Predictive machine learning algorithm for COPD exacerbations using a digital inhaler with integrated sensors.

IF 3.6 3区 医学 Q1 RESPIRATORY SYSTEM
Laurie D Snyder, Michael DePietro, Michael Reich, Megan L Neely, Njira Lugogo, Roy Pleasants, Thomas Li, Lena Granovsky, Randall Brown, Guilherme Safioti
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Abstract

Purpose: By using data obtained with digital inhalers, machine learning models have the potential to detect early signs of deterioration and predict impending exacerbations of chronic obstructive pulmonary disease (COPD) for individual patients. This analysis aimed to determine if a machine learning algorithm capable of predicting impending exacerbations could be developed using data from an integrated digital inhaler.

Patients and methods: A 12-week, open-label clinical study enrolled patients (≥40 years old) with COPD to use ProAir Digihaler, a digital dry powder inhaler with integrated sensors, to deliver their reliever medication (albuterol, 90 µg/dose; 1-2 inhalations every 4 hours, as needed). The Digihaler recorded inhaler use through timestamps, peak inspiratory flow (PIF), inhalation volume, inhalation duration, and time to PIF throughout the study. By applying machine learning methodology to data downloaded from the inhalers after study completion, along with clinical and demographic information, a model predictive of impending exacerbations was generated.

Results: The predictive analysis included 336 patients, 98 of whom experienced a total of 111 exacerbations. PIF and inhalation volume were observed to decline in the days preceding an exacerbation. Using gradient-boosting trees with data from the Digihaler and baseline patient characteristics, the machine learning model was able to predict an exacerbation over the following 5 days with a receiver operating characteristic area under curve of 0.77 (95% CI: 0.71-0.83). Features of the model with the highest weight were baseline inhalation parameters and changes in inhalation parameters before an exacerbation compared with baseline.

Conclusion: We demonstrated the development of a proof-of-concept machine learning model predictive of impending COPD exacerbations using data from the integrated digital reliever inhaler. This approach may potentially support patient monitoring, help improve disease management, and enable pre-emptive interventions to minimise exacerbations.

Clinical trial registration number: NCT03256695.

使用集成传感器的数字吸入器预测COPD恶化的机器学习算法。
目的:通过使用数字吸入器获得的数据,机器学习模型有可能检测到恶化的早期迹象,并预测个体患者慢性阻塞性肺疾病(COPD)即将加重。该分析旨在确定是否可以使用集成数字吸入器的数据开发能够预测即将发生的恶化的机器学习算法。患者和方法:一项为期12周的开放标签临床研究招募了COPD患者(≥40岁),使用ProAir Digihaler,一种集成传感器的数字干粉吸入器,给他们提供缓解药物(沙丁胺醇,90µg/剂量;根据需要,每4小时吸入1-2次)。Digihaler通过时间戳、吸气峰值流量(PIF)、吸入量、吸入持续时间和整个研究中到达PIF的时间记录了吸入器的使用情况。通过将机器学习方法应用于研究完成后从吸入器下载的数据,以及临床和人口统计信息,生成了一个预测即将发生的恶化的模型。结果:预测分析包括336例患者,其中98例共经历111次恶化。观察到PIF和吸入量在加重前几天下降。使用来自Digihaler的数据和基线患者特征的梯度增强树,机器学习模型能够预测接下来5天的恶化,受试者工作特征曲线下面积为0.77 (95% CI: 0.71-0.83)。体重最高的模型的特征是基线吸入参数和与基线相比加重前吸入参数的变化。结论:我们展示了一种概念验证机器学习模型的发展,该模型使用集成数字缓解吸入器的数据预测即将发生的COPD恶化。这种方法可能潜在地支持患者监测,帮助改善疾病管理,并使先发制人的干预措施最小化恶化。临床试验注册号:NCT03256695。
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来源期刊
BMJ Open Respiratory Research
BMJ Open Respiratory Research RESPIRATORY SYSTEM-
CiteScore
6.60
自引率
2.40%
发文量
95
审稿时长
12 weeks
期刊介绍: BMJ Open Respiratory Research is a peer-reviewed, open access journal publishing respiratory and critical care medicine. It is the sister journal to Thorax and co-owned by the British Thoracic Society and BMJ. The journal focuses on robustness of methodology and scientific rigour with less emphasis on novelty or perceived impact. BMJ Open Respiratory Research operates a rapid review process, with continuous publication online, ensuring timely, up-to-date research is available worldwide. The journal publishes review articles and all research study types: Basic science including laboratory based experiments and animal models, Pilot studies or proof of concept, Observational studies, Study protocols, Registries, Clinical trials from phase I to multicentre randomised clinical trials, Systematic reviews and meta-analyses.
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