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Prostate Boundary Segment Extraction Using Cascaded Shape Regression and Optimal Surface Detection.

Jierong Cheng,Wei Xiong, Ying Gu,Shue Ching Chia, Yue Wang, Weimin Huang, Jiayin Zhou,Yufeng Zhou, Wilson Gao,Kae Jack Tay, Henry Ho

EMBC(2014)

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摘要
In this paper, we proposed a new method (CSR+OSD) for the extraction of irregular open prostate boundaries in noisy extracorporeal ultrasound image. First, cascaded shape regression (CSR) is used to locate the position of prostate boundary in the images. In CSR, a sequence of random fern predictors are trained in a boosted regression manner, using shape-indexed features to achieve invariance against position variations of prostate boundaries. Afterwards, we adopt optimal surface detection (OSD) to refine the prostate boundary segments across 3D sections globally and efficiently. The proposed method is tested on 162 ECUS images acquired from 8 patients with benign prostate hyperplasia. The method yields a Root Mean Square Distance of 2.11±1.72 mm and a Mean Absolute Distance of 1.61±1.26 mm, which are lower than those of JFilament, an open active contour algorithm and Chan-Vese region based level set model, respectively.
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关键词
biological organs,biomedical ultrasonics,edge detection,feature extraction,image segmentation,image sequences,mean square error methods,medical image processing,numerical analysis,random processes,regression analysis,Chan-Vese region based level set model,ECUS images acquisition,benign prostate hyperplasia,cascaded shape regression,mean absolute distance,noisy extracorporeal ultrasound image,open active contour algorithm,optimal surface detection,prostate boundary segment extraction,random fern predictor sequence,root mean square distance,shape-indexed features
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