From the Department of Anesthesiology, University of Florida College of Medicine, Gainesville, Florida.
Convergent Engineering, Newberry, Florida.
Anesth Analg. 2018 Mar;126(3):913-919. doi: 10.1213/ANE.0000000000002532.
The goal of this study was to determine a set of timing, shape, and statistical features available through noninvasive monitoring of maternal electrocardiogram and photoplethysmography that identifies preeclamptic patients.
Pregnant women admitted to Labor and Delivery were monitored with pulse oximetry and electrocardiogram for 30 minutes. Photoplethysmogram features and heart rate variability were extracted from each data set and applied to a sequential feature selection algorithm to discriminate women with preeclampsia with severe features, from normotensive and hypertensive controls. The classification boundary was chosen to minimize the expected misclassification cost. The prior probabilities of the misclassification costs were assumed to be equal.
Thirty-seven patients with clinically diagnosed preeclampsia with severe features were compared with 43 normotensive controls; all were in early labor or beginning induction. Six variables were used in the final model. The area under the receiver operating characteristic curve was 0.907 (standard error [SE] = 0.004) (sensitivity 78.2% [SE = 0.3%], specificity 89.9% [SE = 0.1%]) with a positive predictive value of 0.883 (SE = 0.001). Twenty-eight subjects with chronic or gestational hypertension were compared with the same preeclampsia group, generating a model with 5 features with an area under the curve of 0.795 (SE = 0.007; sensitivity 79.0% [SE = 0.2%], specificity 68.7% [SE = 0.4%]), and a positive predictive value of 0.799 (SE = 0.002).
Vascular parameters, as assessed noninvasively by photoplethysmography and heart rate variability, may have a role in screening women suspected of having preeclampsia, particularly in areas with limited resources.
本研究旨在确定一组通过非侵入性监测母亲心电图和光体积描记术获得的时间、形状和统计特征,以识别子痫前期患者。
将入院待产的孕妇用脉搏血氧仪和心电图监测 30 分钟。从每个数据集提取光体积描记图特征和心率变异性,并将其应用于顺序特征选择算法,以区分具有严重特征的子痫前期妇女与正常血压和高血压对照组。分类边界的选择是为了最小化预期的错误分类成本。假设错误分类成本的先验概率相等。
将 37 例临床诊断为严重特征的子痫前期患者与 43 例正常血压对照组进行比较;所有患者均处于早期分娩或开始引产。最终模型使用了 6 个变量。受试者工作特征曲线下面积为 0.907(标准误 [SE] = 0.004)(敏感性 78.2%[SE = 0.3%],特异性 89.9%[SE = 0.1%]),阳性预测值为 0.883(SE = 0.001)。将 28 例慢性或妊娠期高血压患者与同一子痫前期组进行比较,生成一个具有 5 个特征的模型,曲线下面积为 0.795(SE = 0.007;敏感性 79.0%[SE = 0.2%],特异性 68.7%[SE = 0.4%]),阳性预测值为 0.799(SE = 0.002)。
通过光体积描记术和心率变异性非侵入性评估的血管参数可能在筛查疑似子痫前期的女性中发挥作用,特别是在资源有限的地区。