Cheng Zai Ru, Zhang Huiyu, Thomas Biju, Tan Yi Hua, Teoh Oon Hoe, Pugalenthi Arun
Department of Paediatrics, Respiratory Medicine Service, KK Women's and Children's Hospital, Singapore, Singapore.
School of Informatics & IT, Temasek Polytechnic, Singapore, Singapore.
J Med Eng Technol. 2022 Jan;46(1):78-84. doi: 10.1080/03091902.2021.1992520. Epub 2021 Nov 3.
Interpretation of breath sounds by auscultation has high inter-observer variability, even when performed by trained healthcare professionals. This can be mitigated by using Artificial Intelligence (AI) acoustic analysis. We aimed to develop and validate a novel breath sounds analysis system using AI-enabled algorithms to accurately interpret breath sounds in children. Subjects from the respiratory clinics and wards were auscultated by two independent respiratory paediatricians blinded to their clinical diagnosis. A novel device consisting of a stethoscope head connected to a smart phone recorded the breath sounds. The audio files were categorised into single label (normal, wheeze and crackles) or multi-label sounds. Together with commercially available breath sounds, an AI classifier was trained using machine learning. Unique features were identified to distinguish the breath sounds. Single label breath sound samples were used to validate the finalised Support Vector Machine classifier. Breath sound samples (73 single label, 20 multi-label) were collected from 93 children (mean age [SD] = 5.40 [4.07] years). Inter-rater concordance was observed in 81 (87.1%) samples. Performance of the classifier on the 73 single label breath sounds demonstrated 91% sensitivity and 95% specificity. The AI classifier developed could identify normal breath sounds, crackles and wheeze in children with high accuracy.
即使由训练有素的医疗保健专业人员进行听诊,通过听诊对呼吸音的解读也存在较高的观察者间差异。使用人工智能(AI)声学分析可以减轻这种差异。我们旨在开发并验证一种新颖的呼吸音分析系统,该系统使用人工智能算法准确解读儿童的呼吸音。来自呼吸科诊所和病房的受试者由两名对其临床诊断不知情的独立儿科呼吸科医生进行听诊。一种由连接到智能手机的听诊器头组成的新颖设备记录呼吸音。音频文件被分类为单标签(正常、哮鸣音和湿啰音)或多标签声音。与市售的呼吸音一起,使用机器学习训练了一个AI分类器。识别出独特的特征以区分呼吸音。单标签呼吸音样本用于验证最终确定的支持向量机分类器。从93名儿童(平均年龄[标准差]=5.40[4.07]岁)中收集了呼吸音样本(73个单标签,20个多标签)。在81个(87.1%)样本中观察到评分者间一致性。分类器对73个单标签呼吸音的表现显示出91%的敏感性和95%的特异性。所开发的AI分类器能够高精度地识别儿童的正常呼吸音、湿啰音和哮鸣音。