Department of Electrical and Systems Engineering, Washington University in St. Louis, St. Louis, MO 63130, USA.
Harvard Medical School, Harvard University, Cambridge, MA 02115, USA.
Sensors (Basel). 2022 Mar 10;22(6):2167. doi: 10.3390/s22062167.
Smart wearable sensors are essential for continuous health-monitoring applications and detection accuracy of symptoms and energy efficiency of processing algorithms are key challenges for such devices. While several machine-learning-based algorithms for the detection of abnormal breath sounds are reported in literature, they are either too computationally expensive to implement into a wearable device or inaccurate in multi-class detection. In this paper, a kernel-like minimum distance classifier (K-MDC) for acoustic signal processing in wearable devices was proposed. The proposed algorithm was tested with data acquired from open-source databases, participants, and hospitals. It was observed that the proposed K-MDC classifier achieves accurate detection in up to 91.23% of cases, and it reaches various detection accuracies with a fewer number of features compared with other classifiers. The proposed algorithm's low computational complexity and classification effectiveness translate to great potential for implementation in health-monitoring wearable devices.
智能可穿戴传感器对于连续健康监测应用至关重要,而症状检测准确性和处理算法的能量效率则是此类设备面临的关键挑战。尽管文献中已经报道了几种基于机器学习的异常呼吸音检测算法,但它们要么计算成本过高,无法在可穿戴设备中实现,要么在多类别检测中不够准确。本文提出了一种用于可穿戴设备中声学信号处理的核似然最小距离分类器(K-MDC)。该算法使用从开源数据库、参与者和医院采集的数据进行了测试。结果表明,所提出的 K-MDC 分类器在高达 91.23%的情况下实现了准确检测,与其他分类器相比,它使用较少的特征即可达到各种检测精度。该算法的低计算复杂度和分类效果为在健康监测可穿戴设备中的应用提供了巨大的潜力。