Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:4996-4999. doi: 10.1109/EMBC48229.2022.9871449.
Neonatal respiratory distress is a common condition that if left untreated, can lead to short- and long-term complications. This paper investigates the usage of digital stethoscope recorded chest sounds taken within 1 min post-delivery, to enable early detection and prediction of neonatal respiratory distress. Fifty-one term newborns were included in this study, 9 of whom developed respiratory distress. For each newborn, 1 min anterior and posterior recordings were taken. These recordings were pre-processed to remove noisy segments and obtain high-quality heart and lung sounds. The random undersampling boosting (RUSBoost) classifier was then trained on a variety of features, such as power and vital sign features extracted from the heart and lung sounds. The RUSBoost algorithm produced specificity, sensitivity, and accuracy results of 85.0%, 66.7% and 81.8%, respectively. Clinical relevance--- This paper investigates the feasibility of digital stethoscope recorded chest sounds for early detection of respiratory distress in term newborn babies, to enable timely treatment and management.
新生儿呼吸窘迫是一种常见病症,如果不加以治疗,可能会导致短期和长期并发症。本文研究了使用数字听诊器记录分娩后 1 分钟内的胸部声音,以实现新生儿呼吸窘迫的早期检测和预测。本研究纳入了 51 名足月新生儿,其中 9 名新生儿出现呼吸窘迫。对每个新生儿进行 1 分钟前和后记录。这些记录经过预处理,以去除嘈杂的片段,并获得高质量的心和肺声音。随机欠采样提升(RUSBoost)分类器然后在各种特征上进行训练,例如从心和肺声音中提取的功率和生命体征特征。RUSBoost 算法产生的特异性、敏感性和准确性结果分别为 85.0%、66.7%和 81.8%。临床相关性——本文研究了数字听诊器记录的胸部声音用于早期检测足月新生儿呼吸窘迫的可行性,以实现及时的治疗和管理。