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Estimation of inhalation flow profile using audio-based methods to assess inhaler medication adherence

机译:使用基于音频的方法评估吸入流的依从性以评估吸入流药物的依从性

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摘要

Asthma and chronic obstructive pulmonary disease (COPD) patients are required to inhale forcefully and deeply to receive medication when using a dry powder inhaler (DPI). There is a clinical need to objectively monitor the inhalation flow profile of DPIs in order to remotely monitor patient inhalation technique. Audio-based methods have been previously employed to accurately estimate flow parameters such as the peak inspiratory flow rate of inhalations, however, these methods required multiple calibration inhalation audio recordings. In this study, an audio-based method is presented that accurately estimates inhalation flow profile using only one calibration inhalation audio recording. Twenty healthy participants were asked to perform 15 inhalations through a placebo Ellipta™ DPI at a range of inspiratory flow rates. Inhalation flow signals were recorded using a pneumotachograph spirometer while inhalation audio signals were recorded simultaneously using the Inhaler Compliance Assessment device attached to the inhaler. The acoustic (amplitude) envelope was estimated from each inhalation audio signal. Using only one recording, linear and power law regression models were employed to determine which model best described the relationship between the inhalation acoustic envelope and flow signal. Each model was then employed to estimate the flow signals of the remaining 14 inhalation audio recordings. This process repeated until each of the 15 recordings were employed to calibrate single models while testing on the remaining 14 recordings. It was observed that power law models generated the highest average flow estimation accuracy across all participants (90.89±0.9% for power law models and 76.63±2.38% for linear models). The method also generated sufficient accuracy in estimating inhalation parameters such as peak inspiratory flow rate and inspiratory capacity within the presence of noise. Estimating inhaler inhalation flow profiles using audio based methods may be clinically beneficial for inhaler technique training and the remote monitoring of patient adherence.
机译:哮喘和慢性阻塞性肺疾病(COPD)患者在使用干粉吸入器(DPI)时需要强力深呼吸,以接受药物治疗。临床上需要客观地监测DPI的吸入流量曲线,以便远程监测患者的吸入技术。以前已经采用基于音频的方法来准确估计流量参数,例如吸气的峰值吸气流速,但是,这些方法需要多次校准吸气录音。在这项研究中,提出了一种基于音频的方法,该方法仅使用一个校准吸入音频记录即可准确估算吸入流量曲线。 20名健康参与者被要求通过安慰剂Ellipta™DPI以一定的吸气流速进行15次吸入。使用气动转速计肺活量计记录吸入流量信号,同时使用连接到吸入器的吸入器顺应性评估设备同时记录吸入音频信号。从每个吸入音频信号估计声学(幅度)包络。仅使用一个记录,采用线性和幂律回归模型来确定哪个模型最能描述吸入声波包络与流量信号之间的关系。然后,使用每个模型来估计其余14个吸入音频记录的流量信号。重复此过程,直到使用15个记录中的每个记录来校准单个模型,同时对其余14个记录进行测试。可以看出,幂律模型在所有参与者中产生了最高的平均流量估计精度(幂律模型为90.89±0.9%,线性模型为76.63±2.38%)。该方法还在估计存在噪声的情况下的吸气参数(例如吸气峰值流量和吸气能力)方面产生了足够的准确性。使用基于音频的方法估算吸入器的吸入流量分布图,对于吸入器技术培训和患者依从性的远程监控在临床上可能是有益的。

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