Scientific Data (May 2024)

Head model dataset for mixed reality navigation in neurosurgical interventions for intracranial lesions

  • Ziyu Qi,
  • Haitao Jin,
  • Xinghua Xu,
  • Qun Wang,
  • Zhichao Gan,
  • Ruochu Xiong,
  • Shiyu Zhang,
  • Minghang Liu,
  • Jingyue Wang,
  • Xinyu Ding,
  • Xiaolei Chen,
  • Jiashu Zhang,
  • Christopher Nimsky,
  • Miriam H. A. Bopp

DOI
https://doi.org/10.1038/s41597-024-03385-y
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 11

Abstract

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Abstract Mixed reality navigation (MRN) technology is emerging as an increasingly significant and interesting topic in neurosurgery. MRN enables neurosurgeons to “see through” the head with an interactive, hybrid visualization environment that merges virtual- and physical-world elements. Offering immersive, intuitive, and reliable guidance for preoperative and intraoperative intervention of intracranial lesions, MRN showcases its potential as an economically efficient and user-friendly alternative to standard neuronavigation systems. However, the clinical research and development of MRN systems present challenges: recruiting a sufficient number of patients within a limited timeframe is difficult, and acquiring low-cost, commercially available, medically significant head phantoms is equally challenging. To accelerate the development of novel MRN systems and surmount these obstacles, the study presents a dataset designed for MRN system development and testing in neurosurgery. It includes CT and MRI data from 19 patients with intracranial lesions and derived 3D models of anatomical structures and validation references. The models are available in Wavefront object (OBJ) and Stereolithography (STL) formats, supporting the creation and assessment of neurosurgical MRN applications.