Zhou Mi, Mao Jiesheng, Li Xiaoqing, Li Yanjun, Yang Xiaokai
Third Affiliated Hospital of Shanghai University (Wenzhou People's Hospital), School of Medicine, Shanghai University, Wenzhou, China.
Front Neurol. 2024 Sep 16;15:1396513. doi: 10.3389/fneur.2024.1396513. eCollection 2024.
The primary aim of this investigation was to devise an intelligent approach for interpreting and measuring the spatial orientation of semicircular canals based on cranial MRI. The ultimate objective is to employ this intelligent method to construct a precise mathematical model that accurately represents the spatial orientation of the semicircular canals.
Using a dataset of 115 cranial MRI scans, this study employed the nnDetection deep learning algorithm to perform automated segmentation of the semicircular canals and the eyeballs (left and right). The center points of each semicircular canal were organized into an ordered structure using point characteristic analysis. Subsequently, a point-by-point plane fit was performed along these centerlines, and the normal vector of the semicircular canals was computed using the singular value decomposition method and calibrated to a standard spatial coordinate system whose transverse planes were the top of the common crus and the bottom of the eyeballs.
The nnDetection target recognition segmentation algorithm achieved Dice values of 0.9585 and 0.9663. The direction angles of the unit normal vectors for the left anterior, lateral, and posterior semicircular canal planes were [80.19°, 124.32°, 36.08°], [169.88°, 100.04°, 91.32°], and [79.33°, 130.63°, 137.4°], respectively. For the right side, the angles were [79.03°, 125.41°, 142.42°], [171.45°, 98.53°, 89.43°], and [80.12°, 132.42°, 44.11°], respectively.
This study successfully achieved real-time automated understanding and measurement of the spatial orientation of semicircular canals, providing a solid foundation for personalized diagnosis and treatment optimization of vestibular diseases. It also establishes essential tools and a theoretical basis for future research into vestibular function and related diseases.
本研究的主要目的是设计一种基于头颅磁共振成像(MRI)解释和测量半规管空间取向的智能方法。最终目标是利用这种智能方法构建一个精确的数学模型,准确表示半规管的空间取向。
本研究使用115例头颅MRI扫描数据集,采用nnDetection深度学习算法对半规管和眼球(左右)进行自动分割。利用点特征分析将每个半规管的中心点组织成有序结构。随后,沿这些中心线进行逐点平面拟合,并使用奇异值分解方法计算半规管的法向量,并将其校准到一个标准空间坐标系,其横向平面分别为总脚顶部和眼球底部。
nnDetection目标识别分割算法的Dice值分别为0.9585和0.9663。左侧前、外、后半规管平面单位法向量的方向角分别为[80.19°,124.32°,36.08°]、[169.88°,100.04°,91.32°]和[79.33°,130.63°,137.4°]。右侧的角度分别为[79.03°,125.41°,142.42°]、[171.45°,98.53°,89.43°]和[80.12°,132.42°,44.11°]。
本研究成功实现了半规管空间取向的实时自动理解和测量,为前庭疾病的个性化诊断和治疗优化提供了坚实基础。它还为未来前庭功能及相关疾病的研究建立了重要工具和理论基础。