MIXR:增强和混合现实中医学图像分析的标准体系结构

Benjamin Allison, Xujiong Ye, Faraz Janan
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引用次数: 2

摘要

医学图像分析正在发展到一个新的维度:它将人工智能和机器学习的力量与实时,真实空间显示相结合,即虚拟现实(VR),增强现实(AR)和混合现实(MR) -统称为扩展现实(XR)。这些设备通常以头戴式显示器的形式出现,它们正在推动临床实践中医疗数据的查看、处理和分析方式的彻底转变。最近有人尝试用XR设备帮助外科手术计划和医生培训。然而,从检测、诊断和预后的放射学前沿仍未得到探索。在本文中,我们提出了一个标准框架或架构,称为扩展现实中的医学成像(MIXR),用于构建XR中的医学图像分析应用。MIXR由文献中使用的几个组件组成;然而,将它们捆绑在一起用于在3D空间中重建体积数据。我们的重点是CT和MRI数据在XR中的重建机制;然而,我们提出的框架的应用范围超出了这些模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MIXR: A Standard Architecture for Medical Image Analysis in Augmented and Mixed Reality
Medical image analysis is evolving into a new dimension: where it will combine the power of AI and machine learning with real-time, real-space displays, namely Virtual Reality (VR), Augmented Reality (AR) and Mixed Reality (MR) - known collectively as Extended Reality (XR). These devices, typically available as head-mounted displays, are enabling the move towards the complete transformation of how medical data is viewed, processed and analysed in clinical practice. There have been recent attempts on how XR gadgets can help in surgical planning and training of medics. However, the radiological front from a detection, diagnostics and prognosis remains unexplored. In this paper we propose a standard framework or architecture called Medical Imaging in Extended Reality (MIXR) for building medical image analysis applications in XR. MIXR consists of several components used in literature; however, tied together for reconstructing volume data in 3D space. Our focus here is on the reconstruction mechanism for CT and MRI data in XR; nevertheless, the framework we propose has applications beyond these modalities.
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