Cough is one of the most common symptoms in all respiratory diseases. In cases like Chronic Obstructive Pulmonary Disease, Asthma, acute and chronic Bronchitis and the recent pandemic Covid-19, the early identification of cough is important to provide healthcare professionals with useful clinical information such as frequency, severity, and nature of cough to enable better diagnosis. This paper presents and demonstrates best feature selection using MFCC which can help to determine cough events, eventually helping a neural network to learn and improve accuracy of cough detection. The paper proposes to achieve performance of 97.77% Sensitivity (SE), 98.75% Specificity (SP) and 98.17% F1-score with a very light binary classification network of size close to 16K parameters, enabling fitment into smart IoT devices.
翻译:咳嗽是所有呼吸道疾病最常见的症状之一,在慢性阻塞性肺病、阿斯马病、急性和慢性布鲁氏炎以及最近流行的Covid-19等病例中,早期确诊咳嗽对于向保健专业人员提供有用的临床信息非常重要,如咳嗽的频率、严重程度和性质,以便进行更好的诊断。本文介绍并展示了使用MFCC来帮助确定咳嗽事件的最佳特征选择,最终帮助神经网络学习并改进咳嗽检测的准确性。本文件提议实现97.77%的感应性(SE)、98.75%的特定性(SP)和98.17%的F1核心,其尺寸非常轻的二元分类网络接近16K参数,能够适应智能的IOT装置。