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首页> 外文期刊>Medical Physics >Respiratory motion correction in free-breathing ultrasound image sequence for quantification of hepatic perfusion.
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Respiratory motion correction in free-breathing ultrasound image sequence for quantification of hepatic perfusion.

机译:自由呼吸超声图像序列中的呼吸运动校正,用于量化肝灌注。

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PURPOSE: Evaluation of regional hepatic perfusion by contrast-enhanced ultrasound (CEUS) is helpful to the differential diagnosis of focal liver lesions (FLLs). Because most patients cannot hold their breath for the duration of the entire hepatic perfusion scan, ultrasonographists tend to employ free-breathing acquisition method. A new strategy using a combination of template matching and frame selection is proposed to correct the respiratory motion and improve the accuracy of the quantification evaluation of the perfusion. METHODS: Considering that most commercial ultrasound machines can provide a dual display mode for simultaneously visualizing contrast and tissue images, the registration of the contrast images was achieved by the registration of the corresponding tissue images. After the template was located, the rough search space was estimated using a priori knowledge of the tumor location in the free-breathing image sequence. Then, a simple double-selection method was proposed to select the similar images from a large number of successive matched images via global and local threshold settings. In this method, alpha and m were the offset of the global threshold and the time interval for setting local sampling range, respectively. These two parameters were also investigated. The strategy was tested on ten liver CEUS acquisitions with a handle probe by using sum of absolute differences (SAD) metric. The visual evaluation for 2D image sequences and the extracted time-intensity curves from the regions of interest were performed. Simpler curve descriptors of the motion-uncorrected and motion-corrected image sequences were calculated on a pixel-by-pixel basis and evaluated as parametric perfusion maps. The quality of these parametric images was compared, in terms of both the accuracy and spatial resolution. For the corrected and uncorrected sequences, their mean deviation values (mDVs) and mean quality-of-fits (mQOFs) were measured. RESULTS: When alpha and m were both set to 0.5, 9.20 +/- 3.22% of the total number of frames were selected. After the motion correction, the mDVs of all the image sequences decreased from 21.69 +/- 2.80 to 13.78 +/- 2.68. The mQOFs of all the corrected sequences increased by an average of 15.32 +/- 5.13%. The quality of curve fitting and the corresponding parametric imaging computed on motion-corrected sequences were improved. On the average, the motion correction of a sequence containing about 100 frames was performed in approximately 3 min using MATLAB, whereas a completely manual approach requires approximately 10 min. CONCLUSIONS: The image-based strategy independent of the tumor size can quickly correct respiratory motion in CEUS image sequences. Simple manual operation is only needed, such as the selection of the template image and search space. It is user-friendly and suitable for most clinical cases affected by adverse factors of sampling. Due to the merit of the saving time, this strategy can be widely applied to clinical practice, and the diagnostic efficiency of FLLs will be improved. Moreover, the correction strategy is a key preprocessing step toward local quantification of hepatic perfusion studies.
机译:目的:通过对比增强超声(CEUS)评估局部肝灌注有助于鉴别局灶性肝病灶(FLL)。由于大多数患者在整个肝脏灌注扫描期间都无法屏住呼吸,因此超声检查医师倾向于采用自由呼吸采集方法。提出了一种使用模板匹配和帧选择相结合的新策略来校正呼吸运动并提高灌注定量评估的准确性。方法:考虑到大多数商用超声机器可以提供双显示模式,以同时可视化对比和组织图像,对比图像的配准是通过相应组织图像的配准来实现的。定位模板后,使用在自由呼吸图像序列中肿瘤位置的先验知识来估计粗略搜索空间。然后,提出了一种简单的双重选择方法,可以通过全局和局部阈值设置从大量连续匹配的图像中选择相似的图像。在此方法中,α和m分别是全局阈值的偏移量和用于设置局部采样范围的时间间隔。还研究了这两个参数。通过使用绝对差之和(SAD)指标,使用手柄探针在十次肝脏CEUS采集中测试了该策略。对2D图像序列进行视觉评估,并从目标区域提取时间强度曲线。未经运动校正和经过运动校正的图像序列的更简单的曲线描述符在逐像素的基础上进行计算,并作为参数灌注图进行评估。比较了这些参数图像的质量,包括准确性和空间分辨率。对于校正和未校正的序列,测量了它们的平均偏差值(mDVs)和平均拟合质量(mQOFs)。结果:当alpha和m都设置为0.5时,选择了总数的9.20 +/- 3.22%。运动校正后,所有图像序列的mDVs从21.69 +/- 2.80降低到13.78 +/- 2.68。所有校正序列的mQOF平均增加了15.32 +/- 5.13%。提高了曲线拟合的质量以及在运动校正序列上计算出的相应参数成像的质量。平均而言,使用MATLAB在大约3分钟内对包含大约100帧的序列进行运动校正,而完全手动的方法大约需要10分钟。结论:与肿瘤大小无关的基于图像的策略可以快速纠正CEUS图像序列中的呼吸运动。仅需要简单的手动操作,例如选择模板图像和搜索空间。它易于使用,适用于受采样不利因素影响的大多数临床病例。由于节省时间的优点,该策略可广泛应用于临床实践,并提高FLL的诊断效率。此外,校正策略是对肝脏灌注研究进行局部量化的关键预处理步骤。

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