Zan Xin, Wang Di, Song Changyue, Liu Feng, Xian Xiaochen, Berry Richard
Department of Industrial and Systems Engineering, The University of Iowa, IA, USA.
Department of Industrial Engineering and Management, School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
IEEE Trans Autom Sci Eng. 2025;22:15227-15240. doi: 10.1109/tase.2025.3566682. Epub 2025 May 12.
Sleep apnea, a prevalent sleep-related breathing disorder, often remains undiagnosed and untreated in a large patient population due to the need of extensive manual annotations on various physiological signals for clinical diagnosis. Despite the surge of interest in applying machine learning to automate apnea detection, the effectiveness of existing techniques highly relies on strongly supervised learning that requires massive finely labeled training data for sufficiently short time intervals - a requirement often unmet due to the prohibitively high cost of manual labeling in clinical practice. In this article, we incorporate clinical knowledge to establish a weakly supervised deep learning framework for automatically estimating the latent fine-grained apnea severity when only coarse-grained labels indicating apnea presence are available in the training data. Specifically, a novel knowledge-enhanced dual-granularity consistency loss, which simultaneously considers the consistency between coarse- and fine-granularity and the integration of clinical knowledge on apnea diagnosis, is designed to boost the model's learning of apnea severity at the fine granularity. A mathematical encoding of clinical knowledge is proposed to calibrate fine-grained estimation accuracy through ordinal alignment functions, which quantitatively relates the severity of apnea to the prominence of key diagnosis-informed physiological symptoms. The proposed method is able to accurately estimate fine-grained apnea severity in real time with significantly reduced labeling costs, extending the reach of sleep apnea diagnostics to larger population both in lab and at home. An experiment is conducted to demonstrate the superior estimation performance of the proposed method for monitoring apnea severity at high temporal resolution.
睡眠呼吸暂停是一种常见的与睡眠相关的呼吸障碍,由于临床诊断需要对各种生理信号进行大量人工标注,在大量患者群体中往往仍未得到诊断和治疗。尽管将机器学习应用于自动检测呼吸暂停的兴趣激增,但现有技术的有效性高度依赖于强监督学习,这种学习需要在足够短的时间间隔内有大量精细标注的训练数据——由于临床实践中人工标注成本过高,这一要求往往无法满足。在本文中,我们纳入临床知识,建立了一个弱监督深度学习框架,用于在训练数据中仅有表示呼吸暂停存在的粗粒度标签时,自动估计潜在的细粒度呼吸暂停严重程度。具体而言,设计了一种新颖的知识增强双粒度一致性损失,它同时考虑了粗粒度和细粒度之间的一致性以及呼吸暂停诊断的临床知识整合,以促进模型在细粒度上对呼吸暂停严重程度的学习。提出了一种临床知识的数学编码,通过序数对齐函数校准细粒度估计精度,该函数将呼吸暂停的严重程度与关键诊断信息生理症状的突出程度定量关联起来。所提出的方法能够以显著降低的标注成本实时准确估计细粒度呼吸暂停严重程度,将睡眠呼吸暂停诊断的范围扩展到实验室和家庭中的更多人群。进行了一项实验,以证明所提出的方法在高时间分辨率下监测呼吸暂停严重程度方面具有卓越的估计性能。