Wang Yixuan, Yang Kehaoyu, Xu Shaofeng, Rui Shuwang, Xie Jiaxing, Wang Juncheng, Wang Xin
Engineering Training Centre, Beihang University, Beijing, China.
School of Automation Science and Electrical Engineering, Beihang University, Beijing, China.
Front Bioeng Biotechnol. 2024 Sep 27;12:1477694. doi: 10.3389/fbioe.2024.1477694. eCollection 2024.
Cough is a common symptom of respiratory diseases, and prolonged monitoring of cough can help assist doctors in making judgments about patients' conditions, among which cough frequency is an indicator that characterizes the state of the patient's lungs. Therefore, the aim of this paper is to design an automatic cough counting system to monitor the number of coughs per minute for a long period of time.
In this paper, a complete cough counting process is proposed, including denoising, segment extraction, eigenvalue calculation, recognition, and counting process; and a wearable automatic cough counting device containing acquisition and reception software. The design and construction of the algorithm is based on realistically captured cough-containing audio from 50 patients, combined with short-time features, and Meier cepstrum coefficients as features characterizing the cough.
The accuracy, sensitivity, specificity, and F1 score of the method were 93.24%, 97.58%, 86.97%, and 94.47%, respectively, with a Kappa value of 0.9209, an average counting error of 0.46 counts for a 60-s speech segment, and an average runtime of 2.80 ± 2.27 s.
This method improves the double threshold method in terms of the threshold and eigenvalues of the cough segments' sensitivity and has better performance in terms of accuracy, real-time performance, and computing speed, which can be applied to real-time cough counting and monitoring in small portable devices with limited computing power. The developed wearable portable automatic cough counting device and the accompanying host computer software application can realize the long-term monitoring of patients' coughing condition.
咳嗽是呼吸系统疾病的常见症状,对咳嗽进行长时间监测有助于医生判断患者病情,其中咳嗽频率是表征患者肺部状态的一个指标。因此,本文旨在设计一种自动咳嗽计数系统,用于长时间监测每分钟的咳嗽次数。
本文提出了一个完整的咳嗽计数流程,包括去噪、片段提取、特征值计算、识别和计数过程;以及一个包含采集和接收软件的可穿戴式自动咳嗽计数设备。该算法的设计与构建基于从50名患者身上实际采集的含咳嗽音频,结合短时特征,并采用梅尔倒谱系数作为表征咳嗽的特征。
该方法的准确率、灵敏度、特异性和F1分数分别为93.24%、97.58%、86.97%和94.47%,Kappa值为0.9209,60秒语音片段的平均计数误差为0.46次,平均运行时间为2.80±2.27秒。
该方法在咳嗽片段灵敏度的阈值和特征值方面改进了双阈值方法,在准确性、实时性和计算速度方面具有更好的性能,可应用于计算能力有限的小型便携式设备中的实时咳嗽计数和监测。所开发的可穿戴式便携式自动咳嗽计数设备及配套的主机软件应用程序能够实现对患者咳嗽状况的长期监测。