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A Fragmentation Mechanism of Homemade Explosive TMDD Using DART-MS and Isotopic Labeling
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作者 Alexander Pedroza Zarate Fredy Colpas-Castillo +2 位作者 Daniel J.Alcazar Franco Wilman A.Cabrera-Lafaurie Eduardo A.Espinosa-Fuentes 《火炸药学报》 CSCD 北大核心 2018年第1期16-20,30,共6页
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Mutation Prediction for Coronaviruses Using Genome Sequence and Recurrent Neural Networks
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作者 Pranav Pushkar Christo Ananth +3 位作者 Preeti Nagrath Jehad F.Al-Amri Vividha Anand Nayyar 《Computers, Materials & Continua》 SCIE EI 2022年第10期1601-1619,共19页
The study of viruses and their genetics has been an opportunity as well as a challenge for the scientific community.The recent ongoing SARSCov2(Severe Acute Respiratory Syndrome)pandemic proved the unpreparedness for ... The study of viruses and their genetics has been an opportunity as well as a challenge for the scientific community.The recent ongoing SARSCov2(Severe Acute Respiratory Syndrome)pandemic proved the unpreparedness for these situations.Not only the countermeasures for the effect caused by virus need to be tackled but the mutation taking place in the very genome of the virus is needed to be kept in check frequently.One major way to find out more information about such pathogens is by extracting the genetic data of such viruses.Though genetic data of viruses have been cultured and stored as well as isolated in form of their genome sequences,there is still limited methods on what new viruses can be generated in future due to mutation.This research proposes a deep learning model to predict the genome sequences of the SARS-Cov2 virus using only the previous viruses of the coronaviridae family with the help of RNN-LSTM(Recurrent Neural Network-Long ShortTerm Memory)and RNN-GRU(Gated Recurrent Unit)so that in the future,several counter measures can be taken by predicting possible changes in the genome with the help of existing mutations in the virus.After the process of testing the model,the F1-recall came out to be more than 0.95.The mutation detection’s accuracy of both the models come out about 98.5%which shows the capability of the recurrent neural network to predict future changes in the genome of virus. 展开更多
关键词 COVID-19 genome sequence CORONAVIRIDAE RNN-LSTM RNN-GRU
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