Bassani Tito, Cina Andrea, Ignasiak Dominika, Barba Noemi, Galbusera Fabio
LABS-Laboratory of Biological Structures Mechanics, IRCCS Istituto Ortopedico Galeazzi, Milan, Italy.
Institute for Biomechanics, ETH Zurich, Zurich, Switzerland.
Front Bioeng Biotechnol. 2021 Sep 10;9:703144. doi: 10.3389/fbioe.2021.703144. eCollection 2021.
A major clinical challenge in adolescent idiopathic scoliosis (AIS) is the difficulty of predicting curve progression at initial presentation. The early detection of progressive curves can offer the opportunity to better target effective non-operative treatments, reducing the need for surgery and the risks of related complications. Predictive models for the detection of scoliosis progression in subjects before growth spurt have been developed. These models accounted for geometrical parameters of the global spine and local descriptors of the scoliotic curve, but neglected contributions from biomechanical measurements such as trunk muscle activation and intervertebral loading, which could provide advantageous information. The present study exploits a musculoskeletal model of the thoracolumbar spine, developed in AnyBody software and adapted and validated for the subject-specific characterization of mild scoliosis. A dataset of 100 AIS subjects with mild scoliosis and in pre-pubertal age at first examination, and recognized as stable (60) or progressive (40) after at least 6-months follow-up period was exploited. Anthropometrical data and geometrical parameters of the spine at first examination, as well as biomechanical parameters from musculoskeletal simulation replicating relaxed upright posture were accounted for as predictors of the scoliosis progression. Predicted height and weight were used for model scaling because not available in the original dataset. Robust procedure for obtaining such parameters from radiographic images was developed by exploiting a comparable dataset with real values. Six predictive modelling approaches based on different algorithms for the binary classification of stable and progressive cases were compared. The best fitting approaches were exploited to evaluate the effect of accounting for the biomechanical parameters on the prediction of scoliosis progression. The performance of two sets of predictors was compared: accounting for anthropometrical and geometrical parameters only; considering in addition the biomechanical ones. Median accuracy of the best fitting algorithms ranged from 0.76 to 0.78. No differences were found in the classification performance by including or neglecting the biomechanical parameters. Median sensitivity was 0.75, and that of specificity ranged from 0.75 to 0.83. In conclusion, accounting for biomechanical measures did not enhance the prediction of curve progression, thus not supporting a potential clinical application at this stage.
青少年特发性脊柱侧凸(AIS)的一个主要临床挑战是在初次就诊时难以预测侧弯进展。早期发现进展性侧弯可为更好地针对性实施有效的非手术治疗提供机会,减少手术需求及相关并发症风险。已开发出用于检测生长突增前受试者脊柱侧凸进展的预测模型。这些模型考虑了全脊柱的几何参数和脊柱侧凸曲线的局部描述符,但忽略了诸如躯干肌肉激活和椎间负荷等生物力学测量的贡献,而这些测量可能提供有益信息。本研究利用在AnyBody软件中开发的胸腰椎肌肉骨骼模型,并针对轻度脊柱侧凸的个体特异性特征进行了调整和验证。利用了一个包含100名初诊时患有轻度脊柱侧凸且处于青春期前年龄的AIS受试者的数据集,这些受试者在至少6个月的随访期后被认定为稳定型(60例)或进展型(40例)。初次检查时的人体测量数据和脊柱几何参数,以及复制放松直立姿势的肌肉骨骼模拟的生物力学参数被用作脊柱侧凸进展的预测指标。由于原始数据集中没有预测身高和体重,因此用于模型缩放。通过利用具有实际值的可比数据集,开发了从X线图像中获取此类参数的稳健程序。比较了基于不同算法对稳定型和进展型病例进行二元分类的六种预测建模方法。采用最佳拟合方法来评估纳入生物力学参数对脊柱侧凸进展预测的影响。比较了两组预测指标的性能:仅考虑人体测量和几何参数;另外还考虑生物力学参数。最佳拟合算法的中位准确率在0.76至0.78之间。纳入或忽略生物力学参数在分类性能上未发现差异。中位敏感性为0.75,特异性在0.75至0.83之间。总之,纳入生物力学测量并未增强对侧弯进展的预测,因此现阶段不支持其潜在的临床应用。