Hematology Biology, Nantes University Hospital, Nantes, France.
CRCINA Inserm, Nantes, France.
Int J Lab Hematol. 2021 Jul;43 Suppl 1:54-64. doi: 10.1111/ijlh.13548.
Ever since hematopoietic cells became "events" enumerated and characterized in suspension by cell counters or flow cytometers, researchers and engineers have strived to refine the acquisition and display of the electronic signals generated. A large array of solutions was then developed to identify at best the numerous cell subsets that can be delineated, notably among hematopoietic cells. As instruments became more and more stable and robust, the focus moved to analytic software. Almost concomitantly, the capacity increased to use large panels (both with mass and classical cytometry) and to apply artificial intelligence/machine learning for their analysis. The combination of these concepts raised new analytical possibilities, opening an unprecedented field of subtle exploration for many conditions, including hematopoiesis and hematological disorders. In this review, the general concepts and progress achieved in the development of new analytical approaches for exploring high-dimensional data sets at the single-cell level will be described as they appeared over the past few years. A larger and more practical part will detail the various steps that need to be mastered, both in data acquisition and in the preanalytical check of data files. Finally, a step-by-step explanation of the solution in development to combine the Bioconductor clustering algorithm FlowSOM and the popular and widely used software Kaluza® (Beckman Coulter) will be presented. The aim of this review was to point out that the day when these progresses will reach routine hematology laboratories does not seem so far away.
自从造血细胞成为通过细胞计数器或流式细胞仪在悬浮液中进行枚举和特征描述的“事件”以来,研究人员和工程师一直致力于改进所产生的电子信号的采集和显示。然后,开发了大量的解决方案来最好地识别可以区分的众多细胞亚群,尤其是在造血细胞中。随着仪器变得越来越稳定和强大,焦点转移到了分析软件上。几乎同时,使用大型面板(包括质量和经典细胞术)的能力增加,并将人工智能/机器学习应用于其分析。这些概念的结合提出了新的分析可能性,为许多条件(包括造血和血液疾病)的微妙探索开辟了前所未有的领域。在这篇综述中,将描述过去几年中在单细胞水平上探索高维数据集的新分析方法的发展中出现的一般概念和进展。更大和更实际的部分将详细说明在数据采集和数据分析文件的预分析检查中都需要掌握的各种步骤。最后,将逐步解释正在开发的解决方案,该解决方案将结合 Bioconductor 聚类算法 FlowSOM 和流行且广泛使用的软件 Kaluza®(贝克曼库尔特)。本文的目的是指出,这些进展将达到常规血液学实验室的那一天似乎并不遥远。