Australian Institute of Health Innovation, Macquarie University, Sydney, NSW 2109, Australia.
Australian Institute of Health Innovation, Macquarie University, Sydney, NSW 2109, Australia.
Int J Med Inform. 2023 Aug;176:105093. doi: 10.1016/j.ijmedinf.2023.105093. Epub 2023 May 18.
Acute respiratory diseases are a leading cause of morbidity and mortality in children. Cough is a common symptom of acute respiratory diseases and the sound of cough can be indicative of the respiratory disease. However, cough sound assessment in routine clinical practice is limited to human perception and the skills of the clinician. Objective cough sound evaluation has the potential to aid clinicians in acute respiratory disease diagnosis. In this systematic review, we assess and summarize the predictive ability of machine learning algorithms in analyzing cough sounds of acute respiratory diseases in the pediatric population.
Our systematic search of the Scopus, Medline, and Embase databases on 25 January 2023 identified six articles meeting the inclusion criteria. Quality assessment of the included studies was performed using the checklist for the assessment of medical artificial intelligence.
Our analysis shows variability in the input to the machine learning algorithms, such as the use of various cough sound features and combining cough sound features with clinical features. The use of the machine learning algorithms also varies from conventional algorithms, such as logistic regression and support vector machine, to deep learning techniques, such as convolutional neural networks. The classification accuracy for the detection of bronchiolitis, croup, pertussis, and pneumonia across five articles is in the range of 82-96%. However, a significant drop is observed in the detection accuracy for bronchiolitis and pneumonia in the remaining article.
The number of articles is limited but, in general, the predictive ability of cough sound classification algorithms in childhood acute respiratory diseases shows promise.
急性呼吸道疾病是导致儿童发病率和死亡率的主要原因。咳嗽是急性呼吸道疾病的常见症状,咳嗽声可提示呼吸道疾病。然而,常规临床实践中的咳嗽声评估仅限于人类感知和临床医生的技能。客观的咳嗽声评估有可能帮助临床医生诊断急性呼吸道疾病。在这项系统评价中,我们评估并总结了机器学习算法在分析儿科急性呼吸道疾病咳嗽声中的预测能力。
我们于 2023 年 1 月 25 日在 Scopus、Medline 和 Embase 数据库中进行了系统搜索,确定了符合纳入标准的六篇文章。使用评估医疗人工智能的清单对纳入研究进行质量评估。
我们的分析显示,机器学习算法的输入存在差异,例如使用各种咳嗽声特征以及将咳嗽声特征与临床特征相结合。机器学习算法的使用也从传统算法(如逻辑回归和支持向量机)到深度学习技术(如卷积神经网络)有所不同。五篇文章中对细支气管炎、哮吼、百日咳和肺炎的检测分类准确率在 82-96%之间。然而,在剩余的一篇文章中,对细支气管炎和肺炎的检测准确性显著下降。
文章数量有限,但总体而言,咳嗽声分类算法在儿童急性呼吸道疾病中的预测能力有一定前景。