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Download fileEvaluation of flow cytometry automated data analysis platform performance for rare event detection
conference contribution
posted on 2020-06-29, 13:13 authored by Melissa Cheung, Jonathan Campbell, Julian Braybrook, Rob ThomasRob Thomas, Jon PetzingJon PetzingFlow cytometry is a widely used technique for the detection and quantification of low frequency or rare cell populations at limits of detection (LOD) of 0.1% or lower, such as circulating tumour cells and haematopoietic stem cells. An increasing number of computational tools are available for automated gating of flow cytometry data. These tools have the capability to eliminate operator variation from traditional manual gating. Nevertheless, the potential for variation in data outputs arising from analysis of the same dataset using different algorithms means that research is needed to define the confidence in the use of automated data analysis software platforms for identifying rare cell populations.
History
School
- Mechanical, Electrical and Manufacturing Engineering
Source
EPSRC and MRC CDTs – Future Leaders Virtual Conference 2020Publisher
UK Society for BiomaterialsVersion
- AM (Accepted Manuscript)
Acceptance date
2020-05-01Publication date
2020-06-25Publisher version
Language
- en