SingletSeeker: an unsupervised clustering approach for automated singlet discrimination in cytometry.

IF 2.3 3区 医学 Q3 MEDICAL LABORATORY TECHNOLOGY Cytometry Part B: Clinical Cytometry Pub Date : 2024-11-25 DOI:10.1002/cyto.b.22216
Mark Colasurdo, Laura Ferrer-Font, Aaron Middlebrook, Andrew J Konecny, Martin Prlic, Josef Spidlen
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Abstract

Flow cytometry is a high-throughput, high-dimensional technique that generates large sets of single-cell data. 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.

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SingletSeeker:一种用于在细胞测量中自动分辨单色子的无监督聚类方法。
流式细胞仪是一种高通量、高维技术,可生成大量单细胞数据集。在分析这些数据之前,通常要排除任何包含两个或两个以上细胞(多细胞)的事件,以确保下游分析和定量仅针对单细胞事件(单细胞)。单细胞分辨过程非常关键,但从根本上说是主观和耗时的;它由用户手动完成,如何正确排除多细胞取决于用户的专业知识,而且往往因实验而异。为了解决这个问题,我们开发了一种算法,可以自动区分单点和其他不需要的事件,如多点和碎片。利用从成像中获得的参数,该算法首先使用基于密度的聚类算法识别出高密度的事件群,然后根据其属性对群组进行分类。在第一步中丢弃多子,而在第二步中将单子与碎片区分开来。该算法可根据用户的偏好和可用的成像特征,采用不同的成像特征选择策略。此外,还可通过密度系数调整进一步调整单点精度与灵敏度的相对重要性。我们使用带有 CellView™ 图像技术的 BD FACSDiscover™ S8 细胞分拣仪采集了来自不同部位和不同细胞类型的 22 个数据集,在多个成像特征集上开发并验证了该算法。在使用 LightLoss 特征集和默认密度系数时,单细胞精确度稳定在 97% 以上,灵敏度稳定在 88% 以上。这项工作产生了一种高精度、高灵敏度的算法,能够利用各种成像衍生参数对多种细胞类型进行客观、自动的单色子分辨。免费的 FlowJo™ 软件插件实现了简单、可重复的单线分辨,可在任何用户的工作流程开始时使用。
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来源期刊
CiteScore
6.80
自引率
32.40%
发文量
51
审稿时长
>12 weeks
期刊介绍: Cytometry Part B: Clinical Cytometry features original research reports, in-depth reviews and special issues that directly relate to and palpably impact clinical flow, mass and image-based cytometry. These may include clinical and translational investigations important in the diagnostic, prognostic and therapeutic management of patients. Thus, we welcome research papers from various disciplines related [but not limited to] hematopathologists, hematologists, immunologists and cell biologists with clinically relevant and innovative studies investigating individual-cell analytics and/or separations. In addition to the types of papers indicated above, we also welcome Letters to the Editor, describing case reports or important medical or technical topics relevant to our readership without the length and depth of a full original report.
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