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发展出一种经过验证的基于计算机的术前预测模型,在 336 例成人脊柱畸形患者中,其预测假关节形成的准确率达到 91%。

Development of a validated computer-based preoperative predictive model for pseudarthrosis with 91% accuracy in 336 adult spinal deformity patients.

机构信息

1Department of Neurological Surgery, University of California, San Francisco, California.

2Department of Neurosurgery, University of Virginia Health System, Charlottesville, Virginia.

出版信息

Neurosurg Focus. 2018 Nov 1;45(5):E11. doi: 10.3171/2018.8.FOCUS18246.

Abstract

OBJECTIVEPseudarthrosis can occur following adult spinal deformity (ASD) surgery and can lead to instrumentation failure, recurrent pain, and ultimately revision surgery. In addition, it is one of the most expensive complications of ASD surgery. Risk factors contributing to pseudarthrosis in ASD have been described; however, a preoperative model predicting the development of pseudarthrosis does not exist. The goal of this study was to create a preoperative predictive model for pseudarthrosis based on demographic, radiographic, and surgical factors.METHODSA retrospective review of a prospectively maintained, multicenter ASD database was conducted. Study inclusion criteria consisted of adult patients (age ≥ 18 years) with spinal deformity and surgery for the ASD. From among 82 variables assessed, 21 were used for model building after applying collinearity testing, redundancy, and univariable predictor importance ≥ 0.90. Variables included demographic data along with comorbidities, modifiable surgical variables, baseline coronal and sagittal radiographic parameters, and baseline scores for health-related quality of life measures. Patients groups were determined according to their Lenke radiographic fusion type at the 2-year follow-up: bilateral or unilateral fusion (union) or pseudarthrosis (nonunion). A decision tree was constructed, and internal validation was accomplished via bootstrapped training and testing data sets. Accuracy and the area under the receiver operating characteristic curve (AUC) were calculated to evaluate the model.RESULTSA total of 336 patients were included in the study (nonunion: 105, union: 231). The model was 91.3% accurate with an AUC of 0.94. From 82 initial variables, the top 21 covered a wide range of areas including preoperative alignment, comorbidities, patient demographics, and surgical use of graft material.CONCLUSIONSA model for predicting the development of pseudarthrosis at the 2-year follow-up was successfully created. This model is the first of its kind for complex predictive analytics in the development of pseudarthrosis for patients with ASD undergoing surgical correction and can aid in clinical decision-making for potential preventative strategies.

摘要

目的

假关节形成可发生于成人脊柱畸形(ASD)手术后,可导致器械失效、疼痛复发,并最终导致翻修手术。此外,它是 ASD 手术最昂贵的并发症之一。已经描述了导致 ASD 中假关节形成的危险因素;然而,目前尚不存在预测假关节形成的术前模型。本研究的目的是基于人口统计学、影像学和手术因素创建一个用于预测 ASD 中假关节形成的术前预测模型。

方法

对前瞻性维护的多中心 ASD 数据库进行回顾性研究。研究纳入标准为患有脊柱畸形并接受 ASD 手术的成年患者(年龄≥18 岁)。在经过共线性检验、冗余性检验和单变量预测因子重要性≥0.90 筛选后,从评估的 82 个变量中选择 21 个变量用于模型构建。这些变量包括人口统计学数据以及合并症、可改变的手术变量、基线冠状面和矢状面影像学参数以及基线健康相关生活质量测量评分。根据患者在 2 年随访时的 Lenke 影像学融合类型将患者分为两组:双侧或单侧融合(融合)或假关节(未融合)。构建决策树,并通过 bootstrapped 训练和测试数据集进行内部验证。计算准确性和受试者工作特征曲线下面积(AUC)以评估模型。

结果

共纳入 336 例患者(假关节组:105 例,融合组:231 例)。该模型的准确率为 91.3%,AUC 为 0.94。从 82 个初始变量中,前 21 个变量涵盖了广泛的领域,包括术前对线、合并症、患者人口统计学和移植物材料的使用。

结论

成功创建了预测 ASD 患者术后 2 年时发生假关节的模型。这是 ASD 患者手术矫正后发生假关节的首个此类复杂预测分析模型,可以帮助临床决策制定潜在的预防策略。

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