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Automated prediction of the apnea-hypopnea index using a wireless patch sensor

机译:使用无线贴片传感器自动预测呼吸暂停低通气指数

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Polysomnography (PSG) is the gold standard that manually quantifies the apnea-hypopnea index (AHI) to assess the severity of sleep apnea syndrome (SAS). This study presents an algorithm that automatically estimates the AHI value using a disposable HealthPatch sensor. Volunteers (n=53, AHI: 0.1–85.8) participated in an overnight PSG study with patch sensors attached to their chest at three specified locations and data were wirelessly acquired. Features were computed for 150-second epochs of patch sensor data using analyses of heart rate variability, respiratory signals, posture and movements. Linear Support Vector Machine classifier was trained to detect the presence/absence of apnea/hypopnea events for each epoch. The number of epochs identified with events was subsequently mapped to AHI values using quadratic regression analysis. The classifier and regression models were optimized to minimize the mean-square error of AHI based on leave-one-out cross-validation. Comparison of predicted and reference AHI values resulted in linear correlation coefficients of 0.87, 0.88 and 0.92 for the three locations, respectively. The predicted AHI values were subsequently used to classify the control-to-mild apnea group (AHI<15) and moderate-to-severe apnea (AHI≥15) with an accuracy (95% confidence intervals) of 89.4% (77.4–95.4%), 85.0% (70.9–92.9%), and 82.9% (67.3–91.9%) for the three locations, respectively. Overnight physiological monitoring using a wireless patch sensor provides an accurate estimate of AHI.
机译:多导睡眠图(PSG)是手动量化呼吸暂停低通气指数(AHI)来评估睡眠呼吸暂停综合症(SAS)严重程度的金标准。这项研究提出了一种使用一次性HealthPatch传感器自动估算AHI值的算法。志愿者(n = 53,AHI:0.1-85.8)参加了一项为期一夜的PSG研究,在他们的三个指定位置将贴片传感器连接到他们的胸部,并无线获取数据。通过对心率变异性,呼吸信号,姿势和运动进行分析,针对150秒钟的贴片传感器数据计算特征。训练了线性支持向量机分类器,以检测每个时期是否存在呼吸暂停/呼吸不足事件。随后使用二次回归分析将事件识别的时期数映射到AHI值。基于留一法交叉验证,对分类器和回归模型进行了优化,以最小化AHI的均方误差。比较预测的AHI值和参考AHI值,三个位置的线性相关系数分别为0.87、0.88和0.92。预测的AHI值随后被用于对控制性至轻度呼吸暂停组(AHI <15)和中度至重度呼吸暂停组(AHI≥15)进行分类,准确度(95%置信区间)为89.4%(77.4–95.4) %),三个地点分别为85.0%(70.9–92.9%)和82.9%(67.3–91.9%)。使用无线贴片传感器进行的夜间生理监测可提供对AHI的准确估算。

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