VibNet: Vibration-Boosted Needle Detection in Ultrasound Images

Dianye Huang;Chenyang Li;Angelos Karlas;Xiangyu Chu;K. W. Samuel Au;Nassir Navab;Zhongliang Jiang
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Abstract

Precise percutaneous needle detection is crucial for ultrasound (US)-guided interventions. However, inherent limitations such as speckles, needle-like artifacts, and low resolution make it challenging to robustly detect needles, especially when their visibility is reduced or imperceptible. To address this challenge, we propose VibNet, a learning-based framework designed to enhance the robustness and accuracy of needle detection in US images by leveraging periodic vibration applied externally to the needle shafts. VibNet integrates neural Short-Time Fourier Transform and Hough Transform modules to achieve successive sub-goals, including motion feature extraction in the spatiotemporal space, frequency feature aggregation, and needle detection in the Hough space. Due to the periodic subtle vibration, the features are more robust in the frequency domain than in the image intensity domain, making VibNet more effective than traditional intensity-based methods. To demonstrate the effectiveness of VibNet, we conducted experiments on distinct ex vivo porcine and bovine tissue samples. The results obtained on porcine samples demonstrate that VibNet effectively detects needles even when their visibility is severely reduced, with a tip error of ${1}.{61}\pm {1}.{56}~\textit {mm}$ compared to ${8}.{15}\pm {9}.{98}~\textit {mm}$ for UNet and ${6}.{63}\pm {7}.{58}~\textit {mm}$ for WNet, and a needle direction error of ${1}.{64}\pm {1}.{86}^{\circ }$ compared to ${9}.{29}~\pm ~{15}.{30}^{\circ }$ for UNet and ${8}.{54}~\pm ~{17}.{92}^{\circ }$ for WNet. Code: https://github.com/marslicy/VibNet.
VibNet:超声图像中的振动增强针检测
精确的经皮穿刺检测对于超声(US)引导的介入治疗至关重要。然而,固有的局限性,如斑点、针状伪影和低分辨率,使得对针头的鲁棒检测具有挑战性,特别是当它们的可见性降低或难以察觉时。为了应对这一挑战,我们提出了VibNet,这是一个基于学习的框架,旨在通过利用外部施加于针轴的周期性振动来提高美国图像中针检测的鲁棒性和准确性。VibNet集成了神经短时傅里叶变换和霍夫变换模块,实现了连续的子目标,包括时空空间的运动特征提取、频率特征聚合和霍夫空间的针状检测。由于周期性的细微振动,特征在频域比在图像强度域具有更强的鲁棒性,使得VibNet比传统的基于强度的方法更有效。为了证明VibNet的有效性,我们在不同的离体猪和牛组织样本上进行了实验。在猪样本上获得的结果表明,即使针头能见度严重降低,VibNet也能有效地检测针头,针尖误差为100亿美元。{61}、{1}。{56}~\textit {mm}$与${8}比较。{9}{15} \点。{98}~\textit {mm}$用于UNet和${6}。{7}{63} \点。{58}~\textit {mm}$用于WNet,指针方向误差为${1}。{64}、{1}。{86}^{\circ}$相对于${9}。{29} ~ ~下午\{15}。^{\circ}$用于UNet和${8}。{54} ~ ~下午\{17}。{92}^{\circ}$用于WNet。代码:https://github.com/marslicy/VibNet。
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