Department of Neurosurgery, University Hospital Essen.
Int J Med Robot. 2012 Sep;8(3):348-59. doi: 10.1002/rcs.1420. Epub 2012 Feb 29.
Freehand three-dimensional ultrasound imaging (3D-US) is increasingly used in image-guided surgery. During image acquisition, a set of B-scans is acquired that is distributed in a non-parallel manner over the area of interest. Reconstructing these images into a regular array allows 3D visualization. However, the reconstruction process may introduce artefacts and may therefore reduce image quality. The aim of the study is to compare different algorithms with respect to image quality and diagnostic value for image guidance in neurosurgery.
3D-US data sets were acquired during surgery of various intracerebral lesions using an integrated ultrasound-navigation device. They were stored for post-hoc evaluation. Five different reconstruction algorithms, a standard multiplanar reconstruction with interpolation (MPR), a pixel nearest neighbour method (PNN), a voxel nearest neighbour method (VNN) and two voxel based distance-weighted algorithms (VNN2 and DW) were tested with respect to image quality and artefact formation. The capability of the algorithm to fill gaps within the sample volume was investigated and a clinical evaluation with respect to the diagnostic value of the reconstructed images was performed.
MPR was significantly worse than the other algorithms in filling gaps. In an image subtraction test, VNN2 and DW reliably reconstructed images even if large amounts of data were missing. However, the quality of the reconstruction improved, if data acquisition was performed in a structured manner. When evaluating the diagnostic value of reconstructed axial, sagittal and coronal views, VNN2 and DW were judged to be significantly better than MPR and VNN.
VNN2 and DW could be identified as robust algorithms that generate reconstructed US images with a high diagnostic value. These algorithms improve the utility and reliability of 3D-US imaging during intraoperative navigation.
自由式三维超声成像(3D-US)越来越多地用于图像引导手术。在图像采集过程中,获取一组在感兴趣区域内非平行分布的 B 扫描。将这些图像重建为规则排列可以实现 3D 可视化。然而,重建过程可能会引入伪影,从而降低图像质量。本研究的目的是比较不同算法在神经外科图像引导方面的图像质量和诊断价值。
使用集成式超声导航设备在各种颅内病变的手术过程中获取 3D-US 数据集,并进行后处理评估。测试了五种不同的重建算法,包括标准的带插值的多平面重建(MPR)、像素最近邻法(PNN)、体素最近邻法(VNN)和两种基于体素的距离加权算法(VNN2 和 DW),以评估图像质量和伪影形成。还研究了算法填充样本体积内间隙的能力,并对重建图像的诊断价值进行了临床评估。
MPR 在填充间隙方面明显劣于其他算法。在图像减法测试中,VNN2 和 DW 即使在大量数据缺失的情况下也能可靠地重建图像。然而,如果数据采集方式是结构化的,则重建质量会提高。在评估重建的轴向、矢状和冠状视图的诊断价值时,VNN2 和 DW 被认为明显优于 MPR 和 VNN。
VNN2 和 DW 可以被确定为稳健的算法,可生成具有高诊断价值的重建 US 图像。这些算法提高了术中导航期间 3D-US 成像的实用性和可靠性。