Literature DB >> 18334408

A multidimensional classification approach for the automated analysis of flow cytometry data.

Carlos Eduardo Pedreira1, Elaine S Costa, M Elena Arroyo, Julia Almeida, Alberto Orfao.   

Abstract

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.

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Year:  2008        PMID: 18334408     DOI: 10.1109/TBME.2008.915729

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  6 in total

Review 1.  A chromatic explosion: the development and future of multiparameter flow cytometry.

Authors:  Pratip K Chattopadhyay; Carl-Magnus Hogerkorp; Mario Roederer
Journal:  Immunology       Date:  2008-12       Impact factor: 7.397

2.  Deep profiling of multitube flow cytometry data.

Authors:  Kieran O'Neill; Nima Aghaeepour; Jeremy Parker; Donna Hogge; Aly Karsan; Bakul Dalal; Ryan R Brinkman
Journal:  Bioinformatics       Date:  2015-01-18       Impact factor: 6.937

Review 3.  Multi-color flow cytometric immunophenotyping for detection of minimal residual disease in AML: past, present and future.

Authors:  J M Jaso; S A Wang; J L Jorgensen; P Lin
Journal:  Bone Marrow Transplant       Date:  2014-05-19       Impact factor: 5.483

4.  Automatic B cell lymphoma detection using flow cytometry data.

Authors:  Ming-Chih Shih; Shou-Hsuan Stephen Huang; Rachel Donohue; Chung-Che Chang; Youli Zu
Journal:  BMC Genomics       Date:  2013-11-05       Impact factor: 3.969

5.  Standardizing Flow Cytometry Immunophenotyping Analysis from the Human ImmunoPhenotyping Consortium.

Authors:  Greg Finak; Marc Langweiler; Maria Jaimes; Mehrnoush Malek; Jafar Taghiyar; Yael Korin; Khadir Raddassi; Lesley Devine; Gerlinde Obermoser; Marcin L Pekalski; Nikolas Pontikos; Alain Diaz; Susanne Heck; Federica Villanova; Nadia Terrazzini; Florian Kern; Yu Qian; Rick Stanton; Kui Wang; Aaron Brandes; John Ramey; Nima Aghaeepour; Tim Mosmann; Richard H Scheuermann; Elaine Reed; Karolina Palucka; Virginia Pascual; Bonnie B Blomberg; Frank Nestle; Robert B Nussenblatt; Ryan Remy Brinkman; Raphael Gottardo; Holden Maecker; J Philip McCoy
Journal:  Sci Rep       Date:  2016-02-10       Impact factor: 4.379

6.  A survey of flow cytometry data analysis methods.

Authors:  Ali Bashashati; Ryan R Brinkman
Journal:  Adv Bioinformatics       Date:  2009-12-06
  6 in total

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