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首页> 外文期刊>BMC Anesthesiology >The application of a neural network to predict hypotension and vasopressor requirements non-invasively in obstetric patients having spinal anesthesia for elective cesarean section (C/S)
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The application of a neural network to predict hypotension and vasopressor requirements non-invasively in obstetric patients having spinal anesthesia for elective cesarean section (C/S)

机译:神经网络在具有脊髓麻醉的产科患者中预测低血压和血管加压率要求的应用脊髓间剖宫产(C / S)

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摘要

Neural networks are increasingly used to assess physiological processes or pathologies, as well as to predict the increased likelihood of an impending medical crisis, such as hypotension. We compared the capabilities of a single hidden layer neural network of 12 nodes to those of a discrete-feature discrimination approach with the goal being to predict the likelihood of a given patient developing significant hypotension under spinal anesthesia when undergoing a Cesarean section (C/S). Physiological input information was derived from a non-invasive blood pressure device (Caretaker [CT]) that utilizes a finger cuff to measure blood pressure and other hemodynamic parameters via pulse contour analysis. Receiver-operator-curve/area-under-curve analyses were used to compare performance. The results presented here suggest that a neural network approach (Area Under Curve [AUC]?=?0.89 [p??0.001]), at least at the implementation level of a clinically relevant prediction algorithm, may be superior to a discrete feature quantification approach (AUC?=?0.87 [p??0.001]), providing implicit access to a plurality of features and combinations thereof. In addition, the expansion of the approach to include the submission of other physiological data signals, such as heart rate variability, to the network can be readily envisioned. This pilot study has demonstrated that increased coherence in Arterial Stiffness (AS) variability obtained from the pulse wave analysis of a continuous non-invasive blood pressure device appears to be an effective predictor of hypotension after spinal anesthesia in the obstetrics population undergoing C/S. This allowed us to predict specific dosing thresholds of phenylephrine required to maintain systolic blood pressure above 90?mmHg.
机译:神经网络越来越多地用于评估生理过程或病理,以及预测即将发生的医疗危机的可能性增加,例如低血压。我们将12个节点的单个隐藏层神经网络的能力与离散特征辨别方法的能力进行了比较,目标是预测给定患者在经历剖宫部的脊髓麻醉下发育显着的低血压的可能性(C / S. )。生理输入信息来自非侵入性血压装置(看护剂[CT]),其利用手指袖带通过脉冲轮廓分析测量血压和其他血液动力学参数。接收器 - 操作员曲线/区域曲线分析用于比较性能。此处提出的结果表明,一种神经网络方法(曲线下的区域[AUC]?=Δ= 0.89 [p?<0.001]),至少在临床相关预测算法的实施水平,可以优于分立特征定量方法(AUC?=?0.87 [P?<0.001]),提供对多个特征及其组合的隐性访问。另外,可以容易地设想将方法的扩展包括提交给网络的其他生理数据信号,例如心率变异性。该试验研究表明,从连续无侵入性血压装置的脉搏波分析中获得的动脉刚度(AS)变异性增加,似乎是脊髓麻醉在经过C / S的产科群体中的低血压的有效预测因子。这使我们可以预测维持90μmHg以上的收缩压所需的特定给药的特定剂量阈值。

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