AlphaFold2 models was introduced to study the robustness of model refinement at a lower resolution of interest, i.e., hybrid maps (i.e. experimental cryo-EM maps) filtered to lower resolutions by real space convolution.
Abstract: Abstract Abstract Recent breakthroughs in deep learning-based protein structure prediction show that it is possible to obtain highly accurate models for a wide range of difficult protein targets for which only the amino acid sequence is known. The availability of accurately predicted models from sequences can potentially revolutionise many modelling approaches in structural biology, including the interpretation of cryo-EM density maps. Although atomic structures can be readily solved from cryo-EM maps of better than 4 Å resolution, it is still challenging to determine accurate models from lower-resolution density maps. Here, we report on the benefits of models predicted by AlphaFold2 (the best-performing structure prediction method at CASP14) on cryo-EM refinement using the Phenix refinement suite for AlphaFold2 models. To study the robustness of model refinement at a lower resolution of interest, we introduced hybrid maps (i.e. experimental cryo-EM maps) filtered to lower resolutions by real-space convolution. The AlphaFold2 models were refined to attain good accuracies above 0.8 TM scores for 9 of the 13 cryo-EM maps. TM scores improved for AlphaFold2 models refined against all 13 cryo-EM maps of better than 4.5 Å resolution, 8 hybrid maps of 6 Å resolution, and 3 hybrid maps of 8 Å resolution. The results show that it is possible (at least with the Phenix protocol) to extend the refinement success below 4.5 Å resolution. We even found isolated cases in which resolution lowering was slightly beneficial for refinement, suggesting that high-resolution cryo-EM maps might sometimes trap AlphaFold2 models in local optima.

2 citations