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超高场强磁共振图像引导的机器人针道内小动物介入系统。

An ultra-high field strength MR image-guided robotic needle delivery system for in-bore small animal interventions.

机构信息

Robarts Research Institute, London, ON, N6A 5B7, Canada.

Biomedical Engineering, Western University, London, ON, N6A 5B9, Canada.

出版信息

Med Phys. 2017 Nov;44(11):5544-5555. doi: 10.1002/mp.12534. Epub 2017 Sep 30.

Abstract

PURPOSE

The purpose of this study was to develop and validate an image-guided robotic needle delivery system for accurate and repeatable needle targeting procedures in mouse brains inside the 12 cm inner diameter gradient coil insert of a 9.4 T MR scanner. Many preclinical research techniques require the use of accurate needle deliveries to soft tissues, including brain tissue. Soft tissues are optimally visualized in MR images, which offer high-soft tissue contrast, as well as a range of unique imaging techniques, including functional, spectroscopy and thermal imaging, however, there are currently no solutions for delivering needles to small animal brains inside the bore of an ultra-high field MR scanner. This paper describes the mechatronic design, evaluation of MR compatibility, registration technique, mechanical calibration, the quantitative validation of the in-bore image-guided needle targeting accuracy and repeatability, and demonstrated the system's ability to deliver needles in situ.

METHODS

Our six degree-of-freedom, MR compatible, mechatronic system was designed to fit inside the bore of a 9.4 T MR scanner and is actuated using a combination of piezoelectric and hydraulic mechanisms. The MR compatibility and targeting accuracy of the needle delivery system are evaluated to ensure that the system is precisely calibrated to perform the needle targeting procedures. A semi-automated image registration is performed to link the robot coordinates to the MR coordinate system. Soft tissue targets can be accurately localized in MR images, followed by automatic alignment of the needle trajectory to the target. Intra-procedure visualization of the needle target location and the needle were confirmed through MR images after needle insertion.

RESULTS

The effects of geometric distortions and signal noise were found to be below threshold that would have an impact on the accuracy of the system. The system was found to have negligible effect on the MR image signal noise and geometric distortion. The system was mechanically calibrated and the mean image-guided needle targeting and needle trajectory accuracies were quantified in an image-guided tissue mimicking phantom experiment to be 178 ± 54 μm and 0.27 ± 0.65°, respectively.

CONCLUSIONS

An MR image-guided system for in-bore needle deliveries to soft tissue targets in small animal models has been developed. The results of the needle targeting accuracy experiments in phantoms indicate that this system has the potential to deliver needles to the smallest soft tissue structures relevant in preclinical studies, at a wide variety of needle trajectories. Future work in the form of a fully-automated needle driver with precise depth control would benefit this system in terms of its applicability to a wider range of animal models and organ targets.

摘要

目的

本研究旨在开发和验证一种图像引导的机器人针输送系统,用于在 9.4TMR 扫描仪的 12cm 内径梯度线圈插入物内的小鼠大脑中进行准确且可重复的针靶向操作。许多临床前研究技术都需要使用准确的针输送来进行软组织操作,包括脑组织。软组织在 MR 图像中最佳可视化,MR 图像具有高软组织对比度以及一系列独特的成像技术,包括功能、光谱和热成像,然而,目前还没有在超高场 MR 扫描仪的孔径内输送针的解决方案。本文描述了机电设计、MR 兼容性评估、配准技术、机械校准、孔径内图像引导针靶向准确性和可重复性的定量验证,并展示了该系统在原位输送针的能力。

方法

我们的六自由度、MR 兼容的机电系统设计用于安装在 9.4TMR 扫描仪的孔径内,并使用压电和液压机构的组合进行驱动。评估了针输送系统的 MR 兼容性和靶向准确性,以确保系统经过精确校准以执行针靶向操作。进行半自动图像配准,将机器人坐标与 MR 坐标系关联起来。可以在 MR 图像中准确定位软组织目标,然后自动将针轨迹对准目标。在插入针后,通过 MR 图像确认针插入过程中针目标位置和针的可视化。

结果

发现几何变形和信号噪声的影响低于系统精度的影响阈值。发现该系统对 MR 图像信号噪声和几何变形几乎没有影响。对系统进行了机械校准,并在图像引导的组织模拟体模实验中定量评估了系统引导的针靶向和针轨迹的平均精度,分别为 178±54μm 和 0.27±0.65°。

结论

已经开发了一种用于在小动物模型的孔径内向软组织目标进行针输送的 MR 图像引导系统。体模中的针靶向准确性实验结果表明,该系统具有在各种针轨迹下向临床前研究中相关的最小软组织结构输送针的潜力。未来的全自动针驱动器和精确的深度控制形式将使该系统在更广泛的动物模型和器官目标应用中受益。

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