Torad Ahmed A, Ahmed Mohamed M, Elabd Omar M, El-Shamy Fayiz F, Alajam Ramzi A, Amin Wafaa Mahmoud, Alfaifi Bsmah H, Elabd Aliaa M
Basic Science Department, Faculty of Physical Therapy, Kafrelsheik University, Kafrelsheik 33516, Egypt.
Department of Physical Therapy, Collage of Applied Medical Sciences, Jazan University, Jizan 45142, Saudi Arabia.
J Clin Med. 2024 Mar 28;13(7):1967. doi: 10.3390/jcm13071967.
(1) Neck pain intensity, psychosocial factors, and physical function have been identified as potential predictors of neck disability. Machine learning algorithms have shown promise in classifying patients based on their neck disability status. So, the current study was conducted to identify predictors of neck disability in patients with neck pain based on clinical findings using machine learning algorithms. (2) Ninety participants with chronic neck pain took part in the study. Demographic characteristics in addition to neck pain intensity, the neck disability index, cervical spine contour, and surface electromyographic characteristics of the axioscapular muscles were measured. Participants were categorised into high disability and low disability groups based on the median value (22.2) of their neck disability index scores. Several regression and classification machine learning models were trained and assessed using a 10-fold cross-validation method; also, MANCOVA was used to compare between the two groups. (3) The multilayer perceptron (MLP) revealed the highest adjusted R2 of 0.768, while linear discriminate analysis showed the highest receiver characteristic operator (ROC) area under the curve of 0.91. Pain intensity was the most important feature in both models with the highest effect size of 0.568 with < 0.001. (4) The study findings provide valuable insights into pain as the most important predictor of neck disability in patients with cervical pain. Tailoring interventions based on pain can improve patient outcomes and potentially prevent or reduce neck disability.
(1) 颈部疼痛强度、心理社会因素和身体功能已被确定为颈部功能障碍的潜在预测指标。机器学习算法在根据患者的颈部功能障碍状态对其进行分类方面显示出了前景。因此,本研究旨在使用机器学习算法,根据临床发现确定颈部疼痛患者颈部功能障碍的预测指标。(2) 90名慢性颈部疼痛患者参与了该研究。除了测量颈部疼痛强度外,还测量了颈部功能障碍指数、颈椎轮廓以及轴肩胛肌的表面肌电图特征等人口统计学特征。根据颈部功能障碍指数得分的中位数(22.2),将参与者分为高功能障碍组和低功能障碍组。使用10折交叉验证方法对几种回归和分类机器学习模型进行了训练和评估;此外,使用多变量协方差分析在两组之间进行比较。(3) 多层感知器(MLP)显示调整后的R2最高,为0.768,而线性判别分析显示曲线下的受试者特征算子(ROC)面积最高,为0.91。在两个模型中,疼痛强度都是最重要的特征,效应大小最高为0.568,P < 0.001。(4) 研究结果为疼痛作为颈部疼痛患者颈部功能障碍最重要的预测指标提供了有价值的见解。根据疼痛情况定制干预措施可以改善患者的预后,并有可能预防或减少颈部功能障碍。