Garlapati Revanth Reddy, Roy Aditi, Joldes Grand Roman, Wittek Adam, Mostayed Ahmed, Doyle Barry, Warfield Simon Keith, Kikinis Ron, Knuckey Neville, Bunt Stuart, Miller Karol
Intelligent Systems for Medicine Laboratory;
J Neurosurg. 2014 Jun;120(6):1477-83. doi: 10.3171/2013.12.JNS131165. Epub 2014 Jan 24.
It is possible to improve neuronavigation during image-guided surgery by warping the high-quality preoperative brain images so that they correspond with the current intraoperative configuration of the brain. In this paper, the accuracy of registration results obtained using comprehensive biomechanical models is compared with the accuracy of rigid registration, the technology currently available to patients. This comparison allows investigation into whether biomechanical modeling provides good-quality image data for neuronavigation for a larger proportion of patients than rigid registration. Preoperative images for 33 neurosurgery cases were warped onto their respective intraoperative configurations using both the biomechanics-based method and rigid registration. The Hausdorff distance-based evaluation process, which measures the difference between images, was used to quantify the performance of both registration methods. A statistical test for difference in proportions was conducted to evaluate the null hypothesis that the proportion of patients for whom improved neuronavigation can be achieved is the same for rigid and biomechanics-based registration. The null hypothesis was confidently rejected (p < 10(-4)). Even the modified hypothesis that fewer than 25% of patients would benefit from the use of biomechanics-based registration was rejected at a significance level of 5% (p = 0.02). The biomechanics-based method proved particularly effective in cases demonstrating large craniotomy-induced brain deformations. The outcome of this analysis suggests that nonlinear biomechanics-based methods are beneficial to a large proportion of patients and can be considered for use in the operating theater as a possible means of improving neuronavigation and surgical outcomes.
通过对高质量的术前脑图像进行变形,使其与当前术中大脑的配置相对应,有可能在图像引导手术中改善神经导航。在本文中,将使用综合生物力学模型获得的配准结果的准确性与刚性配准(目前患者可使用的技术)的准确性进行了比较。这种比较有助于研究生物力学建模是否比刚性配准能为更大比例的患者提供用于神经导航的高质量图像数据。使用基于生物力学的方法和刚性配准,将33例神经外科手术病例的术前图像变形到各自的术中配置上。基于豪斯多夫距离的评估过程(用于测量图像之间的差异)被用来量化两种配准方法的性能。进行了比例差异的统计检验,以评估零假设,即刚性配准和基于生物力学的配准能够实现改善神经导航的患者比例相同。零假设被明确拒绝(p < 10(-4))。即使是修改后的假设,即少于25%的患者将从使用基于生物力学的配准中受益,也在5%的显著性水平下被拒绝(p = 0.02)。基于生物力学的方法在显示出大的开颅手术引起的脑变形的病例中证明特别有效。该分析结果表明,基于非线性生物力学的方法对很大比例的患者有益,并且可以考虑在手术室中使用,作为改善神经导航和手术结果的一种可能手段。