AO Research Institute Davos, Davos, Switzerland.
J Orthop Res. 2024 Aug;42(8):1762-1770. doi: 10.1002/jor.25838. Epub 2024 Mar 14.
Measuring the healing status of a bone fracture is important to determine the clinical care a patient receives. Implantable devices can directly and continuously assess the healing status of fracture fixation constructs, while subject-specific virtual biomechanical tests can noninvasively determine callus structural integrity at single time points. Despite their potential for objectification, both methods are not yet integrated into clinical practice with further evidence of their benefits required. This study correlated continuous data from an implantable sensor assessing healing status through implant load monitoring with computer tomography (CT) based longitudinal finite element (FE) simulations in a large animal model. Eight sheep were part of a previous preclinical study utilizing a tibial osteotomy model and equipped with such a sensor. Sensor signal was collected over several months, and CT scans were acquired at six interim time points. For each scan, two FE analyses were performed: a virtual torsional rigidity test of the bone and a model of the bone-implant construct with the sensor. The longitudinal simulation results were compared to the sensor data at corresponding time points and a cohort-specific empirical healing rule was employed. Healing status predicted by both in silico simulations correlated significantly with the sensor data at corresponding time points and correctly identified a delayed and a nonunion in the cohort. The methodology is readily translatable with the potential to be applied to further preclinical or clinical cohorts to find generalizable healing criteria. Virtual mechanical tests can objectively measure fracture healing progressing using longitudinal CT scans.
测量骨折的愈合状态对于确定患者接受的临床治疗至关重要。可植入设备可以直接和连续地评估骨折固定结构的愈合状态,而基于个体的虚拟生物力学测试可以在单个时间点非侵入性地确定骨痂的结构完整性。尽管它们具有客观化的潜力,但这两种方法尚未整合到临床实践中,需要进一步证明其益处。本研究将通过植入物负荷监测评估愈合状态的可植入传感器的连续数据与大型动物模型中的基于计算机断层扫描 (CT) 的纵向有限元 (FE) 模拟进行了相关分析。八只绵羊参与了之前利用胫骨切开术模型的临床前研究,并配备了这样的传感器。传感器信号在几个月内进行了采集,并在六个中间时间点进行了 CT 扫描。对于每个扫描,进行了两次 FE 分析:骨骼的虚拟扭转刚度测试和带有传感器的骨骼-植入物结构模型。将纵向模拟结果与相应时间点的传感器数据进行比较,并采用队列特异性经验愈合规则。两种基于计算机的模拟预测的愈合状态与相应时间点的传感器数据显著相关,并正确识别了队列中的延迟愈合和不愈合。该方法具有很好的可转化性,有可能应用于进一步的临床前或临床队列中,以找到普遍适用的愈合标准。虚拟力学测试可以使用纵向 CT 扫描客观地测量骨折愈合进展。