Philips Research Hamburg, Roentgenstrasse 24-26, D-22335 Hamburg, Germany.
Institut fuer Radiologie und Neuroradiologie, Unfallkrankenhaus Berlin, Warener Strasse 7, D-12683 Berlin, Germany.
Phys Med Biol. 2023 May 29;68(11). doi: 10.1088/1361-6560/acd48b.
In the context of primary in-hospital trauma management timely reading of computed tomography (CT) images is critical. However, assessment of the spine is time consuming, fractures can be very subtle, and the potential for under-diagnosis or delayed diagnosis is relevant. Artificial intelligence is increasingly employed to assist radiologists with the detection of spinal fractures and prioritization of cases. Currently, algorithms focusing on the cervical spine are commercially available. A common approach is the vertebra-wise classification. Instead of a classification task, we formulate fracture detection as a segmentation task aiming to find and display all individual fracture locations presented in the image.Based on 195 CT examinations, 454 cervical spine fractures were identified and annotated by radiologists at a tertiary trauma center. We trained for the detection a U-Net via four-fold-cross validation to segment spine fractures and the spine via a multi-task loss. We further compared advantages of two image reformation approaches-straightened curved planar reformatted (CPR) around the spine and spinal canal aligned volumes of interest (VOI)-to achieve a unified vertebral alignment in comparison to processing the Cartesian data directly.Of the three data versions (Cartesian, reformatted, VOI) the VOI approach showed the best detection rate and a reduced computation time. The proposed algorithm was able to detect 87.2% of cervical spine fractures at an average number of false positives of 3.5 per case. Evaluation of the method on a public spine dataset resulted in 0.9 false positive detections per cervical spine case.The display of individual fracture locations as provided with high sensitivity by the proposed voxel classification based fracture detection has the potential to support the trauma CT reading workflow by reducing missed findings.
在初级院内创伤管理中,及时阅读计算机断层扫描(CT)图像至关重要。然而,评估脊柱需要花费时间,骨折可能非常细微,存在漏诊或诊断延迟的风险。人工智能越来越多地被用于协助放射科医生检测脊柱骨折并确定病例的优先级。目前,专注于颈椎的算法已经商业化。一种常见的方法是椎体分类。我们没有将骨折检测作为分类任务来进行,而是将其表述为分割任务,旨在找到并显示图像中呈现的所有单独骨折位置。
在一家三级创伤中心,通过放射科医生对 195 次 CT 检查中的 454 例颈椎骨折进行了识别和标注。我们通过四折交叉验证对 U-Net 进行了训练,以分割脊柱骨折和脊柱,采用多任务损失进行分割。我们进一步比较了两种图像重建方法(围绕脊柱拉直的曲面平面重建(CPR)和脊柱管对齐的感兴趣体积(VOI))的优势,与直接处理笛卡尔数据相比,这两种方法可以实现统一的椎体对齐。
在三个数据版本(笛卡尔、重建、VOI)中,VOI 方法的检测率最高,计算时间最短。所提出的算法能够以平均每个病例 3.5 个假阳性的比例检测到 87.2%的颈椎骨折。在公共脊柱数据集上对该方法进行评估的结果是,每个颈椎病例的假阳性检测数为 0.9。
所提出的基于体素分类的骨折检测以高灵敏度提供了单个骨折位置的显示,有可能通过减少漏诊来支持创伤 CT 阅读工作流程。