加拿大道路交通伤害后经济成本的决定因素:分位数回归森林机器学习方法。

IF 2.2 Q3 HEALTH CARE SCIENCES & SERVICES
ClinicoEconomics and Outcomes Research Pub Date : 2025-09-10 eCollection Date: 2025-01-01 DOI:10.2147/CEOR.S533069
Somayeh Momenyan, Herbert Chan, Lina Jae, John A Taylor, John A Staples, Devin R Harris, Jeffrey R Brubacher
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引用次数: 0

摘要

本研究旨在确定道路交通伤害成本的主要决定因素,对其重要性进行排序,并评估其对成本分布的不同分位数的影响。方法:本研究分析了2018年7月至2020年3月期间收集的1372名加拿大RT幸存者的数据。估计每位参与者的成本为2023加元,其中包括RT损伤后一年的医疗保健和生产力损失成本。生产力损失采用医疗技术评估研究所生产力成本问卷进行测量。我们考虑了24个潜在的成本决定因素,将其分为五个领域:社会人口统计学、心理、健康、碰撞和伤害因素,在基线访谈中进行评估。我们采用了分位数回归森林机器学习方法和经典分位数回归来分析成本。选择这些方法是为了捕捉跨成本分布的异质性效应,这些效应被传统的基于均值的模型所忽视,并为针对高成本亚群的政策决策提供信息。结果:第10分位数、第50分位数和第90分位数的成本分别为$1,141.9、$7,403.1和$49,537.5。ISS、GCS和年龄是影响低成本、中等成本和高成本患者的前三大变量。ISS、GCS、年龄、性别、就业状况和生活状况是所有分位数中常见的主要决定因素。在第50和90分位数处,种族被选为重要的决定因素。受教育程度、在加拿大居住年限、躯体症状严重程度、心理困扰、HRQoL、道路使用者类型以及头部、躯干、脊柱/背部和下肢损伤仅用于高成本患者(第90分位数)。经典分位数回归显示,所选主要预测因子对低成本、中等成本和高成本患者的影响不成比例。结论:高费用患者多为年龄较大、退休、文化程度较低、临床及心理指标较差的患者。这些见解可以指导有针对性的预防和资源分配策略,以减轻RT损伤的经济负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Determinants of Economic Costs Following Road Traffic Injuries in Canada: A Quantile Regression Forests Machine Learning Approach.

Determinants of Economic Costs Following Road Traffic Injuries in Canada: A Quantile Regression Forests Machine Learning Approach.

Determinants of Economic Costs Following Road Traffic Injuries in Canada: A Quantile Regression Forests Machine Learning Approach.

Determinants of Economic Costs Following Road Traffic Injuries in Canada: A Quantile Regression Forests Machine Learning Approach.

Introduction: This study aimed to identify major determinants of the cost of road traffic (RT) injuries, rank their importance, and assess their effects on different quantiles of cost distribution.

Methods: This study analyzed data collected from 1372 Canadian RT survivors from July 2018 to March 2020. Costs, including healthcare and lost productivity costs over a year following RT injury, were estimated for each participant in 2023 Canadian dollars. Productivity loss was measured using the Institute for Medical Technology Assessment Productivity Cost Questionnaire. We considered 24 potential determinants of costs, which were grouped into five domains: sociodemographic, psychological, health, crash, and injury factors assessed during baseline interview. We employed a quantile regression forests machine learning approach alongside classical quantile regression to analyze costs. These methods were selected to capture heterogeneous effects across cost distribution, which are overlooked by traditional mean-based models, and to inform policy decisions targeting high-cost subgroup.

Results: The results showed that the 10th, 50th, and 90th quantiles of costs were $1,141.9, $7,403.1, and $49,537.5, respectively. ISS, GCS, and age were the top three influential variables among low-cost, medium-cost, and high-cost patients. ISS, GCS, age, sex, employment status, and living situation were common major determinants at all quantiles. Ethnicity was selected as an important determinant at the 50th and 90th quantiles. Education level, years lived in Canada, somatic symptoms severity, psychological distress, HRQoL, road user type, and head, torso, spine/back, and lower extremity injuries were selected only for high-cost patients (90th quantile). Classical quantile regression showed that selected major predictors disproportionately affected low-cost, middle-cost and high-cost patients.

Conclusion: High-cost patients were more likely to be older, retired, less educated, and have worse clinical and psychological indicators. These insights can guide targeted prevention and resource allocation strategies to reduce the economic burden of RT injuries.

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来源期刊
ClinicoEconomics and Outcomes Research
ClinicoEconomics and Outcomes Research HEALTH CARE SCIENCES & SERVICES-
CiteScore
3.70
自引率
0.00%
发文量
83
审稿时长
16 weeks
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