DocumentCode :
2719975
Title :
Classify cellular phenotype in high-throughput fluorescence microcopy images for RNAi genome-wide screening
Author :
Wang, Jun ; Zhou, Xiaobo ; Li, Fuhai ; Wong, Stephen T C
Author_Institution :
HCNR-Center for Bioinformatics, Harvard Med. Sch., Boston, MA
fYear :
2006
fDate :
38899
Firstpage :
1
Lastpage :
2
Abstract :
As we know, the genes could cause the cell phenotypes to change dramatically. Currently, biologists attempt to perform the genome-wide RNAi screening to identify various image phenotypes. It is a challenging task to recognize the phenotypes automatically because of the noisy background and low contrast of fluorescence images. In this work, we applied two cellular segmentation techniques, deformable model and Cellprofiler software, for the preprocess of cellular segmentation. Then five kinds of features including wavelet feature, moments feature, haralick co-occurrence feature, region property feature, and problem-specific shape descriptor are extracted from the cellular patches. The genetic algorithm (GA) is applied to select a subset of the most discriminate features to remove the irrelevance and redundancy. We use linear discriminant analysis (LDA) as the tool for training the statistical classification model. Experimental results show the proposed approach works well in RNAi screening
Keywords :
biomedical optical imaging; cellular biophysics; feature extraction; fluorescence; genetic algorithms; genetics; image classification; image segmentation; medical image processing; molecular biophysics; optical microscopy; statistical analysis; Cellprofiler software; LDA; RNAi genome-wide screening; cellular phenotype classification; cellular segmentation; deformable model; feature extraction; genes; genetic algorithm; haralick co-occurrence feature; high-throughput fluorescence microcopy images; linear discriminant analysis; moments feature; problem-specific shape descriptor; region property feature; statistical classification; wavelet feature; Background noise; Bioinformatics; Deformable models; Fluorescence; Genomics; Image recognition; Image segmentation; Linear discriminant analysis; Noise shaping; Shape;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Life Science Systems and Applications Workshop, 2006. IEEE/NLM
Conference_Location :
Bethesda, MD
Print_ISBN :
1-4244-0277-8
Electronic_ISBN :
1-4244-0278-6
Type :
conf
DOI :
10.1109/LSSA.2006.250404
Filename :
4015805
Link To Document :
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