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用于前列腺分割的正交相位信息的统计形状和纹理模型。

Statistical shape and texture model of quadrature phase information for prostate segmentation.

机构信息

Computer Vision and Robotics Group, University of Girona, Girona, Spain.

出版信息

Int J Comput Assist Radiol Surg. 2012 Jan;7(1):43-55. doi: 10.1007/s11548-011-0616-y. Epub 2011 Jun 1.

DOI:10.1007/s11548-011-0616-y
PMID:21629983
Abstract

PURPOSE

Prostate volume estimation from segmentation of transrectal ultrasound (TRUS) images aids in diagnosis and treatment of prostate hypertrophy and cancer. Computer-aided accurate and computationally efficient prostate segmentation in TRUS images is a challenging task, owing to low signal-to-noise ratio, speckle noise, calcifications, and heterogeneous intensity distribution in the prostate region.

METHOD

A multi-resolution framework using texture features in a parametric deformable statistical model of shape and appearance was developed to segment the prostate. Local phase information of log-Gabor quadrature filter extracted texture of the prostate region in TRUS images. Large bandwidth of log-Gabor filter ensures easy estimation of local orientations, and zero response for a constant signal provides invariance to gray level shift. This aids in enhanced representation of the underlying texture information of the prostate unaffected by speckle noise and imaging artifacts. The parametric model of the propagating contour is derived from principal component analysis of prior shape and texture information of the prostate from the training data. The parameters were modified using prior knowledge of the optimization space to achieve segmentation.

RESULTS

The proposed method achieves a mean Dice similarity coefficient value of 0.95 ± 0.02 and mean absolute distance of 1.26 ± 0.51 millimeter when validated with 24 TRUS images of 6 data sets in a leave-one-patient-out validation framework.

CONCLUSIONS

The proposed method for prostate TRUS image segmentation is computationally efficient and provides accurate prostate segmentations in the presence of intensity heterogeneities and imaging artifacts.

摘要

目的

从经直肠超声 (TRUS) 图像的分割中估计前列腺体积有助于诊断和治疗前列腺肥大和癌症。由于 TRUS 图像中信号噪声比低、斑点噪声、钙化和前列腺区域的强度分布不均匀,计算机辅助的准确和计算效率高的前列腺分割是一项具有挑战性的任务。

方法

我们开发了一种多分辨率框架,在形状和外观的参数变形统计模型中使用纹理特征,以分割前列腺。对数 Gabor 四元数滤波器的局部相位信息提取了 TRUS 图像中前列腺区域的纹理。对数 Gabor 滤波器的大带宽确保了局部方向的轻松估计,并且对于恒定信号的零响应提供了对灰度级偏移的不变性。这有助于增强不受斑点噪声和成像伪影影响的前列腺的基础纹理信息的表示。传播轮廓的参数模型是从训练数据中前列腺的先验形状和纹理信息的主成分分析中得出的。通过优化空间的先验知识对参数进行修改,以实现分割。

结果

在采用 6 个数据集的 24 个 TRUS 图像的单患者留一验证框架中验证时,该方法的平均骰子相似系数值为 0.95 ± 0.02,平均绝对距离为 1.26 ± 0.51 毫米。

结论

该方法用于 TRUS 图像的前列腺分割具有计算效率高的优点,并且在存在强度异质性和成像伪影的情况下提供了准确的前列腺分割。

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Automated segmentation of the prostate in 3D MR images using a probabilistic atlas and a spatially constrained deformable model.使用概率图谱和空间约束变形模型对 3D MR 图像中的前列腺进行自动分割。
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Discrete deformable model guided by partial active shape model for TRUS image segmentation.
基于部分主动形状模型的离散变形模型在 TRUS 图像分割中的应用。
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Prostate segmentation in 2D ultrasound images using image warping and ellipse fitting.使用图像变形和椭圆拟合在二维超声图像中进行前列腺分割。
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