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首页> 外文期刊>Medical Physics >Texture analysis of carotid artery atherosclerosis from three-dimensional ultrasound images.
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Texture analysis of carotid artery atherosclerosis from three-dimensional ultrasound images.

机译:从三维超声图像分析颈动脉粥样硬化的质地。

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PURPOSE: To quantitatively evaluate local carotid arterial statin effects in 3D US images using multiclassifier image texture analysis tools. METHODS: Texture analysis tools were used to evaluate the effect of 80 mg atorvastatin administered daily to patients with carotid stenosis compared to those treated with placebo. Using three-dimensional carotid ultrasound images, 270 texture features from seven texture techniques were extracted from manually segmented carotid arteries based on the intima-media boundary [vessel wall (VW)]. Individual texture features were compared to the previously determined changes in VW volume (VWV) using the distance between classes, the Wilcoxon rank sum test, and accuracy of the classifiers. Texture features that resulted in maximal classification accuracy from each texture technique were selected using Pudil's sequential floating forward selection (SFFS) as a method of ranking each technique. Finally, SFFS-selected texture features from all texture techniques were used in combination with 24 classifier fusion techniques to improve classification accuracy. RESULTS: Using the measurement of change in VWV, the distance between classes (DBC), Wilcoxon rank sum (WRS) p-value, and median accuracy measures (ACC) were 0.3798, 0.076, and 54.50%, respectively. Texture features improved the detection of statin-related changes using DBC to 0.5199, using WRS to 0.002, and ACC to 63.87%, respectively. The texture techniques that most differentiated between atorvastatin and placebo classes were Fourier power spectrum and Laws texture energy measures. The average classification accuracy between atorvastatin and placebo classes was improved from 57.22 +/- 12.11% using VWV to 97.87 +/- 3.93% using specific texture features. Furthermore, the use of specific texture features resulted in the average area under the receiver-operator characteristic curve (AUC) a value of 0.9988 +/- 0.0069 compared to 0.617 +/- 0.15 using carotid VWV. CONCLUSIONS: Based on DBC, WRS, ACC, and AUC texture features derived from 3D carotid ultrasound were observed to be more sensitive in detecting statin-related changes in carotid atherosclerosis than VWV suggesting that texture classifiers can be used to detect changes in carotid atherosclerosis after therapy.
机译:目的:使用多分类器图像纹理分析工具定量评估3D US图像中局部颈动脉他汀类药物的作用。方法:使用质地分析工具评估与安慰剂治疗组相比,颈动脉狭窄患者每天服用80 mg阿托伐他汀的效果。使用三维颈动脉超声图像,基于内膜-中膜边界[血管壁(VW)],从手动分割的颈动脉中提取了七种纹理技术中的270个纹理特征。使用类之间的距离,Wilcoxon秩和检验和分类器的准确性,将各个纹理特征与之前确定的VW体积(VWV)变化进行比较。使用Pudil的顺序浮动前向选择(SFFS)作为对每种技术进行排名的方法,选择了可从每种纹理技术中获得最大分类精度的纹理特征。最后,将来自所有纹理技术的SFFS选择的纹理特征与24种分类器融合技术结合使用,以提高分类精度。结果:使用VWV的变化量度,类之间的距离(DBC),Wilcoxon等级和(WRS)p值和中位数准确性量度(ACC)分别为0.3798%,0.076和54.50%。质地特征分别使DBC为0.5199,WRS为0.002,ACC为63.87%改善了他汀类药物相关变化的检测。阿托伐他汀和安慰剂类别之间最有区别的纹理技术是傅立叶功率谱和Laws纹理能量测量。阿托伐他汀和安慰剂类别之间的平均分类准确性从使用VWV的57.22 +/- 12.11%提高到使用特定纹理特征的97.87 +/- 3.93%。此外,使用特定的纹理特征会导致接收者-操作者特征曲线(AUC)下的平均面积值为0.9988 +/- 0.0069,而使用颈动脉VWV的平均值为0.617 +/- 0.15。结论:基于DBC,观察到从3D颈动脉超声获得的WRS,ACC和AUC纹理特征比VWV更敏感于检测他汀类药物相关的颈动脉粥样硬化变化,这表明纹理分类器可用于检测术后的颈动脉粥样硬化变化治疗。

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