Department of Systems Design Engineering, University of Waterloo, 200 University Ave W, Waterloo, ON, N2L 3G1, Canada.
Department of Spine Surgery, Grand River Hospital (GRH), 835 King St W, Kitchener, ON, N2G 1G3, Canada.
J Orthop Surg Res. 2024 Mar 25;19(1):199. doi: 10.1186/s13018-024-04654-7.
An efficient physics-informed deep learning approach for extracting spinopelvic measures from X-ray images is introduced and its performance is evaluated against manual annotations.
Two datasets, comprising a total of 1470 images, were collected to evaluate the model's performance. We propose a novel method of detecting landmarks as objects, incorporating their relationships as constraints (LanDet). Using this approach, we trained our deep learning model to extract five spine and pelvis measures: Sacrum Slope (SS), Pelvic Tilt (PT), Pelvic Incidence (PI), Lumbar Lordosis (LL), and Sagittal Vertical Axis (SVA). The results were compared to manually labelled test dataset (GT) as well as measures annotated separately by three surgeons.
The LanDet model was evaluated on the two datasets separately and on an extended dataset combining both. The final accuracy for each measure is reported in terms of Mean Absolute Error (MAE), Standard Deviation (SD), and R Pearson correlation coefficient as follows: , . To assess model reliability and compare it against surgeons, the intraclass correlation coefficient (ICC) metric is used. The model demonstrated better consistency with surgeons with all values over 0.88 compared to what was previously reported in the literature.
The LanDet model exhibits competitive performance compared to existing literature. The effectiveness of the physics-informed constraint method, utilized in our landmark detection as object algorithm, is highlighted. Furthermore, we addressed the limitations of heatmap-based methods for anatomical landmark detection and tackled issues related to mis-identifying of similar or adjacent landmarks instead of intended landmark using this novel approach.
引入一种从 X 光图像中提取脊柱骨盆测量值的高效物理信息深度学习方法,并将其性能与手动标注进行评估。
收集了包含 1470 张图像的两个数据集来评估模型的性能。我们提出了一种新的方法,将地标检测为对象,并将它们之间的关系作为约束(LanDet)。使用这种方法,我们训练我们的深度学习模型来提取五个脊柱和骨盆测量值:骶骨斜率(SS)、骨盆倾斜度(PT)、骨盆入射角(PI)、腰椎前凸(LL)和矢状垂直轴(SVA)。结果与手动标注的测试数据集(GT)以及由三名外科医生分别标注的测量值进行了比较。
LanDet 模型分别在两个数据集上进行了评估,并在一个结合了两个数据集的扩展数据集上进行了评估。报告了每个测量值的最终准确度,以平均绝对误差(MAE)、标准差(SD)和 R Pearson 相关系数表示,分别为: , . 为了评估模型的可靠性并将其与外科医生进行比较,使用了组内相关系数(ICC)度量。与文献中之前报道的相比,该模型与外科医生的一致性更好,所有值均超过 0.88。
与现有文献相比,LanDet 模型表现出具有竞争力的性能。强调了我们在地标检测中使用的物理信息约束方法的有效性。此外,我们解决了基于热图的方法在解剖地标检测中的局限性,并通过这种新方法解决了识别相似或相邻地标而不是预期地标时出现的问题。