DocumentCode :
1085377
Title :
Neural network analysis of flow cytometry immunophenotype data
Author :
Kothari, Ravi ; Cualing, Hernani ; Balachander, Thiagarajan
Author_Institution :
Dept. of Electr. & Comput. Eng., Cincinnati Univ., OH, USA
Volume :
43
Issue :
8
fYear :
1996
Firstpage :
803
Lastpage :
810
Abstract :
Acute leukemia is one of the leading malignancies in the United States with a mortality rate strongly influenced by the phenotype. This phenotype is based on detection of cell associated antigens normally expressed during leucopoietic differentiation. In this regard, leukemia classified as lymphoid or myeloid by phenotype is also classified as a candidate for the corresponding chemotherapy protocol. Additionally, the subtype of leukemia based on the degree of differentiation and cell maturity influence prognosis, response to treatment, and median survival times. In this paper, we analyze immunophenotype flow cytometry data toward categorization of leukemia into subcategories based on lineage and differentiation antigen expression. Twenty-eight inputs (derived from the mean fluorescence intensity of up to 27 antibodies, and an additional binary input denoting the past diagnosis of leukemia) are used as input to a neural classifier to categorize a total of 170 cases into the lineage and differentiation categories of leukemia. The neural classifier consisted of a feed forward network trained using back propagation. A complexity regulation term (weight decay) was used to improve the generalization performance of the neural classifier. A training error of 0.0% and a generalization error of 10.3% was obtained for categorization based on lineage, while a training error of 0.0% and a generalization error of 10.0% was obtained for categorization based on differentiation. These results indicate that objective classification of multifaceted phenotypes in leukemia can be achieved for analyzing multiparameter data in flow cytometry and further categorization into the prognostic subtypes.
Keywords :
backpropagation; biological techniques; biology computing; cellular biophysics; feedforward neural nets; fluorescence; medical signal processing; patient diagnosis; pattern classification; United States; acute leukemia; back propagation; cell associated antigens; chemotherapy protocol; complexity regulation term; differentiation antigen expression; feed forward network; flow cytometry immunophenotype data; generalization error; leucopoietic differentiation; lymphoid; malignancies; mean fluorescence intensity; mortality rate; multifaceted phenotypes; multiparameter data; myeloid; neural classifier; neural network analysis; training error; weight decay; Biomedical measurements; Cells (biology); Computer science; Fluorescence; Immune system; Light scattering; Medical diagnostic imaging; Morphology; Neural networks; Protocols; Adult; Algorithms; Bone Marrow Cells; Cell Lineage; Child; Female; Flow Cytometry; Fuzzy Logic; Humans; Immunophenotyping; Leukemia; Male; Neural Networks (Computer); Prognosis;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/10.508551
Filename :
508551
Link To Document :
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