Acaroglu Emre, Guler Umit O, Olgun Z Deniz, Yavuz Yalcin, Pellise Ferran, Domingo-Sabat Montse, Yakici Sule, Alanay Ahmet, Perez-Grueso Francesco Sanchez, Yavuz Yasemin
Ankara Spine Center, Iran Caddesi 45/2 Kavaklidere, Ankara 06700, Turkey.
Ankara Spine Center, Iran Caddesi 45/2 Kavaklidere, Ankara 06700, Turkey.
Spine Deform. 2015 Jul;3(4):360-366. doi: 10.1016/j.jspd.2014.11.004. Epub 2015 Jun 11.
Previous studies demonstrated the adult spinal deformity (ASD) population is heterogeneous. Multiple parameters may affect health-related quality of life (HRQL).
To understand the ranking of parameters affecting HRQL in ASD using multiple regression analysis.
A total of 483 patients enrolled in a prospective multicenter ASD database from the population. Multiple regression analysis was performed for Scoliosis Research Society-22 (SRS-22) and Oswestry Disability Index (ODI) separately. Initially proposed primary variables of diagnosis (highest correlation), age, lordosis gap (L gap), and coronal curve location were regressed for each response variable (SRS-22 and ODI) univariately. Age and L gap could not be used together because of high colinearity. Coronal curve location was removed owing to an insignificant correlation. Two initial models were considered per response, consisting of diagnosis and age in one and diagnosis and L gap in the other. The rest of the potentially predictive variables were introduced in these models one at a time. Final models were evaluated using stepwise automatic model selection.
For ODI, body mass index (BMI), gender, and sagittal and spinopelvic parameters were in the basic model but only BMI and gender in the model with L gap and only gender in the model with age were highly predictive. For SRS-22, a large number of parameters were in the basic model but BMI, gender, coronal balance, lordosis curve, and sagittal vertical axis in the model with L gap and only gender in the model with age were highly predictive. Coronal curve location was not significantly predictive in any model.
These findings reiterate the importance of patient diagnosis, age, and/or the amount of lordosis as the most important factors affecting HRQL in ASD. Gender, BMI, and sagittal vertical axis appear to be consistently important co-variables whereas coronal balance and magnitude of L curves may also be important in SRS-22. These may aid in better understanding the problem in ASD and may be useful in future classifications.
先前的研究表明,成人脊柱畸形(ASD)人群具有异质性。多个参数可能会影响健康相关生活质量(HRQL)。
通过多元回归分析了解影响ASD患者HRQL的参数排名。
共有483名患者纳入了一个前瞻性多中心ASD数据库。分别对脊柱侧弯研究学会-22(SRS-22)和奥斯威斯利功能障碍指数(ODI)进行多元回归分析。最初提出的诊断主要变量(相关性最高)、年龄、前凸间隙(L间隙)和冠状面曲线位置,针对每个反应变量(SRS-22和ODI)进行单变量回归。由于共线性高,年龄和L间隙不能一起使用。冠状面曲线位置因相关性不显著而被剔除。每个反应变量考虑两个初始模型,一个由诊断和年龄组成,另一个由诊断和L间隙组成。其余潜在的预测变量一次一个地引入这些模型中。最终模型使用逐步自动模型选择进行评估。
对于ODI,体重指数(BMI)、性别以及矢状面和脊柱骨盆参数在基础模型中,但在包含L间隙的模型中只有BMI和性别,在包含年龄的模型中只有性别具有高度预测性。对于SRS-22,基础模型中有大量参数,但在包含L间隙的模型中BMI、性别、冠状面平衡、前凸曲线和矢状垂直轴,在包含年龄的模型中只有性别具有高度预测性。冠状面曲线位置在任何模型中均无显著预测性。
这些发现重申了患者诊断、年龄和/或前凸程度作为影响ASD患者HRQL的最重要因素的重要性。性别、BMI和矢状垂直轴似乎始终是重要的协变量,而冠状面平衡和L曲线大小在SRS-22中可能也很重要。这些可能有助于更好地理解ASD问题,并可能在未来的分类中有用。