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矢状面年龄校正评分在预测成人脊柱畸形手术后近端交界性后凸/失败及临床结果中的验证

Validation of Sagittal Age-adjusted Score in Predicting Proximal Junctional Kyphosis/Failure and Clinical Outcomes Following Adult Spinal Deformity Surgery.

作者信息

Park Se-Jun, Park Jin-Sung, Kang Dong-Ho, Jung Kyunghun, Kang Minwook, Jung Choong-Won, Kim Hyun-Jun, Lee Chong-Suh

机构信息

Department of Orthopedic Surgery, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, South Korea.

Department of Orthopedic Surgery, Hanyang University Guri Hospital, Hanyang University, Guri, South Korea.

出版信息

Spine (Phila Pa 1976). 2025 Jul 15;50(14):948-955. doi: 10.1097/BRS.0000000000005144. Epub 2024 Sep 5.

Abstract

STUDY DESIGN

A retrospective study.

OBJECTIVES

To validate the sagittal age-adjusted score (SAAS) in predicting proximal junctional kyphosis/failure (PJK/F) and good clinical outcomes following adult spinal deformity (ASD) surgery.

SUMMARY OF BACKGROUND DATA

SAAS is a relatively new assessment system that incorporates age-adjusted sagittal parameters of pelvic incidence (PI)-lumbar lordosis (LL), pelvic tilt (PT), and T1 pelvic angle (TPA) to predict the PJK/F. External validation is required to verify its clinical usefulness.

MATERIALS AND METHODS

We included patients with ASD undergoing ≥5-level fusion including the sacrum or pelvis. SAAS was calculated based on the scores of the three components: PI-LL, PT, and TPA. PJK/F rates and clinical outcomes were compared among the correction categories (undercorrection, matched correction, and overcorrection) for the SAAS as well as for each of the three components. PJK/F rates were compared according to the correction groups of the sagittal components and total SAAS using the χ 2 test. Receiver operating characteristic (ROC) analysis was performed to evaluate the predictive ability of overcorrection to develop PJK/F for the three sagittal parameters and SAAS. PROMs at final follow-up were compared among correction groups using ANOVA with Bonferroni post hoc corrections.

RESULTS

A total of 411 patients were included in the study (mean age: 69.3 y, mean body mass index: 25.9 kg/m 2 , total levels fused: 7.7 levels, and follow-up duration: 43.3 mo). Postoperative SAAS categories were as follow: undercorrection (13.4%), matched correction (30.2%), and overcorrection (56.4%). The PJK/F rates were significantly higher in the overcorrection group relative to PI-LL component ( P =0.001) as well as SAAS ( P =0.038) compared with undercorrection or matched correction groups. The clinical outcomes were best in patients who achieved matched correction relative to PI-LL component as well as SAAS compared with the other correction groups. However, the differentiating power of clinical outcomes across the correction categories was greater in the PI-LL component than in the SAAS.

CONCLUSION

This study validated the efficacy of SAAS system to differentiate PJK/F development and good clinical outcomes. However, its differentiating power seems to be largely attributable to the function of the PI-LL component, as the PI-LL correction status better predicted PJK/F risk and clinical outcomes than SAAS.

摘要

研究设计

一项回顾性研究。

目的

验证矢状面年龄校正评分(SAAS)在预测成人脊柱畸形(ASD)手术后近端交界性后凸/失败(PJK/F)及良好临床结局方面的作用。

背景数据总结

SAAS是一种相对较新的评估系统,它纳入了经年龄校正的矢状面参数,包括骨盆入射角(PI)-腰椎前凸(LL)、骨盆倾斜角(PT)和T1骨盆角(TPA),以预测PJK/F。需要外部验证来证实其临床实用性。

材料与方法

我们纳入了接受包括骶骨或骨盆在内的≥5节段融合术的ASD患者。SAAS基于PI-LL、PT和TPA这三个组成部分的评分来计算。比较SAAS以及三个组成部分各自在矫正类别(矫正不足、匹配矫正和过度矫正)中的PJK/F发生率和临床结局。使用χ²检验根据矢状面组成部分和总SAAS的矫正组比较PJK/F发生率。进行受试者操作特征(ROC)分析,以评估三个矢状面参数和SAAS过度矫正发展为PJK/F的预测能力。使用ANOVA及Bonferroni事后校正比较矫正组最终随访时的患者报告结局测量指标(PROMs)。

结果

本研究共纳入411例患者(平均年龄:69.3岁,平均体重指数:25.9kg/m²,融合节段总数:7.7个节段,随访时间:43.3个月)。术后SAAS类别如下:矫正不足(13.4%)、匹配矫正(30.2%)和过度矫正(56.4%)。与矫正不足或匹配矫正组相比,过度矫正组相对于PI-LL组成部分(P = 0.001)以及SAAS(P = 0.038)的PJK/F发生率显著更高。与其他矫正组相比,相对于PI-LL组成部分以及SAAS实现匹配矫正的患者临床结局最佳。然而,PI-LL组成部分在不同矫正类别间临床结局的区分能力大于SAAS。

结论

本研究验证了SAAS系统在区分PJK/F发展及良好临床结局方面的有效性。然而,其区分能力似乎很大程度上归因于PI-LL组成部分的作用,因为PI-LL的矫正状态比SAAS能更好地预测PJK/F风险和临床结局。

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