1 Institute of Industrial Engineering, National Taiwan University, Taipei.
2 Department of Mechanical Engineering, National Taiwan University, Taipei.
Ultrason Imaging. 2019 Jul;41(4):206-230. doi: 10.1177/0161734619839648. Epub 2019 Apr 16.
To perform computer-aided diagnosis of the thyroid nodules on ultrasound images, the location and boundary of nodules should be clearly defined. However, the identification of thyroid nodule boundary is a difficult issue due to the biological characteristics of the nodules, the physics and quality of ultrasound imaging, and the subjective factors and operating conditions of the operator. In this study, we propose a novel and semiautomatic method for detecting the boundary of thyroid nodule based on the Variance-Reduction (V-R) statistics without image preprocessing. The region of interest (ROI) is first automatically generated according to the initial inputs of the nodule's major and minor axes. The boundary candidate pixel points are then extracted by using the V-R statistics from the grayscale values of all pixel points in the ROI. Three filtering methods are further applied to eliminate the outlier pixel points to ensure that the remaining candidate pixel points are located on the nodule boundary. Finally, the remaining pixel points are smoothened and linked together to form the final boundary. The proposed method is validated with ultrasound images of 538 thyroid nodules, with manual delineation by experienced radiologist as gold standard. The effectiveness is evaluated and compared with previous publications using boundary error metrics and overlapping area metrics with the same data set. The results show that the normalized average mean boundary error is 1.02%, the true positive overlapping area ratio achieves 93.66% and false positive overlapping area ratio is limited to 7.68%. In conclusion, our proposed method is reliable and effective in detecting thyroid nodule boundary on ultrasound images.
为了在超声图像上实现甲状腺结节的计算机辅助诊断,结节的位置和边界应该清晰界定。然而,由于结节的生物学特性、超声成像的物理和质量以及操作者的主观因素和操作条件,甲状腺结节边界的识别是一个难题。在这项研究中,我们提出了一种新颖的基于方差缩减(V-R)统计的无需图像预处理的甲状腺结节边界检测半自动方法。首先,根据结节的长轴和短轴的初始输入,自动生成感兴趣区域(ROI)。然后,通过从 ROI 中所有像素点的灰度值中提取 V-R 统计量,提取边界候选像素点。进一步应用三种滤波方法消除异常值像素点,以确保剩余的候选像素点位于结节边界上。最后,对剩余的像素点进行平滑处理并连接在一起,形成最终的边界。使用 538 个甲状腺结节的超声图像,以经验丰富的放射科医生的手动描绘作为金标准对所提出的方法进行验证。使用相同的数据集,使用边界误差度量和重叠面积度量对有效性进行评估和与以前的文献进行比较。结果表明,归一化平均边界误差为 1.02%,真阳性重叠面积比达到 93.66%,假阳性重叠面积比限制在 7.68%以内。总之,我们提出的方法在超声图像上检测甲状腺结节边界是可靠和有效的。