Diagnosis and genetic subtypes of leukemia combining gene expression and flow cytometry

被引:9
|
作者
Basso, Giuseppe [1 ]
Case, Colette [1 ]
Dell'Orto, Marta Campo [1 ]
机构
[1] Univ Padua, Dept Pediat, Lab Pediat Oncol, I-35128 Padua, Italy
关键词
leukemia subtypes; gene expression; flow cytometry; diagnosis;
D O I
10.1016/j.bcmd.2007.05.004
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Acute leukemia, defined as a genetic disease, is the most common cancer in children representing about one half of all cancers among persons younger than 15 years. Acute lymphoblastic leukemia (ALL) and acute myeloid leukemia (AML) each represents a heterogeneous complex of disorders, with genetic abnormalities presenting in more than 80% of ALLs and more than 90% of AMLs. The diagnostic gold standard and classification of leukaemia involves various methods including morphology, cytochemistry, cytogenetics and molecular genetics, immunophenotyping, and molecular biology. These diagnostic methods are a prerequisite for individual treatment strategies and for the evaluation of treatment response especially considering that many distinct types of acute leukemia are known to carry predictable prognoses and warrant specific therapy. The quantification of gene expression is essential in determination of tailored therapeutic decisions. Microarray technology offers the possibility of quantifying thousands of genes in a single analysis, thus potentially becoming an essential tool for molecular classification to be used in routine leukaemia diagnostics. MLL+ leukaemia is a perfect example as to the exact correspondence between gene expression, and protein expression evaluated by flow cytometry. Applying computational analysis to flow cytometry results, it is possible to distinguish the MLL+ acute leukemia from MLL- acute leukemia using as the top ranked antigen some top ranked genes described in the Microarray evaluation. Key markers discriminating different leukemia phenotypes can be identified by univariate hypothesis testing from a data set of immunophenotypic markers described by two variables, one reflecting the intensity of expression (MESF) and the other the pattern of distribution (CV). A current multi center study called Microarray Innovations in Leukemia (MILE Study) uses higher density gene chips providing nearly complete coverage of the human genome. The study which has analyzed thus far 1837 retrospective cases shows that each important leukemia subtype has a specific genetic fingerprint, meaning that different combinations of genes whose expression is linked to each subtype can be identified allowing for patient tailored therapy. Moreover, the study has achieved 97% diagnostic accuracy on samples from tested patients. Statistical analysis has shown a high concordance level between standard diagnostic procedures and those of the microarray technology-globally around 95.6%. Additionally it is possible to correctly classify some subgroups incorrectly identified using gold standard methods. Thus, from a technical viewpoint, gene expression profiling in tandem with flow cytometry should be a viable alternative to standard diagnostic approaches. Whether gene expression profiling will become a practical diagnostic alternative remains to be seen. (C) 2007 Elsevier Inc. All rights reserved.
引用
收藏
页码:164 / 168
页数:5
相关论文
共 50 条
  • [21] Gene expression in rod shaped cardiac myocytes, sorted by flow cytometry
    Diez, C
    Simm, A
    CARDIOVASCULAR RESEARCH, 1998, 40 (03) : 530 - 537
  • [22] A case report of early diagnosis of asymptomatic hairy cell leukemia using flow cytometry
    Tadros, James
    Davis, Amanda
    Awoleye, Oreoluwa
    Vassiliou, Evros
    FRONTIERS IN IMMUNOLOGY, 2023, 14
  • [23] A novel differential diagnosis algorithm for chronic lymphocytic leukemia using immunophenotyping with flow cytometry
    Ozdemir, Zehra Narli
    Falay, Mesude
    Parmaksiz, Ayhan
    Genc, Eylem
    Beyler, Ozlem
    Gunes, Ahmet Kursad
    Ceran, Funda
    Dagdas, Simten
    Ozet, Gulsum
    HEMATOLOGY TRANSFUSION AND CELL THERAPY, 2023, 45 (02) : 176 - 181
  • [24] Flow cytometry analysis of alpha(1)-adrenoceptor subtypes
    Hirasawa, A
    Tsumaya, K
    Awaji, T
    Shibata, K
    Homma, N
    Shinomiya, T
    Tsujimoto, G
    FEBS LETTERS, 1996, 386 (2-3) : 141 - 148
  • [25] Bayesian clustering of flow cytometry data for the diagnosis of B-Chronic Lymphocytic Leukemia
    Lakoumentas, John
    Drakos, John
    Karakantza, Marina
    Nikiforidis, George C.
    Sakellaropoulos, George C.
    JOURNAL OF BIOMEDICAL INFORMATICS, 2009, 42 (02) : 251 - 261
  • [26] Prediction of molecular subtypes in acute myeloid leukemia based on gene expression profiling
    Verhaak, Roel G. W.
    Wouters, Bas J.
    Erpelinck, Claudia A. J.
    Abbas, Saman
    Beverloo, H. Berna
    Lugthart, Sanne
    Lowenberg, Bob
    Delwel, Ruud
    Valk, Peter J. M.
    HAEMATOLOGICA-THE HEMATOLOGY JOURNAL, 2009, 94 (01): : 131 - 134
  • [27] Transition from morphologic diagnosis to immunophenotypic diagnosis of acute leukemia—experience of establishing a new flow cytometry laboratory
    P Pavithra
    Sindhura Lakshmi Koulmane Laxminarayana
    Chethan Manohar
    Sushma Belurkar
    Nikita Valerina Kairanna
    Journal of Hematopathology, 2019, 12 : 191 - 199
  • [28] DIFFERENTIAL TDT EXPRESSION IN ACUTE-LEUKEMIA BY FLOW-CYTOMETRY - A QUANTITATIVE STUDY
    FARAHAT, N
    LENS, D
    MORILLA, R
    MATUTES, E
    CATOVSKY, D
    LEUKEMIA, 1995, 9 (04) : 583 - 587
  • [29] CD30 expression in acute lymphoblastic leukemia as assessed by flow cytometry analysis
    Zheng, Wenli
    Medeiros, L. Jeffrey
    Young, Ken H.
    Goswami, Maitrayee
    Powers, Linda
    Kantarjian, Hagop H.
    Thomas, Deborah A.
    Cortes, Jorge E.
    Wang, Sa A.
    LEUKEMIA & LYMPHOMA, 2014, 55 (03) : 624 - 627
  • [30] Terminal deoxynucleotidyl transferase expression in acute myelogenous leukemia and myelodysplasia as determined by flow cytometry
    Huh, YO
    Smith, TL
    Collins, P
    Bueso-Ramos, C
    Albitar, M
    Kantarjian, HM
    Pierce, SA
    Freireich, EJ
    LEUKEMIA & LYMPHOMA, 2000, 37 (3-4) : 319 - 331