Omics-LHV, West Nile Experiment WCD003 The purpose of this West Nile experiment was to obtain samples for omics analysis in mouse dendritic cell response to wild-type West Nile virus (WNV). Overall Design: Mouse dendritic cells (2 x 10^5) were treated with wild-type WNV and collected in parallel...
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Systems Virology Lethal Human Virus, SARS-CoV Experiment SCL009 New uploads pending The purpose of this SARS experiment was to obtain samples for metabolome and lipidome analysis comparing wild type virus (icSARS) infected Human lung tissue 2B4 (Calu-3 clonal derivative) cells to mock infected cells...
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Systems Virology Lethal Human Virus, SARS-CoV Experiment SCL012 New uploads pending The purpose of this SARS experiment was to obtain samples for metabolome and lipidome analysis comparing wild type virus (icSARS) vs icSARS CoV deltaORF6 infected Human lung tissue 2B4 (Calu-3 clonal derivative)...
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Please cite as : Anderson L.N., J.E. McDermott, and R.S. McClure. 2020. WA-IsoC_MSC1.1.0 (Amplicon 16S rRNA, WA). [Data Set] PNNL DataHub. https://doi.org/10.25584/WAIsoCMSC1/1635272 The soil microbiome is central to the cycling of carbon and other nutrients and to the promotion of plant growth...
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ProxyTSPRD profiles are collected using NVIDIA Nsight Systems version 2020.3.2.6-87e152c and capture computational patterns from training deep learning-based time-series proxy-applications on four different levels: models (Long short-term Memory and Convolutional Neural Network), DL frameworks...