scholarly journals DAFi: A Directed Recursive Filtering and Clustering Approach to Data-Driven Identification of Cell Populations from Polychromatic Flow Cytometry Data

2017 ◽  
Author(s):  
Alexandra J. Lee ◽  
Ivan Chang ◽  
Julie G. Burel ◽  
Cecilia S. Lindestam Arlehamn ◽  
Daniela Weiskopf ◽  
...  

AbstractComputational methods for identification of cell populations from high-dimensional flow cytometry data are changing the paradigm of cytometry bioinformatics. Data clustering is the most common computational approach to unsupervised identification of cell populations from multidimensional cytometry data. We found that combining recursive filtering and clustering with constraints converted from the user manual gating strategy can effectively identify overlapping and rare cell populations from smeared data that would have been difficult to resolve by either a single run of data clustering or manual segregation. We named this new method DAFi: Directed Automated Filtering and Identification of cell populations. Design of DAFi preserves the data-driven characteristics of unsupervised clustering for identifying novel cell-based biomarkers, but also makes the results interpretable to experimental scientists as in supervised classification through mapping and merging the high-dimensional data clusters into the user-defined 2D gating hierarchy. By recursive data filtering before clustering, DAFi can uncover small local clusters which are otherwise difficult to identify due to the statistical interference of the irrelevant major clusters. Quantitative assessment of cell type specific characteristics demonstrates that the population proportions calculated by DAFi, while being highly consistent with those by expert centralized manual gating, have smaller technical variance than those from individual manual gating analysis. Visual examination of the dot plots showed that the boundaries of the DAFi-identified cell populations followed the natural shapes of the data distributions. To further exemplify the utility of DAFi, we show that DAFi can incorporate the FLOCK clustering method to identify novel cell-based biomarkers. Implementation of DAFi supports options including clustering, bisecting, slope-based gating, and reversed filtering to meet various auto-gating needs from different scientific use cases.

2021 ◽  
Vol 12 ◽  
Author(s):  
Petra Baumgaertner ◽  
Martial Sankar ◽  
Fernanda Herrera ◽  
Fabrizio Benedetti ◽  
David Barras ◽  
...  

Data obtained with cytometry are increasingly complex and their interrogation impacts the type and quality of knowledge gained. Conventional supervised analyses are limited to pre-defined cell populations and do not exploit the full potential of data. Here, in the context of a clinical trial of cancer patients treated with radiotherapy, we performed longitudinal flow cytometry analyses to identify multiple distinct cell populations in circulating whole blood. We cross-compared the results from state-of-the-art recommended supervised analyses with results from MegaClust, a high-performance data-driven clustering algorithm allowing fast and robust identification of cell-type populations. Ten distinct cell populations were accurately identified by supervised analyses, including main T, B, dendritic cell (DC), natural killer (NK) and monocytes subsets. While all ten subsets were also identified with MegaClust, additional cell populations were revealed (e.g. CD4+HLA-DR+ and NKT-like subsets), and DC profiling was enriched by the assignment of additional subset-specific markers. Comparison between transcriptomic profiles of purified DC populations and publicly available datasets confirmed the accuracy of the unsupervised clustering algorithm and demonstrated its potential to identify rare and scarcely described cell subsets. Our observations show that data-driven analyses of cytometry data significantly enrich the amount and quality of knowledge gained, representing an important step in refining the characterization of immune responses.


2015 ◽  
Vol 89 (1) ◽  
pp. 71-88 ◽  
Author(s):  
Chiaowen Hsiao ◽  
Mengya Liu ◽  
Rick Stanton ◽  
Monnie McGee ◽  
Yu Qian ◽  
...  

2020 ◽  
Vol 93 (1) ◽  
Author(s):  
Caroline E. Roe ◽  
Madeline J. Hayes ◽  
Sierra M. Barone ◽  
Jonathan M. Irish

2016 ◽  
Vol 92 (2) ◽  
pp. 136-144 ◽  
Author(s):  
Daniel N. Tran ◽  
Sandy A. B. C. Smith ◽  
David A. Brown ◽  
Andrew J. C. Parker ◽  
Joanne E. Joseph ◽  
...  

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