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Color doppler echocardiographic image analysis via shape and texture features

机译:通过形状和纹理特征进行彩色多普勒超声心动图图像分析

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Doppler imaging allows evaluation of blood flow patterns, direction, and velocity. The color (red, blue, and mosaic) signify the direction of the blood flow. By analyzing this color Doppler, it is possible to detect heart diseases like mitral and aortic stenosis, mitral, tricuspid, and aortic regurgitation, and Left Ventricle (LV) hypertrophy. We present 3 methods to extract low level features namely color histogram mean, standard deviation, skewness, kurtosis, and texture features such as energy, entropy, contrast, homogeneity of the region of interest (ROI) in a color Doppler echocardiographic image. The first method is based on conventional K-Means algorithm to segment the image. A modified fast K-Means implemented using SQL is the second method presented in this paper. Finally, segmentation is achieved through pixel classification approach which is found being the most efficient. The proposed technique decomposes the image into foreground pixels representing color information and background pixels which are grayscale. Thus, we apply morphological operations, Gaussian blur, and threshold to obtain a distinct object for quantitative measurements. Without doing any modifications to the foreground pixels, we compute histogram statistics of the shape and texture features. Hence, with our proposed method both qualitative and quantitative analysis can be done. Our technique is applied on variety of color Doppler patient images and the results show that it is computationally efficient and abnormality detection is satisfactory.
机译:多普勒成像可以评估血流模式,方向和速度。颜色(红色,蓝色和马赛克)表示血液流动的方向。通过分析该彩色多普勒仪,可以检测出心脏病,如二尖瓣和主动脉瓣狭窄,二尖瓣,三尖瓣和主动脉瓣关闭不全以及左心室肥大。我们提出了3种方法来提取低级特征,即彩色多普勒超声心动图图像中的彩色直方图均值,标准差,偏度,峰度以及纹理特征,例如能量,熵,对比度,目标区域(ROI)的均匀性等纹理特征。第一种方法基于常规的K-Means算法对图像进行分割。本文介绍的第二种方法是使用SQL实现的改进的快速K均值。最后,通过最有效的像素分类方法来实现分割。所提出的技术将图像分解成代表颜色信息的前景像素和灰度的背景像素。因此,我们应用形态学运算,高斯模糊和阈值来获得用于定量测量的独特对象。在不对前景像素进行任何修改的情况下,我们将计算形状和纹理特征的直方图统计信息。因此,使用我们提出的方法,可以进行定性和定量分析。我们的技术被应用到各种彩色多普勒患者图像上,结果表明该技术具有计算效率,并且异常检测令人满意。

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