Abbas Janan, Yousef Malik, Hamoud Kamal, Joubran Katherin
Department of Physical Therapy, Zefat Academic College, Zefat 13206, Israel.
Department of Information Systems, Zefat Academic College, Zefat 13206, Israel.
J Clin Med. 2025 Mar 17;14(6):2046. doi: 10.3390/jcm14062046.
Low back pain (LBP) is considered the most common and challenging disorder in health care. Although its incidence increases with age, a student's sedentary behavior could contribute to this risk. Through machine learning (ML), advanced algorithms can analyze complex patterns in health data, enabling accurate prediction and targeted prevention of medical conditions such as LBP. This study aims to detect the factors associated with LBP among health sciences students. A self-administered modified version of the Standardized Nordic Questionnaire was completed by 222 freshman health sciences students from May to June 2022. A supervised random forest algorithm was utilized to analyze data and prioritize the importance of variables related to LBP. The model's predictive capability was further visualized using a decision tree to identify high-risk patterns and associations. A total of 197/222 (88.7%) students participated in this study, most of whom (75%) were female. Their mean age and body mass index were 23 ± 3.8 and 23 ± 3.5, respectively. In this group, 46% (n = 90) of the students reported having experienced LBP in the last month, 15% (n = 30) were smokers, and 60% (n = 119) were involved in prolonged sitting (more than 3 h per day). The decision tree of ML revealed that a history of pain (score = 1), as well as disability (score= 0.34) and physical activity (score = 0.21), were significantly associated with LBP. Approximately 46% of the health science students reported LBP in the last month, and a machine-learning approach highlighted a history of pain as the most significant factor related to LBP.
下背痛(LBP)被认为是医疗保健中最常见且最具挑战性的疾病。尽管其发病率随年龄增长而增加,但学生的久坐行为也可能导致这种风险。通过机器学习(ML),先进的算法可以分析健康数据中的复杂模式,从而能够准确预测和有针对性地预防诸如LBP等医疗状况。本研究旨在检测健康科学专业学生中与LBP相关的因素。2022年5月至6月,222名健康科学专业大一学生完成了一份自行填写的标准化北欧问卷修改版。使用监督随机森林算法分析数据,并对与LBP相关变量的重要性进行排序。使用决策树进一步可视化该模型的预测能力,以识别高风险模式和关联。共有197/222(88.7%)名学生参与了本研究,其中大多数(75%)为女性。他们的平均年龄和体重指数分别为23±3.8和23±3.5。在这组学生中,46%(n = 90)报告在过去一个月内经历过LBP,15%(n = 30)为吸烟者,60%(n = 119)有久坐行为(每天超过3小时)。ML决策树显示,疼痛史(得分 = 1)以及残疾(得分 = 0.34)和体育活动(得分 = 0.21)与LBP显著相关。约46%的健康科学专业学生在过去一个月内报告有LBP,机器学习方法突出了疼痛史是与LBP相关的最主要因素。