Division of Neurosurgery, Department of Surgery, University of Toronto, Toronto Western Hospital, 399 Bathurst St, Toronto, Ontario, Canada M5T 2S8.
Division of Neurosurgery, Department of Surgery, University of Toronto, The Hospital for Sick Children, 555 University Ave, Toronto, Ontario, Canada M5G 1X8.
Spine J. 2018 Dec;18(12):2220-2231. doi: 10.1016/j.spinee.2018.05.009. Epub 2018 May 7.
Predictors of outcome after surgery for degenerative cervical myelopathy (DCM) have been determined previously through hypothesis-driven multivariate statistical models that rely on a priori knowledge of potential confounders, exclude potentially important variables because of restrictions in model building, cannot include highly collinear variables in the same model, and ignore intrinsic correlations among variables.
The present study aimed to apply a data-driven approach to identify patient phenotypes that may predict outcomes after surgery for mild DCM.
This is a principal component analysis of data from two related prospective, multicenter cohort studies.
The study included patients with mild DCM, defined by a modified Japanese Orthopaedic Association score of 15-17, undergoing surgical decompression as part of the AOSpine CSM-NA or CSM-I trials.
Patient outcomes were evaluated preoperatively at baseline and at 6 months, 1 year, and 2 years after surgery. Quality of life (QOL) was evaluated by the Neck Disability Index (NDI) and Short Form-36 version 2 (SF-36v2). These are both patient self-reported measures that evaluate health-related QOL, with NDI being specific to neck conditions and SF-36v2 being a generic instrument.
The analysis included 154 patients. A heterogeneous correlation matrix was created using a combination of Pearson, polyserial, and polychoric regressions among 67 variables, which then underwent eigen decomposition. Scores of significant principal components (PCs) (with eigenvalues>1) were included in multivariate logistic regression analyses for three dichotomous outcomes of interest: achievement of the minimum clinically important difference [MCID] in (1) NDI (≤-7.5), (2) SF-36v2 Physical Component Summary (PCS) score (≥5), and (3) SF-36v2 Mental Component Summary (MCS) score (≥5).
Twenty-four significant PCs accounting for 75% of the variance in the data were identified. Two PCs were associated with achievement of the MCID in NDI. The first (PC 1) was dominated by variables related to surgical approach and number of operated levels; the second (PC 21) consisted of variables related to patient demographics, severity and etiology of DCM, comorbid status, and surgical approach. Both PC 1 and PC 21 also correlated with SF-36v2 PCS score, in addition to PC 4, which described patients' physical profile, including gender, height, and weight, as well as comorbid renal disease; PC 6, which received large loadings from variables related to cardiac disease, impaired mobility, and length of surgery and recovery; and PC 9, which harbored large contributions from features of upper limb dysfunction, cardiorespiratory disease, surgical approach, and region. In addition to PC 21, a component profiling patients' socioeconomic status and support systems and degree of physical disability (PC 24) was associated with achievement of the MCID in SF-36 MCS score.
Through a data-driven approach, we identified several phenotypes associated with disability and physical and mental health-related QOL. Such data reduction methods may separate patient-, disease-, and treatment-related variables more accurately into clinically meaningful phenotypes that may inform patient care and recruitment into clinical trials.
先前通过基于假说的多变量统计模型确定了退行性颈椎脊髓病(DCM)手术后结局的预测因素,这些模型依赖于潜在混杂因素的先验知识,由于模型构建的限制而排除了潜在重要的变量,不能在同一模型中包含高度共线性变量,并且忽略了变量之间的内在相关性。
本研究旨在应用数据驱动方法来确定可能预测轻度 DCM 手术后结局的患者表型。
这是两项相关前瞻性多中心队列研究数据的主成分分析。
研究纳入了接受手术减压的轻度 DCM 患者,其定义为改良日本矫形协会评分 15-17 分,作为 AOSpine CSM-NA 或 CSM-I 试验的一部分。
患者预后在手术前基线时以及手术后 6 个月、1 年和 2 年进行评估。使用颈痛残障指数(NDI)和简短 36 项健康调查量表第 2 版(SF-36v2)评估生活质量(QOL)。这两种都是患者自评的评估健康相关 QOL 的指标,NDI 专门针对颈部疾病,SF-36v2 是一种通用工具。
该分析纳入了 154 例患者。使用 Pearson、polyserial 和 polychoric 回归在 67 个变量之间创建了一个异质相关矩阵,然后进行本征分解。具有大于 1 的特征值的显著主成分(PC)的分数(>1)被纳入三个感兴趣的二分类结局的多元逻辑回归分析:(1)NDI(≤-7.5)中达到最小临床重要差异[MCID],(2)SF-36v2 生理成分综合评分(PCS)得分(≥5),以及(3)SF-36v2 心理成分综合评分(MCS)得分(≥5)。
确定了 24 个占数据方差 75%的显著 PC。两个 PC 与 NDI 中 MCID 的实现相关。第一个(PC1)主要由与手术入路和手术节段数量相关的变量主导;第二个(PC21)由与患者人口统计学、DCM 的严重程度和病因、合并症状态和手术入路相关的变量组成。PC1 和 PC21 除了与 SF-36v2 PCS 评分相关外,还与 PC4 相关,PC4 描述了患者的身体状况,包括性别、身高和体重以及合并的肾脏疾病;PC6 从与心脏疾病、活动受限和手术及康复时间相关的变量中获得较大负荷;PC9 包含上肢功能障碍、心肺疾病、手术入路和区域等特征。除了 PC21 之外,一个 profiling 患者社会经济地位和支持系统以及身体残疾程度的组件(PC24)与 SF-36 MCS 评分中 MCID 的实现相关。
通过数据驱动的方法,我们确定了与残疾以及身体和心理健康相关 QOL 相关的几种表型。这种数据减少方法可能更准确地将患者、疾病和治疗相关变量分离为具有临床意义的表型,从而为患者护理和临床试验招募提供信息。