Agarwal Nitin, Aabedi Alexander A, Chan Andrew K, Letchuman Vijay, Shabani Saman, Bisson Erica F, Bydon Mohamad, Glassman Steven D, Foley Kevin T, Shaffrey Christopher I, Potts Eric A, Shaffrey Mark E, Coric Domagoj, Knightly John J, Park Paul, Wang Michael Y, Fu Kai-Ming, Slotkin Jonathan R, Asher Anthony L, Virk Michael S, Haid Regis W, Chou Dean, Mummaneni Praveen V
1Department of Neurological Surgery, University of California, San Francisco, California.
2Department of Neurosurgery, University of Utah, Salt Lake City, Utah.
J Neurosurg Spine. 2022 Oct 7;38(2):182-191. doi: 10.3171/2022.8.SPINE22365. Print 2023 Feb 1.
Prior studies have revealed that a body mass index (BMI) ≥ 30 is associated with worse outcomes following surgical intervention in grade 1 lumbar spondylolisthesis. Using a machine learning approach, this study aimed to leverage the prospective Quality Outcomes Database (QOD) to identify a BMI threshold for patients undergoing surgical intervention for grade 1 lumbar spondylolisthesis and thus reliably identify optimal surgical candidates among obese patients.
Patients with grade 1 lumbar spondylolisthesis and preoperative BMI ≥ 30 from the prospectively collected QOD lumbar spondylolisthesis module were included in this study. A 12-month composite outcome was generated by performing principal components analysis and k-means clustering on four validated measures of surgical outcomes in patients with spondylolisthesis. Random forests were generated to determine the most important preoperative patient characteristics in predicting the composite outcome. Recursive partitioning was used to extract a BMI threshold associated with optimal outcomes.
The average BMI was 35.7, with 282 (46.4%) of the 608 patients from the QOD data set having a BMI ≥ 30. Principal components analysis revealed that the first principal component accounted for 99.2% of the variance in the four outcome measures. Two clusters were identified corresponding to patients with suboptimal outcomes (severe back pain, increased disability, impaired quality of life, and low satisfaction) and to those with optimal outcomes. Recursive partitioning established a BMI threshold of 37.5 after pruning via cross-validation.
In this multicenter study, the authors found that a BMI ≤ 37.5 was associated with improved patient outcomes following surgical intervention. These findings may help augment predictive analytics to deliver precision medicine and improve prehabilitation strategies.
先前的研究表明,体重指数(BMI)≥30与Ⅰ度腰椎滑脱手术干预后的较差预后相关。本研究采用机器学习方法,旨在利用前瞻性质量结果数据库(QOD)确定接受Ⅰ度腰椎滑脱手术干预患者的BMI阈值,从而在肥胖患者中可靠地识别出最佳手术候选人。
本研究纳入了前瞻性收集的QOD腰椎滑脱模块中BMI≥30的Ⅰ度腰椎滑脱患者。通过对腰椎滑脱患者手术结果的四项有效测量指标进行主成分分析和k均值聚类,生成了一个12个月的综合结果。生成随机森林以确定预测综合结果时最重要的术前患者特征。使用递归划分来提取与最佳结果相关的BMI阈值。
平均BMI为35.7,QOD数据集中608例患者中有282例(46.4%)BMI≥30。主成分分析显示,第一主成分占四个结果测量指标方差的99.2%。确定了两个聚类,分别对应预后不佳(严重背痛、残疾增加、生活质量受损和满意度低)的患者和预后良好的患者。通过交叉验证修剪后,递归划分确定的BMI阈值为37.5。
在这项多中心研究中,作者发现BMI≤37.5与手术干预后患者预后改善相关。这些发现可能有助于增强预测分析,以提供精准医疗并改善术前康复策略。