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Use of multivariate linear regression and support vector regression to predict functional outcome after surgery for cervical spondylotic myelopathy

机译:使用多元线性回归和支持向量回归预测颈椎病性脊髓病术后的功能结局

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摘要

This study introduces the use of multivariate linear regression (MLR) and support vector regression (SVR) models to predict postoperative outcomes in a cohort of patients who underwent surgery for cervical spondylotic myelopathy (CSM). Currently, predicting outcomes after surgery for CSM remains a challenge. We recruited patients who had a diagnosis of CSM and required decompressive surgery with or without fusion. Fine motor function was tested preoperatively and postoperatively with a handgrip-based tracking device that has been previously validated, yielding mean absolute accuracy (MAA) results for two tracking tasks (sinusoidal and step). All patients completed Oswestry disability index (ODI) and modified Japanese Orthopaedic Association questionnaires preoperatively and postoperatively. Preoperative data was utilized in MLR and SVR models to predict postoperative ODI. Predictions were compared to the actual ODI scores with the coefficient of determination (R2) and mean absolute difference (MAD). From this, 20 patients met the inclusion criteria and completed follow-up at least 3 months after surgery. With the MLR model, a combination of the preoperative ODI score, preoperative MAA (step function), and symptom duration yielded the best prediction of postoperative ODI (R2 = 0.452; MAD = 0.0887; p = 1.17 × 10−3). With the SVR model, a combination of preoperative ODI score, preoperative MAA (sinusoidal function), and symptom duration yielded the best prediction of postoperative ODI (R2 = 0.932; MAD = 0.0283; p = 5.73 × 10−12). The SVR model was more accurate than the MLR model. The SVR can be used preoperatively in risk/benefit analysis and the decision to operate.
机译:这项研究介绍了使用多元线性回归(MLR)和支持向量回归(SVR)模型来预测接受颈椎病性脊髓病(CSM)手术的一组患者的术后结果。目前,预测CSM手术后的结果仍然是一个挑战。我们招募了诊断为CSM且需要进行减压手术并伴或不伴融合的患者。术前和术后均使用基于手握的跟踪设备对精细运动功能进行了测试,该设备先前已经过验证,可以得出两个跟踪任务(正弦波和步进波)的平均绝对准确度(MAA)结果。所有患者在术前和术后均完成了Oswestry残疾指数(ODI)并修改了日本骨科学会的问卷。术前数据用于MLR和SVR模型中以预测术后ODI。将预测值与实际ODI得分进行比较,并得出确定系数(R 2 )和平均绝对差(MAD)。由此,有20名患者符合入选标准,并在手术后至少3个月完成了随访。使用MLR模型时,结合术前ODI评分,术前MAA(阶跃函数)和症状持续时间,可以最好地预测术后ODI(R 2 = 0.452; MAD = 0.0887; p = 1.17 ×10 −3 )。使用SVR模型,结合术前ODI评分,术前MAA(正弦函数)和症状持续时间,可以最好地预测术后ODI(R 2 = 0.932; MAD = 0.0283; p = 5.73× 10 −12 )。 SVR模型比MLR模型更准确。 SVR可以在术前用于风险/收益分析和操作决策。

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