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乳腺应变弹性成像的自动切片选择与诊断

Automatic slice selection and diagnosis of breast strain elastography.

作者信息

Chang Shao-Chien, Lee Yan-Wei, Lai Yi-Chen, Tiu Chui-Mei, Wang Hsin-Kai, Chiou Hong-Jen, Hsu Yu-Wei, Chou Yi-Hong, Chang Ruey-Feng

机构信息

Department of Psychology, College of Medicine, National Taiwan University, Taipei 10048, Taiwan.

Department of Computer Science and Information Engineering, National Taiwan University, Taipei 10617, Taiwan.

出版信息

Med Phys. 2014 Oct;41(10):102902. doi: 10.1118/1.4894717.

Abstract

PURPOSE

Generally speaking, breast imaging experts and physicians select a representative slice from the strain elastographic image sequences to diagnose the tumor. Given the strain image qualities, it is difficult to make a successful diagnosis using human eyes only. The main purpose of this study is to develop an automatic and reliable method to select the representative slice from the elastography cine loops and/or video and then diagnose the tumor by means of the elastographic features generated from the selected slice.

METHODS

In this study, the authors collected 80 biopsy-proven breast tumors, comprising of 45 benign and 35 malignant lesions, to estimate the performance of the automatic slice selection method. Images chosen using several slice selection criteria (e.g., whole-image analysis or tumor region analysis) were compared to the physician-selected images to determine the best selection criterion. The level set tumor segmentation method was applied to the corresponding B-mode part of the representative elastographic slice to overlap tumor boundaries on strain images and to calculate elastographic features for diagnosis.

RESULTS

The experiment showed that the diagnostic performance, in terms of accuracy, sensitivity, and specificity, evaluated by the leave-one-out method, based on the elastographic features for the representative slice selected by the proposed slice selection method, was 71.3%, 91.4%, and 55.6%, respectively, while the performance values for the physician-selected slice were 65.0%, 77.1%, and 55.6%, respectively.

CONCLUSIONS

Both the sensitivity and accuracy of the proposed slice selection method were better than those of the physician-selected slice, and the specificity of these two different schemes is similar. According to the statistical analysis of experimental results, the performance of the proposed slice selection method was similar to that of the physician's selection. The authors concluded that the proposed slice selection method could assist the physician in selecting the appropriate representative slice and in decreasing the time of selection.

摘要

目的

一般而言,乳腺影像专家和医生会从应变弹性成像图像序列中选择代表性切片来诊断肿瘤。鉴于应变图像质量,仅靠肉眼很难成功诊断。本研究的主要目的是开发一种自动且可靠的方法,从弹性成像动态环和/或视频中选择代表性切片,然后借助所选切片生成的弹性特征来诊断肿瘤。

方法

在本研究中,作者收集了80个经活检证实的乳腺肿瘤,包括45个良性病变和35个恶性病变,以评估自动切片选择方法的性能。将使用几种切片选择标准(例如全图像分析或肿瘤区域分析)选择的图像与医生选择的图像进行比较,以确定最佳选择标准。将水平集肿瘤分割方法应用于代表性弹性切片的相应B模式部分,以在应变图像上重叠肿瘤边界并计算用于诊断的弹性特征。

结果

实验表明,通过留一法评估,基于所提出的切片选择方法选择的代表性切片的弹性特征,诊断性能在准确性、敏感性和特异性方面分别为71.3%、91.4%和55.6%,而医生选择切片的性能值分别为65.0%、77.1%和55.6%。

结论

所提出的切片选择方法的敏感性和准确性均优于医生选择的切片,并且这两种不同方案的特异性相似。根据实验结果的统计分析,所提出的切片选择方法的性能与医生的选择相似。作者得出结论,所提出的切片选择方法可以帮助医生选择合适的代表性切片并减少选择时间。

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