ICORD, Blusson Spinal Cord Centre, University of British Columbia, Vancouver, BC, Canada.
Department of Orthopaedics, University of British Columbia, Vancouver, BC, Canada.
Spine (Phila Pa 1976). 2022 Aug 15;47(16):1179-1186. doi: 10.1097/BRS.0000000000004308. Epub 2021 Dec 15.
Randomized trial.
To implement an algorithm enabling the automated segmentation of spinal muscles from open magnetic resonance images in healthy volunteers and patients with adult spinal deformity (ASD).
Understanding spinal muscle anatomy is critical to diagnosing and treating spinal deformity.Muscle boundaries can be extrapolated from medical images using segmentation, which is usually done manually by clinical experts and remains complicated and time-consuming.
Three groups were examined: two healthy volunteer groups (N = 6 for each group) and one ASD group (N = 8 patients) were imaged at the lumbar and thoracic regions of the spine in an upright open magnetic resonance imaging scanner while maintaining different postures (various seated, standing, and supine). For each group and region, a selection of regions of interest (ROIs) was manually segmented. A multiscale pyramid two-dimensional convolutional neural network was implemented to automatically segment all defined ROIs. A five-fold crossvalidation method was applied and distinct models were trained for each resulting set and group and evaluated using Dice coefficients calculated between the model output and the manually segmented target.
Good to excellent results were found across all ROIs for the ASD (Dice coefficient >0.76) and healthy (dice coefficient > 0.86) groups.
This study represents a fundamental step toward the development of an automated spinal muscle properties extraction pipeline, which will ultimately allow clinicians to have easier access to patient-specific simulations, diagnosis, and treatment.
随机试验。
实现一种算法,能够自动分割健康志愿者和成人脊柱畸形(ASD)患者的开放磁共振图像中的脊柱肌肉。
了解脊柱肌肉解剖结构对于诊断和治疗脊柱畸形至关重要。可以使用分割技术从医学图像中推断出肌肉边界,通常由临床专家手动完成,但仍然复杂且耗时。
检查了三组:两组健康志愿者组(每组 6 人)和一组 ASD 患者组(8 名患者),在直立式开放式磁共振成像扫描仪中对脊柱的腰椎和胸椎区域进行成像,同时保持不同的姿势(各种坐姿、站立和仰卧位)。对于每组和每个区域,手动分割了一些感兴趣区域(ROI)。实现了一个多尺度金字塔二维卷积神经网络,以自动分割所有定义的 ROI。应用了五重交叉验证方法,并为每个结果集和组训练了不同的模型,并使用模型输出与手动分割目标之间计算的 Dice 系数进行评估。
对于 ASD(Dice 系数>0.76)和健康(Dice 系数>0.86)组,所有 ROI 都取得了良好到优秀的结果。
本研究代表了开发自动脊柱肌肉属性提取管道的重要一步,这最终将使临床医生更容易获得患者特定的模拟、诊断和治疗。