Bird Matthew B, Roach Megan H, Nelson Roberts G, Helton Matthew S, Mauntel Timothy C
Extremity Trauma and Amputation Center of Excellence, Defense Health Agency, Falls Church, VA, United States.
Department of Clinical Investigations, Womack Army Medical Center, Fort Liberty, NC, United States.
Front Artif Intell. 2024 Jun 19;7:1420210. doi: 10.3389/frai.2024.1420210. eCollection 2024.
Musculoskeletal injuries (MSKIs) are endemic in military populations. Thus, it is essential to identify and mitigate MSKI risks. Time-to-event machine learning models utilizing self-reported questionnaires or existing data (e.g., electronic health records) may aid in creating efficient risk screening tools.
A total of 4,222 U.S. Army Service members completed a self-report MSKI risk screen as part of their unit's standard in-processing. Additionally, participants' MSKI and demographic data were abstracted from electronic health record data. Survival machine learning models (Cox proportional hazard regression (COX), COX with splines, conditional inference trees, and random forest) were deployed to develop a predictive model on the training data (75%; = 2,963) for MSKI risk over varying time horizons (30, 90, 180, and 365 days) and were evaluated on the testing data (25%; = 987). Probability of predicted risk (0.00-1.00) from the final model stratified Service members into quartiles based on MSKI risk.
The COX model demonstrated the best model performance over the time horizons. The time-dependent area under the curve ranged from 0.73 to 0.70 at 30 and 180 days. The index prediction accuracy (IPA) was 12% better at 180 days than the IPA of the null model (0 variables). Within the COX model, "other" race, more self-reported pain items during the movement screens, female gender, and prior MSKI demonstrated the largest hazard ratios. When predicted probability was binned into quartiles, at 180 days, the highest risk bin had an MSKI incidence rate of 2,130.82 ± 171.15 per 1,000 person-years and incidence rate ratio of 4.74 (95% confidence interval: 3.44, 6.54) compared to the lowest risk bin.
Self-reported questionnaires and existing data can be used to create a machine learning algorithm to identify Service members' MSKI risk profiles. Further research should develop more granular Service member-specific MSKI screening tools and create MSKI risk mitigation strategies based on these screenings.
肌肉骨骼损伤(MSKIs)在军人中很常见。因此,识别和减轻MSKI风险至关重要。利用自我报告问卷或现有数据(如电子健康记录)的事件发生时间机器学习模型可能有助于创建高效的风险筛查工具。
共有4222名美国陆军服役人员作为其所在单位标准入伍流程的一部分完成了自我报告的MSKI风险筛查。此外,从电子健康记录数据中提取了参与者的MSKI和人口统计学数据。部署生存机器学习模型(Cox比例风险回归(COX)、带样条的COX、条件推断树和随机森林),以在训练数据(75%;n = 2963)上针对不同时间范围(30、90、180和365天)开发MSKI风险预测模型,并在测试数据(25%;n = 987)上进行评估。最终模型预测风险的概率(0.00 - 1.00)根据MSKI风险将服役人员分为四分位数。
COX模型在各个时间范围内表现出最佳的模型性能。曲线下时间依赖面积在30天和180天时分别为0.73至0.70。180天时的指数预测准确性(IPA)比空模型(0个变量)的IPA高12%。在COX模型中,“其他”种族、运动筛查期间更多的自我报告疼痛项目、女性性别和既往MSKI显示出最大的风险比。当将预测概率分为四分位数时,在180天时,最高风险组的MSKI发病率为每1000人年2130.82±171.15,与最低风险组相比,发病率比为4.74(95%置信区间:3.44,6.54)。
自我报告问卷和现有数据可用于创建机器学习算法,以识别服役人员的MSKI风险概况。进一步的研究应开发更精细的针对特定服役人员的MSKI筛查工具,并基于这些筛查制定MSKI风险缓解策略。