Predicting Asthma Exacerbations Using Machine Learning Models.

IF 3.4 3区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Gianluca Turcatel, Yi Xiao, Scott Caveney, Gilles Gnacadja, Julie Kim, Nestor A Molfino
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引用次数: 0

Abstract

Introduction: Although clinical, functional, and biomarker data predict asthma exacerbations, newer approaches providing high accuracy of prognosis are needed for real-world decision-making in asthma. Machine learning (ML) leverages mathematical and statistical methods to detect patterns for future disease events across large datasets from electronic health records (EHR). This study conducted training and fine-tuning of ML algorithms for the real-world prediction of asthma exacerbations in patients with physician-diagnosed asthma.

Methods: Adults with ≥ 2 ICD9/10 asthma codes within 1 year and at least 30 days apart were identified from the Optum Panther EHR database between 2016 and 2023. An emergency department (ED), urgent care, or inpatient visit for asthma, while on systemic administration of corticosteroids, was considered an exacerbation. To predict factors associated with exacerbations in a 6-month study period, clinical information from patients was retrieved in the preceding 6-month baseline period. Clinical information included demographics, lab results, diagnoses, medications, immunizations, and allergies. Three models built using Extreme Gradient Boosting (XGBoost), Long Short-Term Memory (LSTM), and Transformers algorithms were trained and tested on independent datasets. Predictions were explained using the SHAP (SHapley Additive exPlanations) library.

Results: Of 1,331,934 patients with asthma, 16,279 (1.2%) experienced ≥ 1 exacerbation. XGBoost was the best predictive algorithm (area under the curve [AUC] = 0.964). Factors associated with exacerbations included a prior history of exacerbation, prednisone usage, high-dose albuterol usage, and elevated troponin I. Reduced probability of exacerbations was associated with receiving inhaled albuterol, vitamins, aspirin, statins, furosemide, and influenza vaccination.

Conclusion: This ML-based study on asthma in the real world confirmed previously known features associated with increased exacerbation risk for asthma, while uncovering not entirely understood features associated with reduced risk of asthma exacerbations. These findings are hypothesis-generating and should contribute to ongoing discussion of the strengths and limitations of ML and other supervised learning models in patient risk stratification.

利用机器学习模型预测哮喘恶化。
简介:虽然临床、功能和生物标记物数据可以预测哮喘恶化,但在哮喘的实际决策中需要更新的方法来提供高准确度的预后。机器学习(ML)利用数学和统计方法从电子健康记录(EHR)的大型数据集中检测未来疾病事件的模式。本研究对 ML 算法进行了训练和微调,以便在现实世界中预测医生诊断的哮喘患者的哮喘恶化情况:从 Optum Panther EHR 数据库中识别出 2016 年至 2023 年间在 1 年内≥ 2 个 ICD9/10 哮喘代码且间隔至少 30 天的成人。因哮喘到急诊科(ED)、紧急护理中心或住院部就诊,同时全身使用皮质类固醇的患者被视为病情加重。为了预测与 6 个月研究期间病情加重相关的因素,我们检索了患者在前 6 个月基线期间的临床信息。临床信息包括人口统计学、化验结果、诊断、药物、免疫接种和过敏症。使用极端梯度提升(XGBoost)、长短期记忆(LSTM)和变形算法建立的三个模型在独立的数据集上进行了训练和测试。预测使用 SHAP(SHapley Additive exPlanations)库进行解释:在 1,331,934 名哮喘患者中,有 16,279 人(1.2%)经历了≥ 1 次病情加重。XGBoost 是最佳预测算法(曲线下面积 [AUC] = 0.964)。与病情恶化相关的因素包括既往有病情恶化史、使用泼尼松、使用大剂量阿布特罗以及肌钙蛋白 I 升高:这项基于 ML 的真实世界哮喘研究证实了以前已知的与哮喘恶化风险增加有关的特征,同时发现了与哮喘恶化风险降低有关的尚未完全了解的特征。这些研究结果提出了一些假设,有助于继续讨论 ML 和其他监督学习模型在患者风险分层中的优势和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in Therapy
Advances in Therapy 医学-药学
CiteScore
7.20
自引率
2.60%
发文量
353
审稿时长
6-12 weeks
期刊介绍: Advances in Therapy is an international, peer reviewed, rapid-publication (peer review in 2 weeks, published 3–4 weeks from acceptance) journal dedicated to the publication of high-quality clinical (all phases), observational, real-world, and health outcomes research around the discovery, development, and use of therapeutics and interventions (including devices) across all therapeutic areas. Studies relating to diagnostics and diagnosis, pharmacoeconomics, public health, epidemiology, quality of life, and patient care, management, and education are also encouraged. The journal is of interest to a broad audience of healthcare professionals and publishes original research, reviews, communications and letters. The journal is read by a global audience and receives submissions from all over the world. Advances in Therapy will consider all scientifically sound research be it positive, confirmatory or negative data. Submissions are welcomed whether they relate to an international and/or a country-specific audience, something that is crucially important when researchers are trying to target more specific patient populations. This inclusive approach allows the journal to assist in the dissemination of all scientifically and ethically sound research.
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