Pedreira Carlos Eduardo, Costa Elaine S, Arroyo M Elena, Almeida Julia, Orfao Alberto
School of Medicine and COPPE-PEE-Engineering Graduate Program, Federal University of Rio de Janeiro (UFRJ), Av. Brigadeiro Trompowski, s/n, Universitária Ilha Do Fundao, Rio de Janeiro 21941972, Brazil.
IEEE Trans Biomed Eng. 2008 Mar;55(3):1155-62. doi: 10.1109/TBME.2008.915729.
We describe an automated multidimensional approach for the analysis of flow cytometry data based on pattern classification. Flow cytometry is a widely used technique both for research and clinical purposes where it has become essential for the diagnosis and follow up of a wide spectrum of diseases, such as HIV-infection and neoplastic disorders. Flow cytometry data sets are composed of quite a large number of observations that can be viewed as elements of a n-dimensional space. The aim of the analysis of such data files is typically to classify groups of cellular events as specific populations with biological meaning. Despite significant improvements in data acquisition capabilities of flow cytometers, data analysis is still based on bi-dimensional strategies which were defined a long time ago. These are strongly dependent on the expertise of an expert operator, this approach being relatively subjective and potentially leading to unreliable results. Automated analysis of flow cytometry data is an essential step to improve reproducibility of the results. The proposed automated analysis was implemented on peripherial blood lymphocyte subsets from 307 samples stained and prepared in an identical way and it was capable of identifying all cell subsets present in each sample studied that could also be detected in the same data files by an expert operator. A highly significant correlation was found between the results obtained by an expert operator using a conventional manual method of analysis and those obtained using the implemented automated approach.
我们描述了一种基于模式分类的流式细胞术数据分析自动化多维方法。流式细胞术是一种广泛应用于研究和临床目的的技术,在多种疾病(如HIV感染和肿瘤疾病)的诊断和随访中已变得至关重要。流式细胞术数据集由大量观测值组成,这些观测值可被视为n维空间的元素。此类数据文件分析的目的通常是将细胞事件组分类为具有生物学意义的特定群体。尽管流式细胞仪的数据采集能力有了显著提高,但数据分析仍基于很久以前定义的二维策略。这些策略强烈依赖于专家操作员的专业知识,这种方法相对主观,可能导致不可靠的结果。流式细胞术数据的自动化分析是提高结果可重复性的关键步骤。所提出的自动化分析方法应用于307个以相同方式染色和制备的外周血淋巴细胞亚群样本,它能够识别每个研究样本中存在的所有细胞亚群,专家操作员在相同数据文件中也能检测到这些亚群。使用传统手动分析方法的专家操作员获得的结果与使用所实施的自动化方法获得的结果之间发现了高度显著的相关性。