Department of Biomedical Engineering, College of Information and Biotechnology, Ulsan National Institute of Science and Technology (UNIST), Ulsan, Republic of Korea.
Department of Orthopedic Surgery, CHA Bundang Medical Center, CHA University, Seongnam, Republic of Korea.
J Pain. 2024 Aug;25(8):104497. doi: 10.1016/j.jpain.2024.02.011. Epub 2024 Feb 10.
This study aimed to enhance performance, identify additional predictors, and improve the interpretability of biopsychosocial machine learning models for low back pain (LBP). Using survey data from a 6-year nationwide study involving 17,609 adults aged ≥50 years (Korea National Health and Nutrition Examination Survey), we explored 119 factors to detect LBP in individuals who reported experiencing LBP for at least 30 days within the previous 3 months. Our primary model, model 1, employed eXtreme Gradient Boosting (XGBoost) and selected primary factors (PFs) based on their feature importance scores. To extend this, we introduced additional factors, such as lumbar X-ray findings, physical activity, sitting time, and nutrient intake levels, which were available only during specific survey periods, into models 2 to 4. Model performance was evaluated using the area under the curve, with predicted probabilities explained by SHapley Additive exPlanations. Eleven PFs were identified, and model 1 exhibited an enhanced area under the curve .8 (.77-.84, 95% confidence interval). The factors had varying impacts across individuals, underscoring the need for personalized assessment. Hip and knee joint pain were the most significant PFs. High levels of physical activity were found to have a negative association with LBP, whereas a high intake of omega-6 was found to have a positive association. Notably, we identified factor clusters, including hip joint pain and female sex, potentially linked to osteoarthritis. In summary, this study successfully developed effective XGBoost models for LBP detection, thereby providing valuable insight into LBP-related factors. Comprehensive LBP management, particularly in women with osteoarthritis, is crucial given the presence of multiple factors. PERSPECTIVE: This article introduces XGBoost models designed to detect LBP and explores the multifactorial aspects of LBP through the application of SHapley Additive exPlanations and network analysis on the 4 developed models. The utilization of this analytical system has the potential to aid in devising personalized management strategies to address LBP.
这项研究旨在提高性能、识别其他预测因素,并提高生物心理社会机器学习模型在腰痛(LBP)中的解释能力。我们使用一项为期 6 年的全国性研究的调查数据,该研究涉及 17609 名年龄≥50 岁的成年人(韩国国家健康和营养检查调查),探索了 119 个因素,以检测在过去 3 个月内至少有 30 天报告经历过腰痛的个体的 LBP。我们的主要模型 1 采用了极端梯度增强(XGBoost),并根据特征重要性得分选择了主要因素(PFs)。为了进一步扩展,我们将腰椎 X 射线检查结果、身体活动、坐姿时间和营养素摄入水平等仅在特定调查期间可用的其他因素引入到模型 2 到 4 中。我们使用曲线下面积来评估模型性能,并使用 SHapley Additive exPlanations 解释预测概率。确定了 11 个 PFs,模型 1 的曲线下面积得到了提高,达到 0.8(0.77-0.84,95%置信区间)。这些因素对个体的影响不同,突出了个性化评估的必要性。髋关节和膝关节疼痛是最重要的 PFs。发现高水平的身体活动与 LBP 呈负相关,而摄入大量的 omega-6 与 LBP 呈正相关。值得注意的是,我们确定了潜在与骨关节炎相关的因子簇,包括髋关节疼痛和女性性别。总之,这项研究成功地开发了用于检测 LBP 的有效 XGBoost 模型,从而为 LBP 相关因素提供了有价值的见解。鉴于存在多种因素,全面管理 LBP 尤为重要,尤其是对患有骨关节炎的女性。观点:本文介绍了用于检测 LBP 的 XGBoost 模型,并通过在 4 个开发模型上应用 SHapley Additive exPlanations 和网络分析,探讨了 LBP 的多因素方面。该分析系统的使用有可能有助于制定个性化的管理策略来解决 LBP。