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Automated analysis of bacterial flow cytometry data with FlowGateNIST.

David Ross
Published in: PloS one (2021)
Flow cytometry is commonly used to evaluate the performance of engineered bacteria. With increasing use of high-throughput experimental methods, there is a need for automated analysis methods for flow cytometry data. Here, we describe FlowGateNIST, a Python package for automated analysis of bacterial flow cytometry data. The main components of FlowGateNIST perform automatic gating to differentiate between cells and background events and then between singlet and multiplet events. FlowGateNIST also includes a method for automatic calibration of fluorescence signals using fluorescence calibration beads. FlowGateNIST is open source and freely available with tutorials and example data to facilitate adoption by users with minimal programming experience.
Keyphrases
  • flow cytometry
  • high throughput
  • electronic health record
  • deep learning
  • machine learning
  • big data
  • artificial intelligence
  • single molecule
  • single cell
  • energy transfer
  • cell death