Yang Yukang, Wang Yu, Liu Tianyu, Wang Miao, Sun Ming, Song Shiji, Fan Wenhui, Huang Gao
Department of Automation, BNRist, Tsinghua University, Beijing, 100084, China.
Department of Orthopaedics, Peking University First Hospital, Beijing, 100034, China.
Artif Intell Med. 2025 Jan;159:103011. doi: 10.1016/j.artmed.2024.103011. Epub 2024 Nov 12.
As one of fundamental ways to interpret spine images, detection of vertebral landmarks is an informative prerequisite for further diagnosis and management of spine disorders such as scoliosis and fractures. Most existing machine learning-based methods for automatic vertebral landmark detection suffer from overlapping landmarks or abnormally long distances between nearby landmarks against anatomical priors, and thus lack sufficient reliability and interpretability. To tackle the problem, this paper systematically utilizes anatomical prior knowledge in vertebral landmark detection. We explicitly formulate anatomical priors of the spine, related to distances among vertebrae and spatial order within the spine, and integrate these geometrical constraints within training loss, inference procedure, and evaluation metrics. First, we introduce an anatomy-constraint loss to regularize the training process with the aforementioned contextual priors explicitly. Second, we propose a simple-yet-effective anatomy-aided inference procedure by employing sequential prediction rather than a parallel counterpart. Third, we provide novel anatomy-related metrics to quantitatively evaluate to which extent landmark predictions follow the anatomical priors, as is not reflected within the widely-used landmark localization error metric. We employ the localization framework on 1410 anterior-posterior radiographic images. Compared with competitive baseline models, we achieve superior landmark localization accuracy and comparable Cobb angle estimation for scoliosis assessment. Ablation studies demonstrate the effectiveness of designed components on the decrease of localization error and improvement of anatomical plausibility. Additionally, we exhibit effective generalization performance by transferring our detection method onto sagittal 2-D slices of CT scans and boost the performance of downstream compression fracture classification at vertebra-level.
作为解读脊柱图像的基本方法之一,椎体标志点的检测是脊柱疾病(如脊柱侧弯和骨折)进一步诊断和治疗的重要前提。大多数现有的基于机器学习的自动椎体标志点检测方法存在标志点重叠或相邻标志点之间距离异常长等不符合解剖学先验知识的问题,因此缺乏足够的可靠性和可解释性。为了解决这个问题,本文在椎体标志点检测中系统地利用了解剖学先验知识。我们明确地制定了与椎体间距离和脊柱内空间顺序相关的脊柱解剖学先验知识,并将这些几何约束整合到训练损失、推理过程和评估指标中。首先,我们引入一种解剖学约束损失,用上述上下文先验知识明确地规范训练过程。其次,我们提出了一种简单而有效的解剖学辅助推理过程,采用顺序预测而不是并行预测。第三,我们提供了新的与解剖学相关的指标,以定量评估标志点预测在多大程度上符合解剖学先验知识,这在广泛使用的标志点定位误差指标中没有体现。我们在1410张前后位X线片上应用了该定位框架。与有竞争力的基线模型相比,我们在标志点定位准确性方面表现出色,并且在脊柱侧弯评估的Cobb角估计方面相当。消融研究证明了所设计组件在降低定位误差和提高解剖学合理性方面的有效性。此外,我们通过将检测方法应用于CT扫描的矢状二维切片展示了有效的泛化性能,并提高了椎体水平下游压缩性骨折分类的性能。