Department of Electrical and Computer Engineering, Rutgers University, Piscataway, NJ, USA.
Department of Electrical and Computer Engineering, Johns Hopkins University, Baltimore, MD, USA.
Int J Comput Assist Radiol Surg. 2020 Sep;15(9):1477-1485. doi: 10.1007/s11548-020-02221-z. Epub 2020 Jul 11.
Real-time, two (2D) and three-dimensional (3D) ultrasound (US) has been investigated as a potential alternative to fluoroscopy imaging in various surgical and non-surgical orthopedic procedures. However, low signal to noise ratio, imaging artifacts and bone surfaces appearing several millimeters (mm) in thickness have hindered the wide spread adaptation of this safe imaging modality. Limited field of view and manual data collection cause additional problems during US-based orthopedic procedures. In order to overcome these limitations various bone segmentation and registration methods have been developed. Acoustic bone shadow is an important image artifact used to identify the presence of bone boundaries in the collected US data. Information about bone shadow region can be used (1) to guide the orthopedic surgeon or clinician to a standardized diagnostic viewing plane with minimal artifacts, (2) as a prior feature to improve bone segmentation and registration.
In this work, we propose a computational method, based on a novel generative adversarial network (GAN) architecture, to segment bone shadow images from in vivo US scans in real-time. We also show how these segmented shadow images can be incorporated, as a proxy, to a multi-feature guided convolutional neural network (CNN) architecture for real-time and accurate bone surface segmentation. Quantitative and qualitative evaluation studies are performed on 1235 scans collected from 27 subjects using two different US machines. Finally, we provide qualitative and quantitative comparison results against state-of-the-art GANs.
We have obtained mean dice coefficient (± standard deviation) of [Formula: see text] ([Formula: see text]) for bone shadow segmentation, showing that the method is in close range with manual expert annotation. Statistical significant improvements against state-of-the-art GAN methods (paired t-test [Formula: see text]) is also obtained. Using the segmented bone shadow features average bone localization accuracy of 0.11 mm ([Formula: see text]) was achieved.
Reported accurate and robust results make the proposed method promising for various orthopedic procedures. Although we did not investigate in this work, the segmented bone shadow images could also be used as an additional feature to improve accuracy of US-based registration methods. Further extensive validations are required in order to fully understand the clinical utility of the proposed method.
实时二维(2D)和三维(3D)超声(US)已被研究作为各种外科和非外科骨科手术中透视成像的潜在替代方法。然而,低信噪比、成像伪影和几毫米(mm)厚的骨表面阻碍了这种安全成像方式的广泛应用。有限的视野和手动数据采集在基于 US 的骨科手术中会导致额外的问题。为了克服这些限制,已经开发了各种骨分割和配准方法。声骨影是一种重要的图像伪影,用于识别采集的 US 数据中骨边界的存在。骨影区域的信息可用于:(1)引导骨科医生或临床医生进入最小伪影的标准化诊断观察平面;(2)作为改进骨分割和配准的先验特征。
在这项工作中,我们提出了一种基于新型生成对抗网络(GAN)架构的计算方法,用于实时从活体 US 扫描中分割骨影图像。我们还展示了如何将这些分割的阴影图像作为代理,合并到多特征引导卷积神经网络(CNN)架构中,以实现实时和准确的骨表面分割。使用两台不同的 US 机从 27 名受试者中采集了 1235 次扫描进行定量和定性评估研究。最后,我们提供了与最先进的 GAN 相比的定性和定量比较结果。
我们获得了骨影分割的平均骰子系数(±标准差)[Formula: see text]([Formula: see text]),表明该方法与手动专家标注非常接近。与最先进的 GAN 方法(配对 t 检验 [Formula: see text])也获得了统计学上的显著改进。使用分割的骨影特征,平均骨定位精度达到 0.11mm([Formula: see text])。
报告的准确和稳健的结果使该方法有望应用于各种骨科手术。尽管我们在这项工作中没有进行研究,但分割的骨影图像也可以用作提高基于 US 的配准方法准确性的附加特征。为了充分了解所提出方法的临床实用性,还需要进一步进行广泛验证。