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Multi-view 3D skin feature recognition and localization for patient tracking in spinal surgery applications

机译:脊髓手术应用患者跟踪的多视图3D皮肤特征识别与本地化

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Minimally invasive spine surgery is dependent on accurate navigation. Computer-assisted navigation is increasingly used in minimally invasive surgery (MIS), but current solutions require the use of reference markers in the surgical field for both patient and instruments tracking. To improve reliability and facilitate clinical workflow, this study proposes a new marker-free tracking framework based on skin feature recognition. Maximally Stable Extremal Regions (MSER) and Speeded Up Robust Feature (SURF) algorithms are applied for skin feature detection. The proposed tracking framework is based on a multi-camera setup for obtaining multi-view acquisitions of the surgical area. Features can then be accurately detected using MSER and SURF and afterward localized by triangulation. The triangulation error is used for assessing the localization quality in 3D. The framework was tested on a cadaver dataset and in eight clinical cases. The detected features for the entire patient datasets were found to have an overall triangulation error of 0.207 mm for MSER and 0.204 mm for SURF. The localization accuracy was compared to a system with conventional markers, serving as a ground truth. An average accuracy of 0.627 and 0.622 mm was achieved for MSER and SURF, respectively. This study demonstrates that skin feature localization for patient tracking in a surgical setting is feasible. The technology shows promising results in terms of detected features and localization accuracy. In the future, the framework may be further improved by exploiting extended feature processing using modern optical imaging techniques for clinical applications where patient tracking is crucial.
机译:微创脊柱手术取决于准确的导航。计算机辅助导航越来越多地用于微创手术(MIS),但目前的解决方案需要在外科手术领域中使用参考标记,用于患者和仪器跟踪。为了提高可靠性和促进临床工作流程,本研究提出了一种基于皮肤特征识别的新的标记跟踪框架。最大稳定的极端区域(MSER)和加速鲁棒特征(冲浪)算法应用于皮肤特征检测。所提出的跟踪框架基于多摄像机设置,以获得外科手术区域的多视图获取。然后可以使用MSER和冲浪和通过三角测量来准确地检测特征。三角测量误差用于评估3D中的本地化质量。该框架在尸体数据集和八个临床案件中进行了测试。发现整个患者数据集的检测功能对于MSER的整体三角测量误差为0.207 mm,电影为0.204毫米。将本地化精度与具有传统标记的系统进行比较,作为地面真理。对于MSER和SHIF,分别实现了0.627和0.622mm的平均精度。本研究表明,用于患者在外科手术环境中的皮肤特征定位是可行的。该技术表明,在检测到的特征和本地化准确性方面,有希望的结果。在未来,可以通过利用使用现代光学成像技术的扩展特征处理来进一步提高框架,用于患者跟踪至关重要的临床应用。

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