Centre of Precision Rehabilitation for Spinal Pain (CPR Spine), School of Sport, Exercise and Rehabilitation Sciences, University of Birmingham, UK.
Centre of Precision Rehabilitation for Spinal Pain (CPR Spine), School of Sport, Exercise and Rehabilitation Sciences, University of Birmingham, UK.
J Electromyogr Kinesiol. 2021 Dec;61:102599. doi: 10.1016/j.jelekin.2021.102599. Epub 2021 Sep 17.
The purpose of this narrative review is to provide a critical reflection of how analytical machine learning approaches could provide the platform to harness variability of patient presentation to enhance clinical prediction. The review includes a summary of current knowledge on the physiological adaptations present in people with spinal pain. We discuss how contemporary evidence highlights the importance of not relying on single features when characterizing patients given the variability of physiological adaptations present in people with spinal pain. The advantages and disadvantages of current analytical strategies in contemporary basic science and epidemiological research are reviewed and we consider how analytical machine learning approaches could provide the platform to harness the variability of patient presentations to enhance clinical prediction of pain persistence or recurrence. We propose that machine learning techniques can be leveraged to translate a potentially heterogeneous set of variables into clinically useful information with the potential to enhance patient management.
本文旨在批判性地反思分析机器学习方法如何提供一个平台,利用患者表现的可变性来提高临床预测能力。本文总结了目前关于脊柱疼痛患者生理适应的知识。我们讨论了为什么在描述患者时不能仅仅依赖单一特征,因为脊柱疼痛患者的生理适应存在很大的可变性。本文还回顾了当前分析策略在当代基础科学和流行病学研究中的优缺点,并探讨了分析机器学习方法如何提供一个平台,利用患者表现的可变性来提高疼痛持续或复发的临床预测能力。我们提出,机器学习技术可以用来将一组潜在的异质变量转化为临床有用的信息,从而有可能改善患者管理。