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1.
Front Mol Biosci ; 10: 1176856, 2023.
Article in English | MEDLINE | ID: mdl-37091871

ABSTRACT

Single cell sequencing technologies have rapidly advanced in the last decade and are increasingly applied to gain unprecedented insights by deconstructing complex biology to its fundamental unit, the individual cell. First developed for measurement of gene expression, single cell sequencing approaches have evolved to allow simultaneous profiling of multiple additional features, including chromatin accessibility within the nucleus and protein expression at the cell surface. These multi-omic approaches can now further be applied to cells in situ, capturing the spatial context within which their biology occurs. To extract insights from these complex datasets, new computational tools have facilitated the integration of information across different data types and the use of machine learning approaches. Here, we summarize current experimental and computational methods for generation and integration of single cell multi-omic datasets. We focus on opportunities for multi-omic single cell sequencing to augment therapeutic development for kidney disease, including applications for biomarkers, disease stratification and target identification.

2.
Structure ; 29(6): 606-621.e5, 2021 06 03.
Article in English | MEDLINE | ID: mdl-33539768

ABSTRACT

Accurate predictive modeling of antibody-antigen complex structures and structure-based antibody design remain major challenges in computational biology, with implications for biotherapeutics, immunity, and vaccines. Through a systematic search for high-resolution structures of antibody-antigen complexes and unbound antibody and antigen structures, in conjunction with identification of experimentally determined binding affinities, we have assembled a non-redundant set of test cases for antibody-antigen docking and affinity prediction. This benchmark more than doubles the number of antibody-antigen complexes and corresponding affinities available in our previous benchmarks, providing an unprecedented view of the determinants of antibody recognition and insights into molecular flexibility. Initial assessments of docking and affinity prediction tools highlight the challenges posed by this diverse set of cases, which includes camelid nanobodies, therapeutic monoclonal antibodies, and broadly neutralizing antibodies targeting viral glycoproteins. This dataset will enable development of advanced predictive modeling and design methods for this therapeutically relevant class of protein-protein interactions.


Subject(s)
Antibodies/chemistry , Antibodies/metabolism , Antigens/chemistry , Antigens/metabolism , Algorithms , Antibodies, Monoclonal/chemistry , Antibodies, Monoclonal/metabolism , Antibodies, Viral/chemistry , Antibodies, Viral/metabolism , Antigen-Antibody Complex/chemistry , Benchmarking , Broadly Neutralizing Antibodies/chemistry , Broadly Neutralizing Antibodies/metabolism , Computational Biology/methods , Molecular Docking Simulation , Protein Binding , Protein Conformation , Single-Domain Antibodies/chemistry , Single-Domain Antibodies/metabolism , Software , Structure-Activity Relationship
3.
Bioinformatics ; 36(22-23): 5377-5385, 2021 Apr 01.
Article in English | MEDLINE | ID: mdl-33355667

ABSTRACT

MOTIVATION: The binding of T-cell receptors (TCRs) to their target peptide MHC (pMHC) ligands initializes the cell-mediated immune response. In autoimmune diseases such as multiple sclerosis, the TCR erroneously recognizes self-peptides as foreign and activates an immune response against healthy cells. Such responses can be triggered by cross-recognition of the autoreactive TCR with foreign peptides. Hence, it would be desirable to identify such foreign-antigen triggers to provide a mechanistic understanding of autoimmune diseases. However, the large sequence space of foreign antigens presents an obstacle in the identification of cross-reactive peptides. RESULTS: Here, we present an in silico modeling and scoring method which exploits the structural properties of TCR-pMHC complexes to predict the binding of cross-reactive peptides. We analyzed three mouse TCRs and one human TCR isolated from a patient with multiple sclerosis. Cross-reactive peptides for these TCRs were previously identified via yeast display coupled with deep sequencing, providing a robust dataset for evaluating our method. Modeling query peptides in their associated TCR-pMHC crystal structures, our method accurately selected the top binding peptides from sets containing more than a hundred thousand unique peptides. AVAILABILITY AND IMPLEMENTATION: Analyses were performed using custom Python and R scripts available at https://github.com/weng-lab/antigen-predict. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

4.
Proteins ; 88(8): 1050-1054, 2020 08.
Article in English | MEDLINE | ID: mdl-31994784

ABSTRACT

We report docking performance on the six targets of Critical Assessment of PRedicted Interactions (CAPRI) rounds 39-45 that involved heteromeric protein-protein interactions and had the solved structures released since the rounds were held. Our general strategy involved protein-protein docking using ZDOCK, reranking using IRAD, and structural refinement using Rosetta. In addition, we made extensive use of experimental data to guide our docking runs. All the experimental information at the amino-acid level proved correct. However, for two targets, we also used protein-complex structures as templates for modeling interfaces. These resulted in incorrect predictions, presumably due to the low sequence identity between the targets and templates. Albeit a small number of targets, the performance described here compared somewhat less favorably with our previous CAPRI reports, which may be due to the CAPRI targets being increasingly challenging.


Subject(s)
Molecular Docking Simulation , Peptides/chemistry , Proteins/chemistry , Software , Amino Acid Sequence , Binding Sites , Humans , Ligands , Peptides/metabolism , Protein Binding , Protein Conformation, alpha-Helical , Protein Conformation, beta-Strand , Protein Interaction Domains and Motifs , Protein Interaction Mapping , Protein Multimerization , Proteins/metabolism , Research Design , Structural Homology, Protein
5.
Bioinformatics ; 36(3): 751-757, 2020 02 01.
Article in English | MEDLINE | ID: mdl-31393558

ABSTRACT

MOTIVATION: Template-based and template-free methods have both been widely used in predicting the structures of protein-protein complexes. Template-based modeling is effective when a reliable template is available, while template-free methods are required for predicting the binding modes or interfaces that have not been previously observed. Our goal is to combine the two methods to improve computational protein-protein complex structure prediction. RESULTS: Here, we present a method to identify and combine high-confidence predictions of a template-based method (SPRING) with a template-free method (ZDOCK). Cross-validated using the protein-protein docking benchmark version 5.0, our method (ZING) achieved a success rate of 68.2%, outperforming SPRING and ZDOCK, with success rates of 52.1% and 35.9% respectively, when the top 10 predictions were considered per test case. In conclusion, a statistics-based method that evaluates and integrates predictions from template-based and template-free methods is more successful than either method independently. AVAILABILITY AND IMPLEMENTATION: ZING is available for download as a Github repository (https://github.com/weng-lab/ZING.git). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Subject(s)
Algorithms , Software , Benchmarking , Computational Biology , Proteins
6.
J Comput Chem ; 40(2): 527-531, 2019 01 15.
Article in English | MEDLINE | ID: mdl-30548653

ABSTRACT

Luciferin analogues that display bioluminescence at specific wavelengths can broaden the scope of imaging and biological assays, but the need to design and synthesize many new analogues can be time-consuming. Employing a collection of previously synthesized and characterized aminoluciferin analogues, we demonstrate that computational TD-DFT methods can accurately reproduce and further explain the experimentally measured fluorescence wavelengths. The best computational approach yields a correlation with experiment of r = 0.98, which we expect to guide and accelerate the further development of luciferin analogues. © 2018 Wiley Periodicals, Inc.


Subject(s)
Density Functional Theory , Firefly Luciferin/chemistry , Fluorescence , Molecular Structure
7.
J Mol Biol ; 430(12): 1814-1828, 2018 06 08.
Article in English | MEDLINE | ID: mdl-29665372

ABSTRACT

Ab initio protein-protein docking algorithms often rely on experimental data to identify the most likely complex structure. We integrated protein-protein docking with the experimental data of chemical cross-linking followed by mass spectrometry. We tested our approach using 19 cases that resulted from an exhaustive search of the Protein Data Bank for protein complexes with cross-links identified in our experiments. We implemented cross-links as constraints based on Euclidean distance or void-volume distance. For most test cases, the rank of the top-scoring near-native prediction was improved by at least twofold compared with docking without the cross-link information, and the success rate for the top 5 predictions nearly tripled. Our results demonstrate the delicate balance between retaining correct predictions and eliminating false positives. Several test cases had multiple components with distinct interfaces, and we present an approach for assigning cross-links to the interfaces. Employing the symmetry information for these cases further improved the performance of complex structure prediction.


Subject(s)
Algorithms , Proteins/chemistry , Computational Biology/methods , Cross-Linking Reagents , Databases, Protein , Models, Molecular , Molecular Docking Simulation , Protein Binding , Protein Conformation
8.
Bioinformatics ; 33(12): 1806-1813, 2017 Jun 15.
Article in English | MEDLINE | ID: mdl-28200016

ABSTRACT

MOTIVATION: In order to function, proteins frequently bind to one another and form 3D assemblies. Knowledge of the atomic details of these structures helps our understanding of how proteins work together, how mutations can lead to disease, and facilitates the designing of drugs which prevent or mimic the interaction. RESULTS: Atomic modeling of protein-protein interactions requires the selection of near-native structures from a set of docked poses based on their calculable properties. By considering this as an information retrieval problem, we have adapted methods developed for Internet search ranking and electoral voting into IRaPPA, a pipeline integrating biophysical properties. The approach enhances the identification of near-native structures when applied to four docking methods, resulting in a near-native appearing in the top 10 solutions for up to 50% of complexes benchmarked, and up to 70% in the top 100. AVAILABILITY AND IMPLEMENTATION: IRaPPA has been implemented in the SwarmDock server ( http://bmm.crick.ac.uk/∼SwarmDock/ ), pyDock server ( http://life.bsc.es/pid/pydockrescoring/ ) and ZDOCK server ( http://zdock.umassmed.edu/ ), with code available on request. CONTACT: moal@ebi.ac.uk. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Subject(s)
Information Storage and Retrieval/methods , Molecular Docking Simulation , Protein Conformation , Protein Interaction Mapping/methods , Software , Internet
9.
Proteins ; 85(3): 408-416, 2017 03.
Article in English | MEDLINE | ID: mdl-27718275

ABSTRACT

We report the performance of our protein-protein docking pipeline, including the ZDOCK rigid-body docking algorithm, on 19 targets in CAPRI rounds 28-34. Following the docking step, we reranked the ZDOCK predictions using the IRAD scoring function, pruned redundant predictions, performed energy landscape analysis, and utilized our interface prediction approach RCF. In addition, we applied constraints to the search space based on biological information that we culled from the literature, which increased the chance of making a correct prediction. For all but two targets we were able to find and apply biological information and we found the information to be highly accurate, indicating that effective incorporation of biological information is an important component for protein-protein docking. Proteins 2017; 85:408-416. © 2016 Wiley Periodicals, Inc.


Subject(s)
Algorithms , Computational Biology/methods , Molecular Docking Simulation/methods , Proteins/chemistry , Benchmarking , Binding Sites , Cluster Analysis , Databases, Protein , Protein Binding , Protein Conformation , Protein Interaction Mapping , Research Design , Software , Structural Homology, Protein , Thermodynamics
10.
Proteins ; 84 Suppl 1: 323-48, 2016 09.
Article in English | MEDLINE | ID: mdl-27122118

ABSTRACT

We present the results for CAPRI Round 30, the first joint CASP-CAPRI experiment, which brought together experts from the protein structure prediction and protein-protein docking communities. The Round comprised 25 targets from amongst those submitted for the CASP11 prediction experiment of 2014. The targets included mostly homodimers, a few homotetramers, and two heterodimers, and comprised protein chains that could readily be modeled using templates from the Protein Data Bank. On average 24 CAPRI groups and 7 CASP groups submitted docking predictions for each target, and 12 CAPRI groups per target participated in the CAPRI scoring experiment. In total more than 9500 models were assessed against the 3D structures of the corresponding target complexes. Results show that the prediction of homodimer assemblies by homology modeling techniques and docking calculations is quite successful for targets featuring large enough subunit interfaces to represent stable associations. Targets with ambiguous or inaccurate oligomeric state assignments, often featuring crystal contact-sized interfaces, represented a confounding factor. For those, a much poorer prediction performance was achieved, while nonetheless often providing helpful clues on the correct oligomeric state of the protein. The prediction performance was very poor for genuine tetrameric targets, where the inaccuracy of the homology-built subunit models and the smaller pair-wise interfaces severely limited the ability to derive the correct assembly mode. Our analysis also shows that docking procedures tend to perform better than standard homology modeling techniques and that highly accurate models of the protein components are not always required to identify their association modes with acceptable accuracy. Proteins 2016; 84(Suppl 1):323-348. © 2016 Wiley Periodicals, Inc.


Subject(s)
Computational Biology/statistics & numerical data , Models, Statistical , Molecular Docking Simulation , Molecular Dynamics Simulation , Proteins/chemistry , Software , Algorithms , Amino Acid Motifs , Bacteria/chemistry , Binding Sites , Computational Biology/methods , Humans , International Cooperation , Internet , Protein Binding , Protein Conformation, alpha-Helical , Protein Conformation, beta-Strand , Protein Folding , Protein Interaction Domains and Motifs , Protein Multimerization , Protein Structure, Tertiary , Sequence Homology, Amino Acid , Thermodynamics
11.
J Mol Biol ; 427(19): 3031-41, 2015 Sep 25.
Article in English | MEDLINE | ID: mdl-26231283

ABSTRACT

We present an updated and integrated version of our widely used protein-protein docking and binding affinity benchmarks. The benchmarks consist of non-redundant, high-quality structures of protein-protein complexes along with the unbound structures of their components. Fifty-five new complexes were added to the docking benchmark, 35 of which have experimentally measured binding affinities. These updated docking and affinity benchmarks now contain 230 and 179 entries, respectively. In particular, the number of antibody-antigen complexes has increased significantly, by 67% and 74% in the docking and affinity benchmarks, respectively. We tested previously developed docking and affinity prediction algorithms on the new cases. Considering only the top 10 docking predictions per benchmark case, a prediction accuracy of 38% is achieved on all 55 cases and up to 50% for the 32 rigid-body cases only. Predicted affinity scores are found to correlate with experimental binding energies up to r=0.52 overall and r=0.72 for the rigid complexes.


Subject(s)
Molecular Docking Simulation , Protein Interaction Mapping/methods , Proteins/metabolism , Algorithms , Animals , Humans , Polynucleotide Adenylyltransferase/chemistry , Polynucleotide Adenylyltransferase/metabolism , Protein Binding , Protein Conformation , Proteins/chemistry , Software , Thermodynamics , Vaccinia virus/chemistry , Vaccinia virus/metabolism , Viral Proteins/chemistry , Viral Proteins/metabolism
12.
BMC Bioinformatics ; 15: 319, 2014 Sep 26.
Article in English | MEDLINE | ID: mdl-25260513

ABSTRACT

BACKGROUND: T cell receptors (TCRs) can recognize diverse lipid and metabolite antigens presented by MHC-like molecules CD1 and MR1, and the molecular basis of many of these interactions has not been determined. Here we applied our protein docking algorithm TCRFlexDock, previously developed to perform docking of TCRs to peptide-MHC (pMHC) molecules, to predict the binding of αß and γδ TCRs to CD1 and MR1, starting with the structures of the unbound molecules. RESULTS: Evaluating against TCR-CD1d complexes with crystal structures, we achieved near-native structures in the top 20 models for two out of four cases, and an acceptable-rated prediction for a third case. We also predicted the structure of an interaction between a MAIT TCR and MR1-antigen that has not been structurally characterized, yielding a top-ranked model that agreed remarkably with a characterized TCR-MR1-antigen structure that has a nearly identical TCR α chain but a different ß chain, highlighting the likely dominance of the conserved α chain in MR1-antigen recognition. Docking performance was improved by re-training our scoring function with a set of TCR-pMHC complexes, and for a case with an outlier binding mode, we found that alternative docking start positions improved predictive accuracy. We then performed unbound docking with two mycolyl-lipid specific TCRs that recognize lipid-bound CD1b, which represent a class of interactions that is not structurally characterized. Highly-ranked models of these complexes showed remarkable agreement between their binding topologies, as expected based on their shared germline sequences, while differences in residue-level interactions with their respective antigens point to possible mechanisms underlying their distinct specificities. CONCLUSIONS: Together these results indicate that flexible docking simulations can provide accurate models and atomic-level insights into TCR recognition of MHC-like molecules presenting lipid and other small molecule antigens.


Subject(s)
Antigens, CD1/metabolism , Antigens, CD1d/metabolism , Molecular Docking Simulation/methods , Receptors, Antigen, T-Cell, alpha-beta/metabolism , Receptors, Antigen, T-Cell, gamma-delta/metabolism , Vitamins/metabolism , Algorithms , Animals , Antigens, CD1/chemistry , Antigens, CD1d/chemistry , Galactosylceramides/chemistry , Galactosylceramides/metabolism , Humans , Receptors, Antigen, T-Cell, alpha-beta/chemistry , Receptors, Antigen, T-Cell, gamma-delta/chemistry , Vitamins/chemistry
13.
Cell ; 157(6): 1353-1363, 2014 Jun 05.
Article in English | MEDLINE | ID: mdl-24906152

ABSTRACT

piRNAs guide an adaptive genome defense system that silences transposons during germline development. The Drosophila HP1 homolog Rhino is required for germline piRNA production. We show that Rhino binds specifically to the heterochromatic clusters that produce piRNA precursors, and that binding directly correlates with piRNA production. Rhino colocalizes to germline nuclear foci with Rai1/DXO-related protein Cuff and the DEAD box protein UAP56, which are also required for germline piRNA production. RNA sequencing indicates that most cluster transcripts are not spliced and that rhino, cuff, and uap56 mutations increase expression of spliced cluster transcripts over 100-fold. LacI::Rhino fusion protein binding suppresses splicing of a reporter transgene and is sufficient to trigger piRNA production from a trans combination of sense and antisense reporters. We therefore propose that Rhino anchors a nuclear complex that suppresses cluster transcript splicing and speculate that stalled splicing differentiates piRNA precursors from mRNAs.


Subject(s)
Chromosomal Proteins, Non-Histone/metabolism , Drosophila Proteins/metabolism , RNA Splicing , RNA, Small Interfering/genetics , Animals , DEAD-box RNA Helicases/metabolism , Drosophila Proteins/genetics , Drosophila melanogaster/genetics , Drosophila melanogaster/metabolism , Female , Ovary/metabolism , RNA, Small Interfering/metabolism , RNA-Binding Proteins/metabolism , SOXD Transcription Factors/genetics
14.
Bioinformatics ; 30(12): 1771-3, 2014 Jun 15.
Article in English | MEDLINE | ID: mdl-24532726

ABSTRACT

SUMMARY: Protein-protein interactions are essential to cellular and immune function, and in many cases, because of the absence of an experimentally determined structure of the complex, these interactions must be modeled to obtain an understanding of their molecular basis. We present a user-friendly protein docking server, based on the rigid-body docking programs ZDOCK and M-ZDOCK, to predict structures of protein-protein complexes and symmetric multimers. With a goal of providing an accessible and intuitive interface, we provide options for users to guide the scoring and the selection of output models, in addition to dynamic visualization of input structures and output docking models. This server enables the research community to easily and quickly produce structural models of protein-protein complexes and symmetric multimers for their own analysis. AVAILABILITY: The ZDOCK server is freely available to all academic and non-profit users at: http://zdock.umassmed.edu. No registration is required.


Subject(s)
Molecular Docking Simulation/methods , Multiprotein Complexes/chemistry , Software , Algorithms , Protein Multimerization
15.
Proteins ; 82(1): 57-66, 2014 Jan.
Article in English | MEDLINE | ID: mdl-23836482

ABSTRACT

We developed a method called residue contact frequency (RCF), which uses the complex structures generated by the protein-protein docking algorithm ZDOCK to predict interface residues. Unlike interface prediction algorithms that are based on monomers alone, RCF is binding partner specific. We evaluated the performance of RCF using the area under the precision-recall (PR) curve (AUC) on a large protein docking Benchmark. RCF (AUC = 0.44) performed as well as meta-PPISP (AUC = 0.43), which is one of the best monomer-based interface prediction methods. In addition, we test a support vector machine (SVM) to combine RCF with meta-PPISP and another monomer-based interface prediction algorithm Evolutionary Trace to further improve the performance. We found that the SVM that combined RCF and meta-PPISP achieved the best performance (AUC = 0.47). We used RCF to predict the binding interfaces of proteins that can bind to multiple partners and RCF was able to correctly predict interface residues that are unique for the respective binding partners. Furthermore, we found that residues that contributed greatly to binding affinity (hotspot residues) had significantly higher RCF than other residues.


Subject(s)
Algorithms , Models, Molecular , Protein Interaction Maps , ran GTP-Binding Protein/chemistry , Area Under Curve , Protein Binding , Support Vector Machine
16.
Brief Bioinform ; 15(2): 169-76, 2014 Mar.
Article in English | MEDLINE | ID: mdl-23818491

ABSTRACT

We compared the performance of template-free (docking) and template-based methods for the prediction of protein-protein complex structures. We found similar performance for a template-based method based on threading (COTH) and another template-based method based on structural alignment (PRISM). The template-based methods showed similar performance to a docking method (ZDOCK) when the latter was allowed one prediction for each complex, but when the same number of predictions was allowed for each method, the docking approach outperformed template-based approaches. We identified strengths and weaknesses in each method. Template-based approaches were better able to handle complexes that involved conformational changes upon binding. Furthermore, the threading-based and docking methods were better than the structural-alignment-based method for enzyme-inhibitor complex prediction. Finally, we show that the near-native (correct) predictions were generally not shared by the various approaches, suggesting that integrating their results could be the superior strategy.


Subject(s)
Protein Interaction Domains and Motifs , Protein Interaction Mapping/statistics & numerical data , Algorithms , Computational Biology/methods , Databases, Protein , Protein Conformation , Sequence Alignment/statistics & numerical data , Software , Structural Homology, Protein
17.
Proteins ; 82(4): 620-32, 2014 Apr.
Article in English | MEDLINE | ID: mdl-24155158

ABSTRACT

We report the first assessment of blind predictions of water positions at protein-protein interfaces, performed as part of the critical assessment of predicted interactions (CAPRI) community-wide experiment. Groups submitting docking predictions for the complex of the DNase domain of colicin E2 and Im2 immunity protein (CAPRI Target 47), were invited to predict the positions of interfacial water molecules using the method of their choice. The predictions-20 groups submitted a total of 195 models-were assessed by measuring the recall fraction of water-mediated protein contacts. Of the 176 high- or medium-quality docking models-a very good docking performance per se-only 44% had a recall fraction above 0.3, and a mere 6% above 0.5. The actual water positions were in general predicted to an accuracy level no better than 1.5 Å, and even in good models about half of the contacts represented false positives. This notwithstanding, three hotspot interface water positions were quite well predicted, and so was one of the water positions that is believed to stabilize the loop that confers specificity in these complexes. Overall the best interface water predictions was achieved by groups that also produced high-quality docking models, indicating that accurate modelling of the protein portion is a determinant factor. The use of established molecular mechanics force fields, coupled to sampling and optimization procedures also seemed to confer an advantage. Insights gained from this analysis should help improve the prediction of protein-water interactions and their role in stabilizing protein complexes.


Subject(s)
Colicins/chemistry , Protein Interaction Mapping , Water/chemistry , Algorithms , Computational Biology , Models, Molecular , Molecular Docking Simulation , Protein Conformation
18.
Proteins ; 81(12): 2175-82, 2013 Dec.
Article in English | MEDLINE | ID: mdl-24123140

ABSTRACT

We report the performance of our approaches for protein-protein docking and interface analysis in CAPRI rounds 20-26. At the core of our pipeline was the ZDOCK program for rigid-body protein-protein docking. We then reranked the ZDOCK predictions using the ZRANK or IRAD scoring functions, pruned and analyzed energy landscapes using clustering, and analyzed the docking results using our interface prediction approach RCF. When possible, we used biological information from the literature to apply constraints to the search space during or after the ZDOCK runs. For approximately half of the standard docking challenges we made at least one prediction that was acceptable or better. For the scoring challenges we made acceptable or better predictions for all but one target. This indicates that our scoring functions are generally able to select the correct binding mode.


Subject(s)
Computational Biology/methods , Protein Interaction Mapping/methods , Proteins/chemistry , Algorithms , Bacterial Proteins/chemistry , Cluster Analysis , Databases, Protein , Models, Molecular , Molecular Conformation , Protein Binding , Protein Conformation , Viral Proteins/chemistry
19.
PLoS One ; 8(2): e56645, 2013.
Article in English | MEDLINE | ID: mdl-23437194

ABSTRACT

We present a two-stage hybrid-resolution approach for rigid-body protein-protein docking. The first stage is carried out at low-resolution (15°) angular sampling. In the second stage, we sample promising regions from the first stage at a higher resolution of 6°. The hybrid-resolution approach produces the same results as a 6° uniform sampling docking run, but uses only 17% of the computational time. We also show that the angular distance can be used successfully in clustering and pruning algorithms, as well as the characterization of energy funnels. Traditionally the root-mean-square-distance is used in these algorithms, but the evaluation is computationally expensive as it depends on both the rotational and translational parameters of the docking solutions. In contrast, the angular distances only depend on the rotational parameters, which are generally fixed for all docking runs. Hence the angular distances can be pre-computed, and do not add computational time to the post-processing of rigid-body docking results.


Subject(s)
Algorithms , Computational Biology , Molecular Docking Simulation , Proteins/chemistry , Protein Binding , Protein Conformation , Protein Interaction Mapping , Software
20.
Cell ; 151(4): 871-884, 2012 Nov 09.
Article in English | MEDLINE | ID: mdl-23141543

ABSTRACT

piRNAs silence transposons during germline development. In Drosophila, transcripts from heterochromatic clusters are processed into primary piRNAs in the perinuclear nuage. The nuclear DEAD box protein UAP56 has been previously implicated in mRNA splicing and export, whereas the DEAD box protein Vasa has an established role in piRNA production and localizes to nuage with the piRNA binding PIWI proteins Ago3 and Aub. We show that UAP56 colocalizes with the cluster-associated HP1 variant Rhino, that nuage granules containing Vasa localize directly across the nuclear envelope from cluster foci containing UAP56 and Rhino, and that cluster transcripts immunoprecipitate with both Vasa and UAP56. Significantly, a charge-substitution mutation that alters a conserved surface residue in UAP56 disrupts colocalization with Rhino, germline piRNA production, transposon silencing, and perinuclear localization of Vasa. We therefore propose that UAP56 and Vasa function in a piRNA-processing compartment that spans the nuclear envelope.


Subject(s)
DEAD-box RNA Helicases/metabolism , Drosophila Proteins/metabolism , Drosophila melanogaster/metabolism , Germ Cells/metabolism , RNA, Small Interfering/metabolism , Animals , DNA Damage , DNA Transposable Elements , Female , Germ Cells/cytology , Male , Nuclear Envelope/metabolism
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