Heavy water and (15) N labelling with NanoSIMS analysis reveals growth rate-dependent metabolic heterogeneity in chemostats
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Stable Isotope Phenotyping via Cluster Analysis of NanoSIMS Data As a Method for Characterizing Distinct Microbial Ecophysiologies and Sulfur-Cycling in the EnvironmentTrace incorporation of heavy water reveals slow and heterogeneous pathogen growth rates in cystic fibrosis sputum.Novel approaches in function-driven single-cell genomics.Capturing the genetic makeup of the active microbiome in situ.Autotrophic and heterotrophic acquisition of carbon and nitrogen by a mixotrophic chrysophyte established through stable isotope analysisPhenotypic heterogeneity driven by nutrient limitation promotes growth in fluctuating environments.Single-Cell Growth Rates in Photoautotrophic Populations Measured by Stable Isotope Probing and Resonance Raman Microspectrometry.The Differential Distribution of RAPTA-T in Non-Invasive and Invasive Breast Cancer Cells Correlates with Its Anti-Invasive and Anti-Metastatic Effects.Interrogating marine virus-host interactions and elemental transfer with BONCAT and nanoSIMS-based methods.Methyl-compound use and slow growth characterize microbial life in 2-km-deep subseafloor coal and shale beds.Tracking active groundwater microbes with D2 O labelling to understand their ecosystem function.Cell-to-cell variation and specialization in sugar metabolism in clonal bacterial populations.Quantitative imaging of deuterated metabolic tracers in biological tissues with nanoscale secondary ion mass spectrometry.NanoSIMS analysis of an isotopically labelled organometallic ruthenium(II) drug to probe its distribution and state in vitro.Division-Based, Growth Rate Diversity in Bacteria.Calculation of Single Cell Assimilation Rates From SIP-NanoSIMS-Derived Isotope Ratios: A Comprehensive Approach
P2860
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P2860
Heavy water and (15) N labelling with NanoSIMS analysis reveals growth rate-dependent metabolic heterogeneity in chemostats
description
2015 nî lūn-bûn
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2015年の論文
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2015年論文
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2015年論文
@zh-hant
2015年論文
@zh-hk
2015年論文
@zh-mo
2015年論文
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2015年论文
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2015年论文
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2015年论文
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name
Heavy water and (15) N labelli ...... ic heterogeneity in chemostats
@ast
Heavy water and (15) N labelli ...... ic heterogeneity in chemostats
@en
type
label
Heavy water and (15) N labelli ...... ic heterogeneity in chemostats
@ast
Heavy water and (15) N labelli ...... ic heterogeneity in chemostats
@en
prefLabel
Heavy water and (15) N labelli ...... ic heterogeneity in chemostats
@ast
Heavy water and (15) N labelli ...... ic heterogeneity in chemostats
@en
P2093
P2860
P356
P1476
Heavy water and (15) N labelli ...... ic heterogeneity in chemostats
@en
P2093
Abigail Green-Saxena
Dianne K Newman
Sebastian H Kopf
Yunbin Guan
P2860
P304
P356
10.1111/1462-2920.12752
P577
2015-03-27T00:00:00Z