逐步回归
Lasso(编程语言)
颈部疼痛
逻辑回归
医学
多元统计
机器学习
预测建模
回归
人工智能
前瞻性队列研究
Boosting(机器学习)
回归分析
线性回归
多元自适应回归样条
贝叶斯多元线性回归
物理疗法
计算机科学
统计
外科
数学
病理
替代医学
万维网
作者
Bernard X. W. Liew,Anneli Peolsson,David Rügamer,Johanna Wibault,Håkan Löfgren,Åsa Dedering,Peter Zsigmond,Deborah Falla
标识
DOI:10.1038/s41598-020-73740-7
摘要
Abstract Prognostic models play an important role in the clinical management of cervical radiculopathy (CR). No study has compared the performance of modern machine learning techniques, against more traditional stepwise regression techniques, when developing prognostic models in individuals with CR. We analysed a prospective cohort dataset of 201 individuals with CR. Four modelling techniques (stepwise regression, least absolute shrinkage and selection operator [LASSO], boosting, and multivariate adaptive regression splines [MuARS]) were each used to form a prognostic model for each of four outcomes obtained at a 12 month follow-up (disability—neck disability index [NDI]), quality of life (EQ5D), present neck pain intensity, and present arm pain intensity). For all four outcomes, the differences in mean performance between all four models were small (difference of NDI < 1 point; EQ5D < 0.1 point; neck and arm pain < 2 points). Given that the predictive accuracy of all four modelling methods were clinically similar, the optimal modelling method may be selected based on the parsimony of predictors. Some of the most parsimonious models were achieved using MuARS, a non-linear technique. Modern machine learning methods may be used to probe relationships along different regions of the predictor space.
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