Ishida Kai, Fujii Kiyotaka
Faculty of Engineering, Shonan Institute of Technology, Fujisawa, JPN.
School of Allied Health Sciences, Kitasato University, Minato, JPN.
Cureus. 2025 Apr 18;17(4):e82488. doi: 10.7759/cureus.82488. eCollection 2025 Apr.
Introduction Auditory alarms in clinical settings signal sudden changes in a patient's condition and failures in medical equipment. However, distinguishing between simultaneously sounding alarms, particularly when superimposed with various ambient sounds, remains challenging. This study aimed to develop a machine learning (ML) model for identifying auditory alarms issued by medical equipment. Methods We targeted old and new auditory alarms for medical equipment as specified in the International Electrotechnical Commission (IEC) 60601-1-8 standard. First, we evaluated the characteristics of both normal and degraded auditory alarms using cosine similarity among old and new alarms. Next, we evaluated the accuracy of ML-based identification of deteriorated alarm sound sources in both the old and new alarm groups. Results The cosine similarity among old alarms was over 0.99, while new alarms ranged from 0.886 to 0.985, and exhibited more distinct characteristics. When noise was superimposed, the similarity among old alarms increased further, making differentiation more difficult. In contrast, for most new alarms, cosine similarity values exceeded 0.99 but retained slight acoustic differences even after noise-induced degradation, demonstrating improved distinguishability. The accuracy for identifying a single degraded alarm sound was 71.9% for the support vector machine. The models exhibited a high number of misclassifications when identifying the old alarms. Conversely, the models achieved higher accuracy when classifying new alarms, with recall exceeding 80%, precision above 70%, and F-measure greater than 80% for all new alarms. The identification accuracies for two simultaneous alarms were under 20% and approximately 50% for old and new alarms, respectively. The accuracy declined when estimating two simultaneous new alarms; however, when at least one of the two alarms was correctly classified, the accuracy exceeded 90%. Conclusions This study evaluated the characteristics of old and new auditory alarms issued by medical equipment as specified in IEC 60601-1-8 and constructed ML models for identifying the type of alarms.
引言 在临床环境中,听觉警报用于提示患者病情的突然变化以及医疗设备故障。然而,区分同时响起的警报,尤其是当与各种环境声音叠加时,仍然具有挑战性。本研究旨在开发一种机器学习(ML)模型,用于识别医疗设备发出的听觉警报。方法 我们以国际电工委员会(IEC)60601-1-8标准中规定的医疗设备新旧听觉警报为目标。首先,我们使用新旧警报之间的余弦相似度评估正常和降级听觉警报的特征。接下来,我们评估了基于ML的新旧警报组中降级警报声源识别的准确性。结果 旧警报之间的余弦相似度超过0.99,而新警报的余弦相似度在0.886至0.985之间,并且表现出更明显的特征。当叠加噪声时,旧警报之间的相似度进一步增加,使得区分更加困难。相比之下,对于大多数新警报,余弦相似度值超过0.99,但即使在噪声导致降级后仍保留轻微的声学差异,表明可区分性有所提高。支持向量机识别单个降级警报声音的准确率为71.9%。在识别旧警报时,模型出现了大量错误分类。相反,在对新警报进行分类时,模型实现了更高的准确率,召回率超过80%,精确率高于70%,所有新警报的F值大于80%。对于两个同时响起的警报,旧警报和新警报的识别准确率分别低于20%和约50%。在估计两个同时响起的新警报时,准确率下降;然而,当两个警报中至少有一个被正确分类时,准确率超过90%。结论 本研究评估了IEC 60601-1-8中规定的医疗设备新旧听觉警报的特征,并构建了用于识别警报类型的ML模型。