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Experiment Overview

Repository ID: FR-FCM-Z8MQ Experiment name: SingletSeeker - An Unsupervised Clustering Approach for Automated Singlet Discrimination in Cytometry MIFlowCyt score: 24.75%
Primary researcher: Josef Spidlen PI/manager: Josef Spidlen Uploaded by: Josef Spidlen
Experiment dates: 2023-12-01 - Dataset uploaded: Dec 2024 Last updated: Dec 2024
Keywords: [Clustering] [Imaging cytometry] [algorithm] [imaging] [FlowJo] [Singlets] [AI] [ML] [BD] [DBSCAN] [BD FACSDiscover S8] Manuscripts: [39584453]
Organizations: BD Biosciences, San Jose, (USA)
Purpose: Prior to analyzing this data, it is common to exclude any events that contain two or more cells, multiplets, to ensure downstream analysis and quantification is of single-cell events, singlets, only. The process of singlet discrimination is critical yet fundamentally subjective and time-consuming; it is performed manually by the user, where the proper exclusion of multiplets depends on the user’s expertise and often varies from experiment to experiment. To address this problem, we have developed an algorithm to automatically discriminate singlets from other unwanted events such as multiplets and debris. Using parameters derived from imaging, the algorithm first identifies high-density clusters of events using a density-based clustering algorithm, and then classifies the clusters based on their properties. Multiplets are discarded in the first step, while singlets are distinguished from debris in the second step. The algorithm can use different strategies on imaging feature selection-based user’s preferences and imaging features available. In addition, the relative importance of singlets precision vs. sensitivity can be further tweaked via a density coefficient adjustment. Twenty-two datasets from various sites and of various cell types acquired on the BD FACSDiscover™ S8 Cell Sorter with CellView™ Image Technology were used to develop and validate the algorithm across multiple imaging feature sets. A consistent singlets precision >97% with a solid >88% sensitivity has been demonstrated with a LightLoss feature set and the default density coefficient. This work yields a high-precision, high-sensitivity algorithm capable of objective and automated singlet discrimination across multiple cell types using various imaging-derived parameters. A free FlowJo™ Software plugin implementation is available for simple and reproducible singlet discrimination for use at the beginning of any user’s workflow.
Conclusion: We have developed an algorithm to automatically discriminate singlets from other unwanted events such as multiplets and debris.
Comments: Paper published here: https://onlinelibrary.wiley.com/doi/10.1002/cyto.b.22216
Funding: Not disclosed
Quality control: None
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