Last updated on 2023-05-02T18:08:23+00:00 by LN Anderson Fungal Monoisolate Multi-Omics Data Package DOI "KS4A-Omics1.0_FspDS68" Molecular mechanisms underlying fungal mineral weathering and nutrient translocation in low nutrient environments remain poorly resolved, due to the lack of a platform for...
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Last updated on 2024-02-11T22:41:43+00:00 by LN Anderson Influenza A Virus Experiment ICL105 Metadata The purpose of this experiment was to evaluate the host epigenetic response to Influenza A virus (subtype H5N1) infection. Sample data was obtained from human lung adenocarcinoma cells (Calu-3) and...
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Last updated on 2024-02-11T22:41:43+00:00 by LN Anderson Influenza A Virus Experiment ICL106 Metadata The purpose of this experiment was to evaluate the human host epigenetic response to Influenza A virus (subtype H5N1) infection. Samples were obtained from human lung adenocarcinoma cell line (Calu...
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This dataset includes one baseline and three cybersecurity based scenarios utilizing the IEEE 9 Bus Model. This instantiation of the IEEE 9 model was built utilizing the OpalRT Simulator ePhasorsim module, with Bus 7 represented by hardware in the loop (HiL). The HiL was represented by two SEL351s...
The utility of transfer learning to improve the performance of deep learning in axon segmentation Data NOTE: If the download button doesn't work, please find the data here . Data: All the input and labeled volumes tf-logs: Tensorflow logs, view with command "tensorboard --logdir [name of folder]"...