为院前小儿哮喘事件开发可计算的表型。

IF 2.1 3区 医学 Q2 EMERGENCY MEDICINE Prehospital Emergency Care Pub Date : 2024-05-21 DOI:10.1080/10903127.2024.2352583
Ira Harmon, Jennifer Brailsford, Isabel Sanchez-Cano, Jennifer Fishe
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引用次数: 0

摘要

导言:哮喘加重是儿科急诊医疗服务(EMS)的常见病因。因此,小儿哮喘加重的院前管理已被指定为急救医疗服务研究的重点。然而,由于哮喘症状的异质性,尤其是儿童哮喘症状的异质性,从院前记录中准确识别儿科哮喘加重是非常细致和困难的。因此,本研究的目的是开发一种院前特异性小儿哮喘可计算表型(CP),以准确识别院前遇到的小儿哮喘加重情况:这是一项回顾性观察研究,研究对象是2018-2021年间ESO数据协作组织的2-18岁患者就诊情况。我们修改了两个现有的基于规则的儿科哮喘 CP,并创建了三个新的 CP(一个基于规则,两个基于机器学习)。两名儿科急诊医生独立审查会诊情况,以指定哮喘加重与否的标签。利用这些已标注的病例数据,按照训练/测试各占一半的比例,从已标注的数据中创建训练集和测试集。我们采用 90/10 的分配比例,从训练集中创建了一个小型验证集。我们使用特异性、灵敏度、阳性预测值(PPV)、阴性预测值(NPV)和宏 F1 来比较所有 CP 模型的性能:结果:在应用了纳入和排除标准后,还剩下 24,283 个患者案例。机器学习模型在识别小儿哮喘加重方面表现最佳。基于多层感知器的模型在所有指标中表现最佳,F1 得分为 0.95,特异性为 1.00,灵敏度为 0.91,阴性预测值为 0.98,阳性预测值为 1.00:我们修改了现有的儿科哮喘 CPs,并开发了新的儿科哮喘 CPs,以回顾性地识别院前儿科哮喘加重情况。我们发现,基于机器学习的模型大大优于基于规则的模型。鉴于机器学习模型的高性能,针对其他病症和疾病开发和应用基于机器学习的 CPs 有助于加快急救服务研究,并通过准确识别相关病症的患者最终提高临床护理水平。
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Development of a Computable Phenotype for Prehospital Pediatric Asthma Encounters.

Introduction: Asthma exacerbations are a common cause of pediatric Emergency Medical Services (EMS) encounters. Accordingly, prehospital management of pediatric asthma exacerbations has been designated an EMS research priority. However, accurate identification of pediatric asthma exacerbations from the prehospital record is nuanced and difficult due to the heterogeneity of asthma symptoms, especially in children. Therefore, this study's objective was to develop a prehospital-specific pediatric asthma computable phenotype (CP) that could accurately identify prehospital encounters for pediatric asthma exacerbations.

Methods: This is a retrospective observational study of patient encounters for ages 2-18 years from the ESO Data Collaborative between 2018 and 2021. We modified two existing rule-based pediatric asthma CPs and created three new CPs (one rule-based and two machine learning-based). Two pediatric emergency medicine physicians independently reviewed encounters to assign labels of asthma exacerbation or not. Taking that labeled encounter data, a 50/50 train/test split was used to create training and test sets from the labeled data. A 90/10 split was used to create a small validation set from the training set. We used specificity, sensitivity, positive predictive value (PPV), negative predictive value (NPV) and macro F1 to compare performance across all CP models.

Results: After applying the inclusion and exclusion criteria, 24,283 patient encounters remained. The machine-learning models exhibited the best performance for the identification of pediatric asthma exacerbations. A multi-layer perceptron-based model had the best performance in all metrics, with an F1 score of 0.95, specificity of 1.00, sensitivity of 0.91, negative predictive value of 0.98, and positive predictive value of 1.00.

Conclusion: We modified existing and developed new pediatric asthma CPs to retrospectively identify prehospital pediatric asthma exacerbation encounters. We found that machine learning-based models greatly outperformed rule-based models. Given the high performance of the machine-learning models, the development and application of machine learning-based CPs for other conditions and diseases could help accelerate EMS research and ultimately enhance clinical care by accurately identifying patients with conditions of interest.

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来源期刊
Prehospital Emergency Care
Prehospital Emergency Care 医学-公共卫生、环境卫生与职业卫生
CiteScore
4.30
自引率
12.50%
发文量
137
审稿时长
1 months
期刊介绍: Prehospital Emergency Care publishes peer-reviewed information relevant to the practice, educational advancement, and investigation of prehospital emergency care, including the following types of articles: Special Contributions - Original Articles - Education and Practice - Preliminary Reports - Case Conferences - Position Papers - Collective Reviews - Editorials - Letters to the Editor - Media Reviews.
期刊最新文献
An analysis of 24-hour survival based on arrival by atypical ground transport versus ground emergency medical services. Prehospital Trauma Compendium: Traumatic Pneumothorax Care: Position Statement and Resource Document of NAEMSP. Community Disparities in Out-of-Hospital Cardiac Arrest Prehospital Antiarrhythmic Practices. Factors associated with emergency medical clinicians leaving EMS. Smartphone-Enabled Point-of-Care Testing for Prehospital Stroke Diagnosis.
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