Morris Matthew C, Moradi Hamidreza, Aslani Maryam, Sun Sicong, Karlson Cynthia, Bartley Emily J, Bruehl Stephen, Archer Kristin R, Bergin Patrick F, Kinney Kerry, Watts Ashley L, Huber Felicitas A, Funches Gaarmel, Nag Subodh, Goodin Burel R
Department of Anesthesiology, Vanderbilt University Medical Center, Nashville, TN, United States.
Vanderbilt Center for Musculoskeletal Research, Vanderbilt University Medical Center, Nashville, TN, United States.
Pain. 2025 May 1;166(5):e68-e82. doi: 10.1097/j.pain.0000000000003451. Epub 2024 Oct 11.
Lower socioeconomic position (SEP) is associated with increased risk of developing chronic pain, experiencing more severe pain, and suffering greater pain-related disability. However, SEP is a multidimensional construct; there is a dearth of research on which SEP features are most strongly associated with high-impact chronic pain, the relative importance of SEP predictive features compared to established chronic pain correlates, and whether the relative importance of SEP predictive features differs by race and sex. This study used 3 machine learning algorithms to address these questions among adults in the 2019 National Health Interview Survey. Gradient boosting decision trees achieved the highest accuracy and discriminatory power for high-impact chronic pain. Results suggest that distinct SEP dimensions, including material resources (eg, ratio of family income to poverty threshold) and employment (ie, working in the past week, number of working adults in the family), are highly relevant predictors of high-impact chronic pain. Subgroup analyses compared the relative importance of predictive features of high-impact chronic pain in non-Hispanic Black vs White adults and men vs women. Whereas the relative importance of body mass index and owning/renting a residence was higher for non-Hispanic Black adults, the relative importance of working adults in the family and housing stability was higher for non-Hispanic White adults. Anxiety symptom severity, body mass index, and cigarette smoking had higher relevance for women, while housing stability and frequency of anxiety and depression had higher relevance for men. Results highlight the potential for machine learning algorithms to advance health equity research.
社会经济地位较低与患慢性疼痛风险增加、经历更严重疼痛以及遭受与疼痛相关的更大残疾有关。然而,社会经济地位是一个多维度的概念;关于哪些社会经济地位特征与高影响慢性疼痛最密切相关、社会经济地位预测特征相对于已确定的慢性疼痛相关因素的相对重要性,以及社会经济地位预测特征的相对重要性是否因种族和性别而异的研究尚少。本研究使用三种机器学习算法,在2019年全国健康访谈调查中的成年人中解决这些问题。梯度提升决策树在高影响慢性疼痛方面实现了最高的准确性和区分能力。结果表明,不同的社会经济地位维度,包括物质资源(如家庭收入与贫困线的比率)和就业(即过去一周工作、家庭中工作的成年人数量),是高影响慢性疼痛的高度相关预测因素。亚组分析比较了非西班牙裔黑人与白人成年人以及男性与女性中高影响慢性疼痛预测特征的相对重要性。非西班牙裔黑人成年人中体重指数和拥有/租赁住所的相对重要性较高,而非西班牙裔白人成年人中家庭中工作的成年人和住房稳定性的相对重要性较高。焦虑症状严重程度、体重指数和吸烟对女性的相关性较高,而住房稳定性以及焦虑和抑郁的频率对男性的相关性较高。结果突出了机器学习算法推进健康公平研究的潜力。