Accelerating Molecular Design of Cage Energetic Materials with Zero Oxygen Balance through Large-Scale Database Search

Author(s):  
Linyuan Wen ◽  
Tao Yu ◽  
Weipeng Lai ◽  
Jinwen Shi ◽  
Maochang Liu ◽  
...  
2020 ◽  
Vol 11 (1) ◽  
Author(s):  
Pan Fang ◽  
Yanlong Ji ◽  
Ivan Silbern ◽  
Carmen Doebele ◽  
Momchil Ninov ◽  
...  

Abstract Regulation of protein N-glycosylation is essential in human cells. However, large-scale, accurate, and site-specific quantification of glycosylation is still technically challenging. We here introduce SugarQuant, an integrated mass spectrometry-based pipeline comprising protein aggregation capture (PAC)-based sample preparation, multi-notch MS3 acquisition (Glyco-SPS-MS3) and a data-processing tool (GlycoBinder) that enables confident identification and quantification of intact glycopeptides in complex biological samples. PAC significantly reduces sample-handling time without compromising sensitivity. Glyco-SPS-MS3 combines high-resolution MS2 and MS3 scans, resulting in enhanced reporter signals of isobaric mass tags, improved detection of N-glycopeptide fragments, and lowered interference in multiplexed quantification. GlycoBinder enables streamlined processing of Glyco-SPS-MS3 data, followed by a two-step database search, which increases the identification rates of glycopeptides by 22% compared with conventional strategies. We apply SugarQuant to identify and quantify more than 5,000 unique glycoforms in Burkitt’s lymphoma cells, and determine site-specific glycosylation changes that occurred upon inhibition of fucosylation at high confidence.


2005 ◽  
Vol 896 ◽  
Author(s):  
Denise Meuken ◽  
Maria Martines Pacheco ◽  
Ries Verbeek ◽  
Richard Bouma ◽  
L Katgerman

AbstractDeformation of energetic materials may cause undesired reactions and therefore hazardous situations. The deformation of an energetic material and in particular shear deformation is studied in this paper. Understanding of the phenomena leading to shear initiation is not only necessary to explain for example the response of munitions to intrusions or large deformations imposed in storage and transportation accidents. A fundamental understanding of shear initiation also provides the opportunity to initiate energetic materials in a different and controlled manner, and possibly with a tailored reaction rate of the material. Several small and large scale experiments have been performed in which a shear deformation is imposed onto high explosives as well as thermite based reactive materials. Experiments are numerically simulated in order to correlate small and large scale experiments and understand the initiation mechanisms.


2021 ◽  
Author(s):  
Fergus Imrie ◽  
Thomas E. Hadfield ◽  
Anthony R. Bradley ◽  
Charlotte M. Deane

AbstractGenerative models have increasingly been proposed as a solution to the molecular design problem. However, it has proved challenging to control the design process or incorporate prior knowledge, limiting their practical use in drug discovery. In particular, generative methods have made limited use of three-dimensional (3D) structural information even though this is critical to binding. This work describes a method to incorporate such information and demonstrates the benefit of doing so. We combine an existing graph-based deep generative model, DeLinker, with a convolutional neural network to utilise physically-meaningful 3D representations of molecules and target pharmacophores. We apply our model, DEVELOP, to both linker and R-group design, demonstrating its suitability for both hit-to-lead and lead optimisation. The 3D pharmacophoric information results in improved generation and allows greater control of the design process. In multiple large-scale evaluations, we show that including 3D pharmacophoric constraints results in substantial improvements in the quality of generated molecules. On a challenging test set derived from PDBbind, our model improves the proportion of generated molecules with high 3D similarity to the original molecule by over 300%. In addition, DEVELOP recovers 10 × more of the original molecules compared to the base-line DeLinker method. Our approach is general-purpose, readily modifiable to alternate 3D representations, and can be incorporated into other generative frameworks. Code is available at https://github.com/oxpig/DEVELOP.


2021 ◽  
Author(s):  
Kenneth Atz ◽  
Clemens Isert ◽  
Markus N. A. Böcker ◽  
José Jiménez-Luna ◽  
Gisbert Schneider

Many molecular design tasks benefit from fast and accurate calculations of quantum-mechanical (QM) properties. However, the computational cost of QM methods applied to drug-like molecules currently renders large-scale applications of quantum chemistry challenging. Aiming to mitigate this problem, we developed DelFTa, an open-source toolbox for the prediction of electronic properties of drug-like molecules at the density functional (DFT) level of theory, using Δ-machine-learning. Δ-Learning corrects the prediction error (Δ) of a fast but inaccurate property calculation. DelFTa employs state-of-the-art three-dimensional message-passing neural networks trained on a large dataset of QM properties. It provides access to a wide array of quantum observables on the molecular, atomic and bond levels by predicting approximations to DFT values from a low-cost semiempirical baseline. Δ-Learning outperformed its direct-learning counterpart for most of the considered QM endpoints. The results suggest that predictions for non-covalent intra- and intermolecular interactions can be extrapolated to larger biomolecular systems. The software is fully open-sourced and features documented command-line and Python APIs.


2016 ◽  
Vol 4 (15) ◽  
pp. 5495-5504 ◽  
Author(s):  
X. X. Zhao ◽  
S. H. Li ◽  
Y. Wang ◽  
Y. C. Li ◽  
F. Q. Zhao ◽  
...  

The top of the pyramid of tetrazole-based CHNO energetic materials for density and OB: N-dinitromethyl functionalization is a new N-functionalized strategy for the synthesis of highly dense and oxygen-rich energetic materials.


2018 ◽  
Vol 8 (1) ◽  
Author(s):  
Ravi Chand Bollineni ◽  
Christian Jeffrey Koehler ◽  
Randi Elin Gislefoss ◽  
Jan Haug Anonsen ◽  
Bernd Thiede
Keyword(s):  

RSC Advances ◽  
2015 ◽  
Vol 5 (48) ◽  
pp. 38048-38055 ◽  
Author(s):  
Yan-Yan Guo ◽  
Wei-Jie Chi ◽  
Ze-Sheng Li ◽  
Quan-Song Li

Cycloalkane derivatives Cm(N–NO2)mexhibit notable detonation properties and remarkable stability for potential energetic materials.


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