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System architecture for intraoperative ultrasound registration in image-based medical navigation

机译:基于图像的医学导航中术中超声配准的系统架构

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摘要

Medical navigation systems for orthopedic surgery are becoming more and more important with the increasing proportion of older people in the population, and hence the increasing incidence of diseases of the musculoskeletal system. The central problem for such systems is the exact transformation of the preoperatively acquired datasets to the coordinate system of the patient's body, which is crucial for the accuracy of navigation. Our approach, based on the use of intraoperative ultrasound for image registration, is capable of robustly registering bone structures for different applications, e.g., at the spine or the knee. Nevertheless, this new procedure demands additional steps of preparation of preoperative data. To increase the clinical acceptance of this procedure, it is useful to automate most of the data processing steps. In this article, we present the architecture of our system with focus on the automation of the data processing steps. In terms of accuracy, a mean target registration error of 0.68 mm was achieved for automatically segmented and registered phantom data where the reference transformation was obtained by performing point-based registration using artificial structures. As the overall accuracy for subject data cannot be determined non-invasively, automatic segmentation and registration were judged by visual inspection and precision, which showed a promising result of 1.76 mm standard deviation for 100 registration trials based on automatic segmentation of magnetic resonance imaging data of the spine.
机译:随着老年人口在人口中的比例不断增加,因此,用于骨科手术的医学导航系统变得越来越重要,因此,肌肉骨骼系统疾病的发病率也在增加。这种系统的中心问题是术前采集的数据集如何精确转换为患者身体的坐标系,这对于导航的准确性至关重要。我们基于使用术中超声进行图像配准的方法,能够针对不同应用(例如在脊柱或膝盖)稳健地配准骨骼结构。然而,这种新程序需要术前数据准备的附加步骤。为了提高该程序的临床接受度,使大多数数据处理步骤自动化非常有用。在本文中,我们介绍了我们的系统架构,重点是数据处理步骤的自动化。在准确性方面,自动分割和配准的体模数据的平均目标配准误差达到0.68 mm,其中通过使用人工结构执行基于点的配准来获得参考变换。由于不能无创地确定受试者数据的整体准确性,因此通过目视检查和精确度来判断自动分割和配准,基于磁共振成像数据的自动分割,在100个配准试验中显示出1.76 mm标准偏差的有希望的结果。脊柱。

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