Zhang Qi, Chuang Cheng, Zhang Shunan, Zhao Ziqi, Wang Kun, Xu Jun, Sun Jianqi
IEEE J Biomed Health Inform. 2025 May 22;PP. doi: 10.1109/JBHI.2025.3572458.
Osteoporotic vertebral compression fractures (OVCFs) are prevalent in the elderly population, typically assessed on computed tomography (CT) scans by evaluating vertebral height loss. This assessment helps determine the fracture's impact on spinal stability and the need for surgical intervention. However, the absence of pre-fracture CT scans and standardized vertebral references leads to measurement errors and inter-observer variability, while irregular compression patterns further challenge the precise grading of fracture severity. While deep learning methods have shown promise in aiding OVCFs screening, they often lack interpretability and sufficient sensitivity, limiting their clinical applicability. To address these challenges, we introduce a novel vertebra synthesis-height loss quantification-OVCFs grading framework. Our proposed model, HealthiVert-GAN, utilizes a coarse-to-fine synthesis network designed to generate pseudo-healthy vertebral images that simulate the pre-fracture state of fractured vertebrae. This model integrates three auxiliary modules that leverage the morphology and height information of adjacent healthy vertebrae to ensure anatomical consistency. Additionally, we introduce the Relative Height Loss of Vertebrae (RHLV) as a quantification metric, which divides each vertebra into three sections to measure height loss between pre-fracture and post-fracture states, followed by fracture severity classification using a Support Vector Machine (SVM). Our approach achieves state-of-the-art classification performance on both the Verse2019 dataset and in-house dataset, and it provides cross-sectional distribution maps of vertebral height loss. This practical tool enhances diagnostic accuracy in clinical settings and assisting in surgical decision-making.
骨质疏松性椎体压缩骨折(OVCFs)在老年人群中很常见,通常通过计算机断层扫描(CT)评估椎体高度丢失来进行诊断。这种评估有助于确定骨折对脊柱稳定性的影响以及是否需要手术干预。然而,由于缺乏骨折前的CT扫描和标准化的椎体参考,导致测量误差和观察者间的差异,同时不规则的压缩模式进一步挑战了骨折严重程度的精确分级。虽然深度学习方法在辅助OVCFs筛查方面显示出了前景,但它们往往缺乏可解释性和足够的敏感性,限制了其临床应用。为了应对这些挑战,我们引入了一种新颖的椎体合成-高度丢失量化-OVCFs分级框架。我们提出的模型HealthiVert-GAN利用了一个从粗到细的合成网络,旨在生成模拟骨折椎体骨折前状态的伪健康椎体图像。该模型集成了三个辅助模块,利用相邻健康椎体的形态和高度信息来确保解剖学一致性。此外,我们引入了椎体相对高度丢失(RHLV)作为量化指标,将每个椎体分为三个部分来测量骨折前和骨折后状态之间的高度丢失,然后使用支持向量机(SVM)进行骨折严重程度分类。我们的方法在Verse2019数据集和内部数据集上均取得了领先的分类性能,并提供了椎体高度丢失的横断面分布图。这个实用工具提高了临床环境中的诊断准确性,并有助于手术决策。