Monitoring cell cycle distributions in living cells by videomicrofluorometry and discriminant factorial analysis

Background The study of the cell cycle of living cells is often based on quantification of nuclear DNA. These studies may be improved by multifactorial analysis evaluating several parameters for each cell. Methods Single lymphoblastoid living cells were labeled with three fluorescent markers: Hoechs...

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Bibliographic Details
Published inCytometry. Part A Vol. 56A; no. 1; pp. 8 - 14
Main Authors Savatier, Julien, Vigo, J., Salmon, J.‐M.
Format Journal Article
LanguageEnglish
Published Hoboken Wiley Subscription Services, Inc., A Wiley Company 01.11.2003
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Summary:Background The study of the cell cycle of living cells is often based on quantification of nuclear DNA. These studies may be improved by multifactorial analysis evaluating several parameters for each cell. Methods Single lymphoblastoid living cells were labeled with three fluorescent markers: Hoechst 33342 for nuclear DNA, Rhodamine 123 for mitochondria, and Nile Red for plasma membrane. Numerical image analysis allowed us to obtain, for each cell, morphological parameters (e.g., cell size, nuclear size, and shape) and functional information (e.g., nuclear DNA content, level of mitochondria energetic state, and the amount and properties of the plasma membrane) by fluorescence intensity. These parameters were used in a typological analysis that separated control cells into four groups. Results A discriminant factorial analysis (DFA) confirmed the four groups: G0–G1, S, G2+M, and polyploid cells called Gn. These groups were significantly different, with a classification probability of 0.9999; these control cells defined a learning population. Different populations of untreated and adriamycin‐treated cells were analyzed as additional individuals within a DFA and were classified into the G0–G1, S, G2+M, and Gn groups by their probability of belonging to each of the groups. Conclusions This approach is particularly efficient when it is used to determine variations in cellular properties and to objectively study cellular populations. Cytometry Part A 55A:8–14, 2003. © 2003 Wiley‐Liss, Inc.
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ISSN:1552-4922
1552-4930
DOI:10.1002/cyto.a.10080