2010-2020 年圣路易斯地区新发生的枪支伤害事件的机器学习分类。

IF 4.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of the American Medical Informatics Association Pub Date : 2024-07-08 DOI:10.1093/jamia/ocae173
Rachel M Ancona, Benjamin P Cooper, Randi Foraker, Taylor Kaser, Opeolu Adeoye, Kristen L Mueller
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引用次数: 0

摘要

目标: 使用机器学习(ML)改进枪支伤害事故分类(新伤与后续伤),并比较我们的 ML 模型:利用机器学习(ML)改进枪支伤害的分类(新伤与后续伤),并将我们的ML模型与其他常见方法进行比较:这项回顾性研究使用的数据来自圣路易斯地区的医院暴力干预计划数据存储库(2010-2020 年)。我们随机选取了 500 名被诊断为枪支伤害的患者作为研究对象,其中 808 名枪支伤害患者分别(70/30)接受了训练和测试。我们使用以下预测因子训练了最小绝对收缩和选择算子 (LASSO) 回归模型:入院类型、枪支伤害就诊间隔时间、之前枪支伤害急诊科 (ED) 就诊次数、就诊类型(ED 或其他)和诊断代码。我们对新发生的枪支伤害事件进行分类的金标准是人工病历审查。然后,我们使用测试数据来比较我们的 ML 模型与其他常用方法(急诊室就诊次数和枪支伤害就诊间隔时间的替代指标,以及诊断代码的就诊类型指定[初次与后续或续发])的性能。性能指标包括曲线下面积(AUC)、灵敏度和特异性,以及 95% 的置信区间(CI):结果:ML 模型具有极佳的区分度(0.92,0.88-0.96),灵敏度(0.95,0.90-0.98)和特异度(0.89,0.81-0.95)都很高。AUC明显高于基于时间的结果,灵敏度略低于(但不明显)其他方法,特异性高于所有其他方法:讨论:ML 成功地划分了新的枪支伤害事件,在排除需要随访的事件方面优于其他方法:结论:ML 可用来识别新的枪支伤害事件,在评估再次伤害的研究中可能特别有用。
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Machine learning classification of new firearm injury encounters in the St Louis region: 2010-2020.

Objectives: To improve firearm injury encounter classification (new vs follow-up) using machine learning (ML) and compare our ML model to other common approaches.

Materials and methods: This retrospective study used data from the St Louis region-wide hospital-based violence intervention program data repository (2010-2020). We randomly selected 500 patients with a firearm injury diagnosis for inclusion, with 808 total firearm injury encounters split (70/30) for training and testing. We trained a least absolute shrinkage and selection operator (LASSO) regression model with the following predictors: admission type, time between firearm injury visits, number of prior firearm injury emergency department (ED) visits, encounter type (ED or other), and diagnostic codes. Our gold standard for new firearm injury encounter classification was manual chart review. We then used our test data to compare the performance of our ML model to other commonly used approaches (proxy measures of ED visits and time between firearm injury encounters, and diagnostic code encounter type designation [initial vs subsequent or sequela]). Performance metrics included area under the curve (AUC), sensitivity, and specificity with 95% confidence intervals (CIs).

Results: The ML model had excellent discrimination (0.92, 0.88-0.96) with high sensitivity (0.95, 0.90-0.98) and specificity (0.89, 0.81-0.95). AUC was significantly higher than time-based outcomes, sensitivity was slightly (but not significantly) lower than other approaches, and specificity was higher than all other methods.

Discussion: ML successfully delineated new firearm injury encounters, outperforming other approaches in ruling out encounters for follow-up.

Conclusion: ML can be used to identify new firearm injury encounters and may be particularly useful in studies assessing re-injuries.

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来源期刊
Journal of the American Medical Informatics Association
Journal of the American Medical Informatics Association 医学-计算机:跨学科应用
CiteScore
14.50
自引率
7.80%
发文量
230
审稿时长
3-8 weeks
期刊介绍: JAMIA is AMIA''s premier peer-reviewed journal for biomedical and health informatics. Covering the full spectrum of activities in the field, JAMIA includes informatics articles in the areas of clinical care, clinical research, translational science, implementation science, imaging, education, consumer health, public health, and policy. JAMIA''s articles describe innovative informatics research and systems that help to advance biomedical science and to promote health. Case reports, perspectives and reviews also help readers stay connected with the most important informatics developments in implementation, policy and education.
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