Authors
Heba Z Al-Lahham, Raja S Alomari, Hazem Hiary, Vipin Chaudhary
Publication date
2012/2/23
Conference
Medical Imaging 2012: Computer-Aided Diagnosis
Volume
8315
Pages
669-675
Publisher
SPIE
Description
Breast cancer is the second cause of women death and the most diagnosed female cancer in the US. Proliferation rate estimation (PRE) is one of the prognostic indicators that guide the treatment protocols and it is clinically performed from Ki-67 histopathology images. Automating PRE substantially increases the efficiency of the pathologists. Moreover, presenting a deterministic and reproducible proliferation rate value is crucial to reduce inter-observer variability. To that end, we propose a fully automated CAD system for PRE from the Ki-67 histopathology images. This CAD system is based on a model of three steps: image pre-processing, image clustering, and nuclei segmentation and counting that are finally followed by PRE. The first step is based on customized color modification and color-space transformation. Then, image pixels are clustered by K-Means depending on the features extracted from the images …
Total citations
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Scholar articles
HZ Al-Lahham, RS Alomari, H Hiary, V Chaudhary - Medical Imaging 2012: Computer-Aided Diagnosis, 2012