Predicting postoperative outcomes in lumbar spinal fusion: development of a machine learning model

被引:10
|
作者
Schonnagel, Lukas [1 ,2 ]
Caffard, Thomas [1 ,3 ]
Vu-Han, Tu-Lan [2 ]
Zhu, Jiaqi [4 ]
Nathoo, Isaac [1 ]
Finos, Kyle [1 ]
Camino-Willhuber, Gaston [1 ]
Tani, Soji [1 ,5 ]
Guven, Ali. E. [1 ,2 ]
Haffer, Henryk [2 ]
Muellner, Maximilian [2 ]
Arzani, Artine [1 ]
Chiapparelli, Erika [1 ]
Amoroso, Krizia [1 ]
Shue, Jennifer [1 ]
Duculan, Roland [6 ]
Pumberger, Matthias [2 ]
Zippelius, Timo
Sama, Andrew A. [1 ]
Cammisa, Frank P. [1 ]
Girardi, Federico P. [1 ]
Mancuso, Carol A.
Hughes, Alexander P. [1 ]
机构
[1] Hosp Special Surg, Spine Care Inst, 535 East 70th St, New York, NY 10021 USA
[2] Charite Univ Med Berlin, Ctr Musculoskeletal Surg, Charite Pl 1, D-10117 Berlin, Germany
[3] Univ klinikum Ulm, Klin Orthopadie, Oberer Eselsberg 45, D-89081 Ulm, Germany
[4] Hosp Special Surg, Biostat Core, 535 East 70th St, New York, NY 10021 USA
[5] Showa Univ Hosp, Sch Med, Dept Orthopaed Surg, 1-5-8 Hatanodai,Shinagawa Ku, Tokyo 1428666, Japan
[6] Hosp Special Surg, 535 East 70th St, New York, NY 10021 USA
来源
SPINE JOURNAL | 2024年 / 24卷 / 02期
关键词
Degenerative lumbar spondylolisthesis; Machine learning; Random forest; Spinal fusion; Support vector machine; Xtreme gradient boosting; CHARACTERISTIC ROC CURVE; DIAGNOSIS; AGE;
D O I
10.1016/j.spinee.2023.09.029
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
BACKGROUND CONTEXT: Degenerative lumbar spondylolisthesis (DLS) is a prevalent spinal disorder, often requiring surgical intervention. Accurately predicting surgical outcomes is crucial to guide clinical decision-making, but this is challenging due to the multifactorial nature of postoperative results. Traditional risk assessment tools have limitations, and with the advent of machine learning, there is potential to enhance the precision and comprehensiveness of preoperative evaluations. PURPOSE: We aimed to develop a machine -learning algorithm to predict surgical outcomes in patients with degenerative lumbar spondylolisthesis (DLS) undergoing spinal fusion surgery, only using preoperative data. STUDY DESIGN: Retrospective cross-sectional study. PATIENT SAMPLE: Patients with DLS undergoing lumbar spinal fusion surgery. OUTCOME MEASURES: This study aimed to predict the occurrence of lower back pain (LBP) >= 4 on the numeric analogue scale (NAS) 2 years after surgery. LBP was evaluated as the average pain patients experienced at rest in the week before questioning. NAS ranges from 0 to 10, 0 repre- senting no pain and 10 representing the worst pain imaginable. METHODS: We conducted a retrospective analysis of prospectively enrolled patients who under- went spinal fusion surgery for degenerative lumbar spondylolistheses at our institution in the United States between January 2016 and December 2018. The initial patient characteristics to be included in the training of the model were chosen by clinical expertise and through a literature review and included demographic characteristics, comorbidities, and radiologic features. The data was split into a training and validation datasets using a 60/40 split. Four different machine learning models were trained, including the modern XGBoost model, logistic regression, random -forest, and support vector machine (SVM). The models were evaluated according to the area under the curve (AUC) of the receiver operating characteristics (ROC) curve. An AUC of 0.7 to 0.8 was con- sidered fair, 0.8 to 0.9 good, and >= 0.9 excellent. Additionally, a calibration plot and the Brier score were calculated for each model. RESULTS: A total of 135 patients (66% female) were included. A total of 38 (28%) patients reported LBP >= 4 after 2 years, representing the positive class. The XGBoost model demonstrated the best performance in the validation set with an AUC of 0.81 (95% CI 0.67-0.95). The other machine learning models performed significantly worse: with an AUC of 0.52 (95% CI 0.37-0.68) for the SVM, 0.56 (95% CI 0.37-0.76) for the logistic regression and an AUC of 0.56 (95% CI 0.37-0.78) for the random forest. In the XGBoost model age, composition of the erector spinae, and severity of lumbar spinal stenosis as were identified as the most important features. CONCLUSIONS: This study represents a novel approach to predicting surgical outcomes in spinal fusion patients. The XGBoost demonstrated a better performance compared with classical models and highlighted the potential contributions of age and paraspinal musculature atrophy as significant factors. These findings have important implications for enhancing patient care through the identifi- cation of high -risk individuals and modifiable risk factors. As the incorporation of machine learn- ing algorithms into clinical decision -making continues to gain traction in research and clinical practice, our insights reinforce this trajectory by showcasing the potential of these techniques in forecasting surgical results. (c) 2023 Elsevier Inc. All rights reserved.
引用
收藏
页码:239 / 249
页数:11
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