图像引导手术的实时图像分割

S. Warfield, F. Jolesz, R. Kikinis
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引用次数: 31

摘要

图像引导手术是高性能计算日益成为关键技术的一种应用。图像引导手术技术的进步使得在手术进行时获取患者的图像成为可能,将这些图像与术前获得的患者高分辨率3D扫描图像对齐,并合并术中来自多种成像方式的图像。这些技术的应用已成为一些医院的常规临床程序。然而,随着所采取的程序类型的扩大,越来越明显的是,单独使用图像融合和线性配准技术有一些局限性。我们开发了一种新的图像分割算法,该算法利用正常患者解剖的个性化模板来计算术中图像数据的分割。术中图像分割是高度数据和计算密集型的。为了在与手术干预兼容的时间框架内实现准确的分割,我们开发了并行版本的分割算法,并在对称多处理器架构上实现了该算法。我们研究了分割算法的准确性,以及并行实现的可扩展性和带宽要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Image Segmentation for Image-Guided Surgery
Image-guided surgery is an application for which high performance computing is increasingly becoming a critical technology. Advances in image-guided surgery techniques have made it possible to acquire images of a patient whilst the surgery is taking place, to align these images with high resolution 3D scans of the patient acquired preoperatively and to merge intraoperative images from multiple imaging modalities. The application of these technologies has now become a routine clinical procedure in some hospitals. However, as the type of procedures undertaken is expanded, it is becoming clear that the use of image fusion and linear registration technology alone has some limitations. We have developed a novel image segmentation algorithm that makes use of an individualized template of normal patient anatomy in order to compute the segmentation of intraoperative imaging data. Intraoperative image segmentation is highly data and compute intensive. In order to achieve accurate segmentation in a time frame compatible with surgical intervention, we have developed a parallel version of our segmentation algorithm, and implemented the algorithm on a symmetric multiprocessor architecture. We have studied the accuracy of the segmentation algorithm, and the scalability and bandwidth requirements of our parallel implementation.
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