用于腰背痛检测和因素识别的机器学习模型:一项为期 6 年的全国性调查的启示。

IF 4 2区 医学 Q1 CLINICAL NEUROLOGY
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引用次数: 0

摘要

本研究旨在提高腰背痛(LBP)生物-心理-社会机器学习模型的性能、识别其他预测因素并改善其可解释性。利用一项为期 6 年、涉及 17,609 名年龄≥ 50 岁成年人的全国性研究(KNHANES)的调查数据,我们对 119 个因素进行了探索,以检测那些报告在过去三个月内至少经历过 30 天腰背痛的人是否患有腰背痛。我们的主要模型(模型 1)采用了梯度提升(XGBoost)技术,并根据特征重要性得分选择了主要因素。为了扩展模型,我们在模型 2-4 中引入了其他因素,如腰椎 X 光检查结果、体力活动、久坐时间和营养摄入水平,这些因素只有在特定调查期间才能获得。使用曲线下面积(AUC)对模型性能进行评估,预测概率由 SHapley Additive exPlanations(SHAP)解释。确定了 11 个主要因素,模型 1 的 AUC 值为 0.8(0.77-0.84,95% CI)。这些因素对不同个体的影响各不相同,强调了个性化评估的必要性。髋关节和膝关节疼痛是最重要的主要因素。高水平的体育锻炼与枸杞痛呈负相关,而高欧米伽-6摄入量与枸杞痛呈正相关。值得注意的是,我们发现了与骨关节炎潜在相关的因素群,包括髋关节疼痛和女性性别。总之,本研究成功开发了有效的 XGBoost 模型用于枸杞多糖检测,从而为了解枸杞多糖相关因素提供了宝贵的信息。鉴于多种因素的存在,全面的枸杞痛管理,尤其是女性骨关节炎患者的枸杞痛管理至关重要。观点:本文介绍了用于检测腰背痛的 XGBoost 模型,并通过对所开发的四个模型应用 SHAP 和网络分析,探讨了腰背痛的多因素方面。利用这一分析系统有可能有助于制定个性化的管理策略来解决腰背痛问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Models for Low Back Pain Detection and Factor Identification: Insights From a 6-Year Nationwide Survey

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.

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来源期刊
Journal of Pain
Journal of Pain 医学-临床神经学
CiteScore
6.30
自引率
7.50%
发文量
441
审稿时长
42 days
期刊介绍: The Journal of Pain publishes original articles related to all aspects of pain, including clinical and basic research, patient care, education, and health policy. Articles selected for publication in the Journal are most commonly reports of original clinical research or reports of original basic research. In addition, invited critical reviews, including meta analyses of drugs for pain management, invited commentaries on reviews, and exceptional case studies are published in the Journal. The mission of the Journal is to improve the care of patients in pain by providing a forum for clinical researchers, basic scientists, clinicians, and other health professionals to publish original research.
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