DocumentCode :
1289126
Title :
Chromosome classification using backpropagation neural networks
Author :
Cho, Jong Man
Author_Institution :
Dept. of Biomed. Eng., Inje Univ., Kinhae, South Korea
Volume :
19
Issue :
1
fYear :
2000
Firstpage :
28
Lastpage :
33
Abstract :
The feasibility of an artificial neural network as a chromosome classifier was examined in this study, using the relative length, the centromeric index, and the density distribution of G-banded chromosome as feature vectors. The two-layer neural network trained with the error backpropagation training algorithm showed good potential in classification of Giemsa-banded human chromosomes. The minimum classification error was obtained with the configuration that had 27 input nodes and 24 PEs in the hidden layer. However, this study also showed some problems. Only two experiments, which had 25 and 50 density distribution samples, respectively, were carried out, due to the long computation time of the backpropagation neural network. Also, the centromere finding algorithm used in this study could not apply to telocentric chromosomes (group D and group G) because of their very small short arms; their centromere locations were determined manually. The algorithm must be modified so that it can be applied to all types of chromosomes to reduce the preprocessing time. Better training algorithms to reduce training time are needed. The error backpropagation training algorithm requires very long training times. Next, finding the optimal number of input nodes that gives the minimum classification error requires a trial and error experiment. Finally, other chromosome features that reduce the classification error need to be examined
Keywords :
backpropagation; biology computing; cellular biophysics; image classification; neural nets; optical microscopy; G-banded chromosome; Giemsa-banded human chromosomes; backpropagation neural networks; centromeric index; chromosome classification; density distribution; density distribution samples; error backpropagation training algorithm; feature vectors; hidden layer; minimum classification error; preprocessing time reduction; telocentric chromosomes; two-layer neural network; Backpropagation; Biological cells; Cells (biology); Hospitals; Humans; Image databases; Large Hadron Collider; Neural networks; Optical microscopy; Shape measurement;
fLanguage :
English
Journal_Title :
Engineering in Medicine and Biology Magazine, IEEE
Publisher :
ieee
ISSN :
0739-5175
Type :
jour
DOI :
10.1109/51.816241
Filename :
816241
Link To Document :
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