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Automatic Audio-Based Classification of Patient Inhaler Use: A Pharmacy Based Study

机译:基于音频的患者吸入器使用自动分类:基于药房的研究

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Chronic respiratory diseases may be controlled through the delivery of medication to the airways and lungs using an inhaler. However, adherence to correct inhaler technique is poor, which impedes patients from receiving maximum clinical benefit from their medication. In this study, the Inhaler Compliance Assessment device was employed to record audio of patients using a Diskus dry powder inhaler. An algorithm that classifies inhaler sounds (blister, inhalation, interference) was developed to automatically assess patient adherence from these inhaler audio recordings. The presented algorithm employed audio-based signal processing methods and statistical modeling in the form of quadratic discriminant analysis (QDA). A total of 350 audio recordings were obtained from 70 patients. The acquired audio dataset was split evenly for training and testing. A total accuracy of 85.35% was obtained (testing dataset) for this 3-class classification system. A sensitivity of 89.22% and 70% was obtained for inhalation and blister detection respectively. This approach may have significant clinical impact by providing healthcare professionals with an efficient, objective method of monitoring patient adherence to inhaler treatment.
机译:慢性呼吸系统疾病可以通过使用吸入器将药物输送到气道和肺进行控制。但是,对正确的吸入器技术的依从性差,这阻碍了患者从药物中获得最大的临床益处。在这项研究中,使用吸入器顺应性评估设备使用Diskus干粉吸入器记录患者的音频。开发了一种对吸入器声音(起泡,吸入,干扰)进行分类的算法,以从这些吸入器音频记录中自动评估患者的依从性。提出的算法采用了基于音频的信号处理方法,并以二次判别分析(QDA)的形式进行了统计建模。从70位患者中总共获得了350张录音。将获取的音频数据集平均分配以进行培训和测试。对于该三分类系统,获得的总准确度为85.35%(测试数据集)。吸入和水疱检测的灵敏度分别为89.22%和70%。通过为医疗保健专业人员提供一种有效,客观的方法来监视患者对吸入器治疗的依从性,此方法可能会产生重大的临床影响。

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