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首页> 外文期刊>Medical Physics >Carpal tunnel syndrome diagnosis by a self-normalization process and ultrasound compound imaging
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Carpal tunnel syndrome diagnosis by a self-normalization process and ultrasound compound imaging

机译:通过自我标准化过程和超声复合成像诊断腕管综合症

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Purpose: Carpal tunnel syndrome (CTS) is the common entrapment neuropathy that occurs due to compression of the median nerve at the wrist. Ultrasound images have been used to highlight anatomical variants of the median nerve, and CTS is thought to be associated to enlargement of the cross-sectional area (CSA) of the median nerve. However, there remains controversy regarding the most appropriate cutoff values of the computer measurements including the CSA, flattening ratio, and palmar bowing of median nerve, especially given that they can be influenced by image artifacts and factors that differ between individual patients. This study proposed a modified ultrasound compound imaging technique by moving fingers to reduce image artifacts, and the estimates of the normalized CSA i.e., CSA at the wrist (CSAw) to CSA at the midforearm with the aim of reducing discrepancies in CSA estimates and improving the ability of CTS discrimination. Methods: The subjects were examined with their arms supine and while they were making repetitive movements of their fingers (from an open palm into a clenched fist) within 3 s. By a commercial ultrasound scanner with a 10-MHz linear array transducer, a total of 70 images were acquired in each subject. The frame rate of ultrasound system was 25 fps. Nine frames in the acquisition sequence that had produced partial speckle decorrelation were incoherently added to form a compound image, and the inplane motion of them was corrected using the multilevel block-sum pyramid algorithm. The manual contours outlined by ten experimenters and three physicians were used to test the performance in determining the boundary of the median nerve. The receiver operating characteristic (ROC) curve was used to evaluate the usefulness of the estimates in distinguishing healthy volunteers from CTS patients. Results: The manual contours of the median nerve in the compound images had an average area overlap exceeding 90 and relatively small area errors. The areas under the ROC curve obtained using the CSAw estimates for the original and compound images were 0.60 ± 0.09 (mean ± standard error) and 0.80 ± 0.05, respectively; that using normalized CSA estimates for the original and compound images were 0.76 ± 0.04 and 0.89 ± 0.04, respectively. The results show that variations in the CSAw values of compound images for healthy overweight and obese subjects can adversely influence CTS diagnosis, but that this can be overcome using the normalized CSA estimate of compound images. Conclusions: Compound imaging provides images of superior quality for determining the location of the median nerve boundary. Using the normalized CSA estimate would assist in eliminating problems associated with variability between populations, since the subject becomes his or her own internal control, thereby improving the ultrasound-based diagnosis of CTS.
机译:目的:腕管综合症(CTS)是由于腕部正中神经受压而发生的常见夹带性神经病。超声图像已被用于突出正中神经的解剖变异,并且CTS被认为与正中神经横截面积(CSA)的增大有关。但是,关于计算机测量的最合适的临界值(包括CSA,展平率和正中神经的掌弓),仍存在争议,尤其是考虑到它们可能受到图像伪影和各个患者之间不同因素的影响时,尤其如此。这项研究提出了一种改进的超声复合成像技术,该技术通过移动手指来减少图像伪像,并将标准化CSA的估算值(即腕部CSA(CSAw)到前臂中部CSA的估算值)降低了,以减少CSA估算值的差异并改善CTS辨别能力。方法:受试者在仰卧状态下进行检查,并在3 s内重复手指运动(从张开的手掌到紧握的拳头)。通过带有10 MHz线性阵列换能器的商用超声扫描仪,每个受试者中总共获得了70张图像。超声系统的帧率为25 fps。采集序列中产生了部分斑点去相关的九帧被非相干地添加以形成复合图像,并使用多级块和金字塔算法校正了它们的平面运动。由十位实验者和三位医师概述的手动轮廓用于测试确定正中神经边界的性能。接收者操作特征(ROC)曲线用于评估将健康志愿者与CTS患者区分开来的估计值的有用性。结果:复合图像中正中神经的手动轮廓具有超过90的平均面积重叠和相对较小的面积误差。使用CSAw估计得出的原始图像和复合图像的ROC曲线下面积分别为0.60±0.09(均值±标准误差)和0.80±0.05;使用归一化CSA估计的原始图像和复合图像分别为0.76±0.04和0.89±0.04。结果表明,健康超重和肥胖受试者的复合图像CSAw值变化可能会对CTS诊断产生不利影响,但是使用复合图像的标准化CSA估计可以克服这一点。结论:复合成像可提供高质量的图像来确定正中神经边界的位置。使用归一化的CSA估计值将有助于消除与人群之间的变异性相关的问题,因为受试者成为自己的内部控制,从而改善了基于超声的CTS诊断。

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