2021
DOI: 10.1002/cyto.a.24320
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Current trends in flow cytometry automated data analysis software

Abstract: Automated flow cytometry (FC) data analysis tools for cell population identification and characterization are increasingly being used in academic, biotechnology, pharmaceutical, and clinical laboratories. The development of these computational methods is designed to overcome reproducibility and process bottleneck issues in manual gating, however, the take‐up of these tools remains (anecdotally) low. Here, we performed a comprehensive literature survey of state‐of‐the‐art computational tools typically published… Show more

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Cited by 56 publications
(50 citation statements)
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“…b. When the data require high-dimensional reduction analysis or automated approaches (Cheung et al, 2021), software packages such as viSNE, UMAP, Flow-SOM, SPADE, or CITRUS (Saeys, Van Gassen, & Lambrecht, 2016) may be employed.…”
Section: Sample Acquisitionmentioning
confidence: 99%
“…b. When the data require high-dimensional reduction analysis or automated approaches (Cheung et al, 2021), software packages such as viSNE, UMAP, Flow-SOM, SPADE, or CITRUS (Saeys, Van Gassen, & Lambrecht, 2016) may be employed.…”
Section: Sample Acquisitionmentioning
confidence: 99%
“…Alternatively, automated computational methods have been developed to reduce subjective bias and automate data processing. 5 Although computational tools succeed in some cases, several new challenges still arise. For example, the number of clusters (cell populations) is often hard to determine for a large-scale single-cell dataset.…”
Section: Main Textmentioning
confidence: 99%
“…Given such data with high dimensions and throughputs, user-friendly tools are essential for biologists to draw reliable conclusions, and many tools have been developed recently. 5 As cytometry techniques evolve rapidly, we foresee that more software will become available, and a comprehensive benchmark will be necessary to guide scientists to choose the appropriate tool to analyze their data.…”
Section: Main Textmentioning
confidence: 99%
“…There has been significant progress in automated data analysis in recent years with multiple efforts in developing supervised (and non-supervised) machine learning algorithms to analyse FC data through cluster analysis and pattern recognition [17][18][19][20]. Whilst these provide significant and varied toolsets for analysing highly dimensional data in a shorter time (reducing human input and human factored measurement variation), the potential for intrinsic variability of these methods results in the need for an independent evaluation through a validation process.…”
Section: Introductionmentioning
confidence: 99%