Many interventional surgical procedures rely on medical imaging to visualise and track instruments. Such imaging methods not only need to be real-time capable, but also provide accurate and robust positional information. In ultrasound applications, typically only two-dimensional data from a linear array are available, and as such obtaining accurate positional estimation in three dimensions is non-trivial. In this work, we first train a neural network, using realistic synthetic training data, to estimate the out-of-plane offset of an object with the associated axial aberration in the reconstructed ultrasound image. The obtained estimate is then combined with a Kalman filtering approach that utilises positioning estimates obtained in previous time-frames to improve localisation robustness and reduce the impact of measurement noise. The accuracy of the proposed method is evaluated using simulations, and its practical applicability is demonstrated on experimental data obtained using a novel optical ultrasound imaging setup. Accurate and robust positional information is provided in real-time. Axial and lateral coordinates for out-of-plane objects are estimated with a mean error of 0.1mm for simulated data and a mean error of 0.2mm for experimental data. Three-dimensional localisation is most accurate for elevational distances larger than 1mm, with a maximum distance of 6mm considered for a 25mm aperture.
翻译:许多干预外科手术程序依靠医学成像和可视化和跟踪仪器。这些成像方法不仅需要实时能力,而且还需要提供准确和稳健的定位信息。在超声波应用中,通常只有线性阵列提供的二维数据,因此,获得三个维度的准确位置估计是非三维的。在这项工作中,我们首先用现实的合成培训数据来训练神经网络,以估计一个天体的外平偏差与重建的超声波图像中相关的轴偏差。然后,将获得的估计数与Kalman过滤法结合起来,该方法利用以前时间范围内获得的定位估计来提高定位的稳健性和减少测量噪音的影响。用模拟对拟议方法的准确性进行评估,其实际适用性体现在利用新颖的光学超声波成像设置获得的实验数据中。实时提供精确和稳健的定位信息。对外天体物体的轴和后方坐标进行了估计,在模拟数据中,将使用0.1毫米的平均偏差作为模拟数据,在最大偏差的地面上,对25毫米平均偏差进行试验数据进行计算。