Department of Electrical and Computer Engineering, University of Manitoba, Winnipeg, MB, Canada.
IEEE Trans Biomed Eng. 2011 Jun;58(6):1663-70. doi: 10.1109/TBME.2011.2109717. Epub 2011 Jan 31.
Tracheal sound average power is directly related to the breathing flow rate and recently it has attracted considerable attention for acoustical flow estimation. However, the flow-sound relationship is highly variable among people and it also changes for the same person at different flow rates. Hence, a robust model capable of estimating flow from tracheal sounds at different flow rates in a large group of individuals does not exist. In this paper, a model is proposed to estimate respiratory flow from tracheal sounds. The proposed model eliminates the dependence of the previous methods on calibrating the model for every individual and at different flow rates. To validate the model, it was applied to the respiratory sound and flow data of 93 healthy individuals. We investigated the statistical correlation between the model parameters and anthropometric features of the subjects. The results have shown that gender, height, and smoking are the most significant factors that affect the model parameters. Hence, we grouped nonsmoker subjects into four groups based on their gender and height. The average of model parameters in each group was defined as the group-calibrated model parameters. These models were applied to estimate flow from data of subjects within the same group and in the other groups. The results show that flow estimation error based on the group-calibrated model is less than 10%. The low estimation errors confirm the possibility of defining a general flow estimation model for subjects with similar anthropometric features with no need for calibrating the model parameters for every individual. This technique simplifies the acoustical flow estimation in general applications including sleep studies and patients' screening in health care facilities.
气管声音平均功率与呼吸流速直接相关,最近它在声学流速估计方面引起了相当大的关注。然而,流速与声音的关系在人与人之间差异很大,而且对于同一个人在不同流速下也会发生变化。因此,不存在能够在一大群人中不同流速下从气管声音估计流量的稳健模型。本文提出了一种从气管声音估计呼吸流量的模型。该模型消除了以前的方法对为每个人和不同流速校准模型的依赖性。为了验证模型,将其应用于 93 名健康个体的呼吸声音和流量数据。我们研究了模型参数与受试者人体测量特征之间的统计相关性。结果表明,性别、身高和吸烟是影响模型参数的最重要因素。因此,我们根据性别和身高将非吸烟者受试者分为四组。每组的模型参数平均值定义为组校准模型参数。将这些模型应用于同一组和其他组中受试者的数据来估计流量。结果表明,基于组校准模型的流量估计误差小于 10%。低估计误差证实了对于具有相似人体测量特征的受试者定义通用流量估计模型的可能性,而无需为每个人校准模型参数。这项技术简化了一般应用中的声学流量估计,包括睡眠研究和医疗保健设施中的患者筛查。