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USER-GUIDED SEGMENTATION OF PRETERM NEONATE VENTRICULAR SYSTEM FROM 3-D ULTRASOUND IMAGES USING CONVEX OPTIMIZATION

机译:基于凸优化的3D超声图像用户引导的早搏心室系统分割

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A three-dimensional (3-D) ultrasound (US) system has been developed to monitor the intracranial ventricular system of preterm neonates with intraventricular hemorrhage (IVH) and the resultant dilation of the ventricles (ventriculomegaly). To measure ventricular volume from 3-D US images, a semi-automatic convex optimization-based approach is proposed for segmentation of the cerebral ventricular system in preterm neonates with IVH from 3-D US images. The proposed semi-automatic segmentation method makes use of the convex optimization technique supervised by user-initialized information. Experiments using 58 patient 3-D US images reveal that our proposed approach yielded a mean Dice similarity coefficient of 78.2% compared with the surfaces that were manually contoured, suggesting good agreement between these two segmentations. Additional metrics, the mean absolute distance of 0.65 mm and the maximum absolute distance of 3.2 mm, indicated small distance errors for a voxel spacing of 0.22 x 0.22 x 0.22 mm(3). The Pearson correlation coefficient (r = 0.97, p<0.001) indicated a significant correlation of algorithm-generated ventricular system volume (VSV) with the manually generated VSV. The calculated minimal detectable difference in ventricular volume change indicated that the proposed segmentation approach with 3-D US images is capable of detecting a VSV difference of 6.5 cm(3) with 95% confidence, suggesting that this approach might be used for monitoring IVH patients' ventricular changes using 3-D US imaging. The mean segmentation times of the graphics processing unit (GPU)- and central processing unit-implemented algorithms were 50 +/- 2 and 205 +/- 5 s for one 3-D US image, respectively, in addition to 120 +/- 10 s for initialization, less than the approximately 35 min required by manual segmentation. In addition, repeatability experiments indicated that the intra-observer variability ranges from 6.5% to 7.5%, and the inter-observer variability is 8.5% in terms of the coefficient of variation of the Dice similarity coefficient. The intra-class correlation coefficient for ventricular system volume measurements for each independent observer ranged from 0.988 to 0.996 and was 0.945 for three different observers. The coefficient of variation and intra-class correlation coefficient revealed that the intra- and inter-observer variability of the proposed approach introduced by the user initialization was small, indicating good reproducibility, independent of different users. (E-mail: qiu.wu.ch@gmail.com) (C) 2015 World Federation for Ultrasound in Medicine & Biology.
机译:已开发出一种三维(3-D)超声(US)系统,以监测具有脑室内出血(IVH)的早产新生儿的颅内心室系统,以及由此引起的心室扩张(脑室扩大)。为了从3D US图像测量心室容积,提出了一种基于半自动凸优化的方法,用于从3D US图像进行IVH的早产儿脑室系统分割。所提出的半自动分割方法利用了由用户初始化信息监督的凸优化技术。使用58张患者3-D US图像进行的实验表明,与手动绘制轮廓的表面相比,我们提出的方法产生的平均Dice相似系数为78.2%,这表明这两个分割之间具有良好的一致性。附加度量标准为0.65 mm的平均绝对距离和3.2 mm的最大绝对距离,表明体素间距为0.22 x 0.22 x 0.22 mm(3)时,距离误差较小。皮尔逊相关系数(r = 0.97,p <0.001)表明算法生成的心室系统体积(VSV)与手动生成的VSV显着相关。计算出的心室容积变化的最小可检测差异表明,采用3-D US图像提出的分割方法能够以95%的置信度检测到6.5 cm(3)的VSV差异,表明该方法可用于监测IVH患者使用3-D US成像进行心室改变。图形处理单元(GPU)和中央处理单元实现的算法的平均分割时间,除120 +/-外,对于一张3-D US图像分别为50 +/- 2和205 +/- 5 s。初始化需要10秒,少于手动分段所需的大约35分钟。另外,重复性实验表明观察者内变异性在Dice相似性系数的变异系数方面在6.5%至7.5%之间,并且观察者间变异性为8.5%。每个独立观察者的心室系统体积测量的类内相关系数在0.988至0.996范围内,而三个不同的观察者的分类内相关系数为0.945。变异系数和类内相关系数表明,由用户初始化引入的该方法的观察者内和观察者间变异性小,表明可再现性好,独立于不同用户。 (电子邮件:qiu.wu.ch@gmail.com)(C)2015年世界医学和生物学超声联合会。

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