Park Marn Joon, Choi Ji Ho, Kim Shin Young, Ha Tae Kyoung
Department of Otorhinolaryngology-Head and Neck Surgery, Inha University Hospital, Inha University School of Medicine, Incheon, Republic of Korea.
Department of Otorhinolaryngology-Head and Neck Surgery, Soonchunhyang University College of Medicine, Bucheon Hospital, Bucheon, Republic of Korea.
Digit Health. 2024 Oct 17;10:20552076241291707. doi: 10.1177/20552076241291707. eCollection 2024 Jan-Dec.
Polysomnography (PSG) is unique in diagnosing sleep disorders, notably obstructive sleep apnea (OSA). Despite its advantages, manual PSG data grading is time-consuming and laborious. Thus, this research evaluated a deep learning-based automated scoring system for respiratory events in sleep-disordered breathing patients.
A total of 1000 case PSG data were enrolled to develop a deep learning algorithm. Of the 1000 data, 700 were distributed for training, 200 for validation, and 100 for testing. The respiratory events scoring deep learning model is composed of five sequential layers: an initial layer of perceptrons, followed by three consecutive layers of long short-term memory cells, and ultimately, an additional two layers of perceptrons.
The PSG data of 100 patients (simple snoring, mild, moderate, and severe OSA; n = 25 in each group) were selected for validation and testing of the deep learning model. The algorithm demonstrated high sensitivity (95% CI: 98.06-98.51) and specificity (95% CI: 95.46-97.79) across all OSA severities in detecting apnea/hypopnea events, compared to manual PSG analysis. The deep learning model's area under the curve values for predicting OSA in apnea-hypopnea index ≥ 5, 15, and 30 groups were 0.9402, 0.9388, and 0.9442, respectively, showing no significant differences between each group.
The deep learning algorithm employed in our study showed high accuracy in identifying apnea/hypopnea episodes and assessing the severity of OSA, suggesting the potential for enhancing both the efficiency and accuracy of automated respiratory event scoring in PSG through advanced deep learning techniques.
多导睡眠图(PSG)在诊断睡眠障碍,尤其是阻塞性睡眠呼吸暂停(OSA)方面具有独特性。尽管具有优势,但手动进行PSG数据评分既耗时又费力。因此,本研究评估了一种基于深度学习的睡眠呼吸障碍患者呼吸事件自动评分系统。
共纳入1000例PSG数据用于开发深度学习算法。在这1000例数据中,700例用于训练,200例用于验证,100例用于测试。呼吸事件评分深度学习模型由五个连续层组成:初始的感知器层,随后是三个连续的长短期记忆细胞层,最后是另外两个感知器层。
选择100例患者(单纯打鼾、轻度、中度和重度OSA;每组n = 25)的PSG数据用于深度学习模型验证和测试。与手动PSG分析相比,该算法在检测所有OSA严重程度的呼吸暂停/低通气事件时均表现出高灵敏度(95%CI:98.06 - 98.51)和特异性(95%CI:95.46 - 97.79)。深度学习模型在呼吸暂停低通气指数≥5、15和30组中预测OSA的曲线下面积值分别为0.9402、0.9388和0.9442,各组之间无显著差异。
我们研究中采用的深度学习算法在识别呼吸暂停/低通气发作和评估OSA严重程度方面显示出高精度,表明通过先进的深度学习技术有提高PSG中自动呼吸事件评分的效率和准确性的潜力。