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无标记的经颅磁刺激导航头位估计

MarLe: Markerless estimation of head pose for navigated transcranial magnetic stimulation.

机构信息

Department of Physics, Faculty of Philosophy Sciences and Letters of Ribeirão Preto, University of São Paulo, Av. Bandeirantes, Ribeirão Preto, 3900, 14040-901, SP, Brazil.

Department of Neuroscience and Biomedical Engineering, Aalto University School of Science, Rakentajanaukio 2, Espoo, 02150, Finland.

出版信息

Phys Eng Sci Med. 2023 Jun;46(2):887-896. doi: 10.1007/s13246-023-01263-2. Epub 2023 May 11.

Abstract

Navigated transcranial magnetic stimulation (nTMS) is a valuable tool for non-invasive brain stimulation. Currently, nTMS requires fixing of markers on the patient's head. Head marker displacements lead to changes in coil placement and brain stimulation inaccuracy. A markerless neuronavigation method is needed to increase the reliability of nTMS and simplify the nTMS protocol. In this study, we introduce and release MarLe, a Python markerless head tracker neuronavigation software for TMS. This novel software uses computer-vision techniques combined with low-cost cameras to estimate the head pose for neuronavigation. A coregistration algorithm, based on a closed-form solution, was designed to track the patient's head and the TMS coil referenced to the individual's brain image. We show that MarLe can estimate head pose based on real-time video processing. An intuitive pipeline was developed to connect the MarLe and nTMS neuronavigation software. MarLe achieved acceptable accuracy and stability in a mockup nTMS experiment. MarLe allows real-time tracking of the patient's head without any markers. The combination of face detection and a coregistration algorithm can overcome nTMS head marker displacement concerns. MarLe can improve reliability, simplify, and reduce the protocol time of brain intervention techniques such as nTMS.

摘要

经颅磁刺激导航(nTMS)是一种用于非侵入性脑刺激的有价值的工具。目前,nTMS 需要在患者头部固定标记物。头部标记物的位移会导致线圈位置发生变化,从而导致脑刺激不准确。需要一种无标记物的神经导航方法来提高 nTMS 的可靠性并简化 nTMS 方案。在这项研究中,我们引入并发布了 MarLe,这是一种用于 TMS 的基于 Python 的无标记头部跟踪神经导航软件。该新型软件使用计算机视觉技术和低成本摄像机来估计头部姿势以进行神经导航。设计了一种基于闭合形式解的配准算法来跟踪患者头部和 TMS 线圈,该线圈参考个体的脑图像。我们证明了 MarLe 可以基于实时视频处理来估计头部姿势。开发了一个直观的管道,将 MarLe 和 nTMS 神经导航软件连接起来。MarLe 在模拟 nTMS 实验中达到了可接受的精度和稳定性。MarLe 允许实时跟踪患者头部,无需任何标记物。面部检测和配准算法的结合可以克服 nTMS 头部标记物位移的问题。MarLe 可以提高可靠性,简化并减少 nTMS 等脑介入技术的协议时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b30a/10209239/d41846867673/13246_2023_1263_Fig1_HTML.jpg

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