首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Automatic detection and segmentation of bovine corpora lutea in ultrasonographic ovarian images using genetic programming and rotation invariant local binary patterns.
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Automatic detection and segmentation of bovine corpora lutea in ultrasonographic ovarian images using genetic programming and rotation invariant local binary patterns.

机译:基于遗传编程和旋转不变局部二元图案的超声卵巢图像中牛语料库的自动检测与分割。

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摘要

In this study, we propose a fully automatic algorithm to detect and segment corpora lutea (CL) using genetic programming and rotationally invariant local binary patterns. Detection and segmentation experiments were conducted and evaluated on 30 images containing a CL and 30 images with no CL. The detection algorithm correctly determined the presence or absence of a CL in 93.33 % of the images. The segmentation algorithm achieved a mean (±standard deviation) sensitivity and specificity of 0.8693 ± 0.1371 and 0.9136 ± 0.0503, respectively, over the 30 CL images. The mean root mean squared distance of the segmented boundary from the true boundary was 1.12 ± 0.463 mm and the mean maximum deviation (Hausdorff distance) was 3.39 ± 2.00 mm. The success of these algorithms demonstrates that similar algorithms designed for the analysis of in vivo human ovaries are likely viable.
机译:在这项研究中,我们提出了一种全自动算法来使用遗传编程和旋转不变的局部二进制模式来检测和划分语料库(CL)。 对含有Cl和30个图像的30个图像进行检测和分段实验,并评估含有Cl和30个图像的图像。 检测算法正确地确定了93.33%的图像中的存在或不存在。 分割算法在30CL图像中分别达到平均(标准偏差)灵敏度和0.8693±0.1371和0.9136±0.0503的特异性。 从真边边界的分段边界的平均均方平均平均距离为1.12±0.463mm,平均最大偏差(Hausdorff距离)为3.39±2.00 mm。 这些算法的成功证明了为体内人类卵巢分析而设计的类似算法可能是可行的。

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