Design and validation of a navigation system of multimodal medical images for neurosurgery based on mixed reality

IF 3.8 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Visual Informatics Pub Date : 2023-06-01 DOI:10.1016/j.visinf.2023.05.003
Zeyang Zhou , Zhiyong Yang , Shan Jiang , Tao Zhu , Shixing Ma , Yuhua Li , Jie Zhuo
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引用次数: 0

Abstract

Purpose:

This paper aims to develop a navigation system based on mixed reality, which can display multimodal medical images in an immersive environment and help surgeons locate the target area and surrounding important tissues precisely.

Methods:

To be displayed properly in mixed reality, medical images are processed in this system. High-quality cerebral vessels and nerve fibers with proper colors are reconstructed and exported to mixed reality environment. Multimodal images and models are registered and fused, extracting their key information. The multiple processed images are fused with the real patient in the same coordinate system to guide the surgery.

Results:

The multimodal image system is designed and validated properly. In phantom experiments, the average error of preoperative registration is 1.003 mm and the standard deviation is 0.096 mm. The average proportion of well-registered areas is 94.9%. In patient experiments, the surgeons who participated in the experiments generally indicated that the system had excellent performance and great application prospect for neurosurgery.

Conclusion:

This article proposes a navigation system of multimodal images for neurosurgery based on mixed reality. Compared with other navigation methods, this system can help surgeons locate the target area and surrounding important tissues more precisely and rapidly.

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基于混合现实的神经外科多模态医学图像导航系统设计与验证
目的:本文旨在开发一种基于混合现实的导航系统,该系统可以在沉浸式环境中显示多模式医学图像,并帮助外科医生精确定位目标区域和周围重要组织。方法:在该系统中对医学图像进行处理,以使其在混合现实中正确显示。高质量的脑血管和具有适当颜色的神经纤维被重建并输出到混合现实环境中。对多模式图像和模型进行配准和融合,提取其关键信息。将多个处理后的图像与同一坐标系中的真实患者融合,以指导手术。结果:设计并验证了该多模式图像系统。在体模实验中,术前配准的平均误差为1.003 mm,标准偏差为0.096 mm。配准良好区域的平均比例为94.9%。在患者实验中,参与实验的外科医生普遍表示,该系统具有优异的性能,在神经外科有很大的应用前景。结论:本文提出了一种基于混合现实的神经外科多模式图像导航系统。与其他导航方法相比,该系统可以帮助外科医生更准确、快速地定位目标区域和周围重要组织。
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来源期刊
Visual Informatics
Visual Informatics Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
6.70
自引率
3.30%
发文量
33
审稿时长
79 days
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