Obstructive Sleep Apnea (OSA) is a highly prevalent but inconspicuous disease that seriously jeopardizes the health of human beings. Polysomnography (PSG), the gold standard of detecting OSA, requires multiple specialized sensors for signal collection, hence patients have to physically visit hospitals and bear the costly treatment for a single detection. Recently, many single-sensor alternatives have been proposed to improve the cost efficiency and convenience. Among these methods, solutions based on RR-interval (i.e., the interval between two consecutive pulses) signals reach a satisfactory balance among comfort, portability and detection accuracy. In this paper, we advance RR-interval based OSA detection by considering its real-world practicality from energy perspectives. As photoplethysmogram (PPG) pulse sensors are commonly equipped on smart wrist-worn wearable devices (e.g., smart watches and wristbands), the energy efficiency of the detection model is crucial to fully support an overnight observation on patients. This creates challenges as the PPG sensors are unable to keep collecting continuous signals due to the limited battery capacity on smart wrist-worn devices. Therefore, we propose a novel Frequency Extraction Network (FENet), which can extract features from different frequency bands of the input RR-interval signals and generate continuous detection results with downsampled, discontinuous RR-interval signals. With the help of the one-to-multiple structure, FENet requires only one-third of the operation time of the PPG sensor, thus sharply cutting down the energy consumption and enabling overnight diagnosis. Experimental results on real OSA datasets reveal the state-of-the-art performance of FENet.
翻译:在这种方法中,基于 RR- interval (即连续两次脉冲之间的间隔) 信号的解决方案在舒适度、可移动性和检测准确性之间达到令人满意的平衡。在本文件中,我们推进基于 RR- interval 的 OSA 检测,从能源角度考虑其真实世界的实用性,从而推进基于 RR- interval 的运行。由于光谱扫描仪(PPG) 的脉冲传感器通常安装在智能手腕- 磨损装置上(例如智能手表和腕带),检测模型的能效对于支持对病人进行夜间观察至关重要。这造成了挑战,因为PPPG 传感器无法持续地接收信号,因为智能的Order- Roadal-Oral-Oral-Oral-Oral-Oral