Baxter John S H, Jannin Pierre
Université de Rennes 1, Laboratoire Traitement du Signal et de l'Image (INSERM UMR 1099), Rennes, France.
J Med Imaging (Bellingham). 2022 Jul;9(4):045001. doi: 10.1117/1.JMI.9.4.045001. Epub 2022 Jul 11.
Deep brain stimulation (DBS) is an interventional treatment for some neurological and neurodegenerative diseases. For example, in Parkinson's disease, DBS electrodes are positioned at particular locations within the basal ganglia to alleviate the patient's motor symptoms. These interventions depend greatly on a preoperative planning stage in which potential targets and electrode trajectories are identified in a preoperative MRI. Due to the small size and low contrast of targets such as the subthalamic nucleus (STN), their segmentation is a difficult task. Machine learning provides a potential avenue for development, but it has difficulty in segmenting such small structures in volumetric images due to additional problems such as segmentation class imbalance. We present a two-stage separable learning workflow for STN segmentation consisting of a localization step that detects the STN and crops the image to a small region and a segmentation step that delineates the structure within that region. The goal of this decoupling is to improve accuracy and efficiency and to provide an intermediate representation that can be easily corrected by a clinical user. This correction capability was then studied through a human-computer interaction experiment with seven novice participants and one expert neurosurgeon. Our two-step segmentation significantly outperforms the comparative registration-based method currently used in clinic and approaches the fundamental limit on variability due to the image resolution. In addition, the human-computer interaction experiment shows that the additional interaction mechanism allowed by separating STN segmentation into two steps significantly improves the users' ability to correct errors and further improves performance. Our method shows that separable learning not only is feasible for fully automatic STN segmentation but also leads to improved interactivity that can ease its translation into clinical use.
深部脑刺激(DBS)是一种针对某些神经和神经退行性疾病的介入性治疗方法。例如,在帕金森病中,DBS电极被放置在基底神经节内的特定位置,以缓解患者的运动症状。这些干预措施在很大程度上依赖于术前规划阶段,在此阶段,通过术前磁共振成像(MRI)确定潜在靶点和电极轨迹。由于诸如丘脑底核(STN)等靶点尺寸小且对比度低,对其进行分割是一项艰巨任务。机器学习为发展提供了一条潜在途径,但由于诸如分割类别不平衡等其他问题,它在对体积图像中的此类小结构进行分割时存在困难。我们提出了一种用于STN分割的两阶段可分离学习工作流程,包括一个定位步骤,该步骤检测STN并将图像裁剪到一个小区域,以及一个分割步骤,该步骤描绘该区域内的结构。这种解耦的目的是提高准确性和效率,并提供一种可由临床用户轻松校正的中间表示。然后,通过与七名新手参与者和一名专家神经外科医生进行的人机交互实验,研究了这种校正能力。我们的两步分割方法明显优于目前临床使用的基于配准的对比方法,并接近由于图像分辨率导致的变异性的基本极限。此外,人机交互实验表明,将STN分割分为两步所允许的额外交互机制显著提高了用户校正错误的能力,并进一步提高了性能。我们的方法表明,可分离学习不仅对于全自动STN分割是可行的,而且还能提高交互性,从而便于其转化为临床应用。