基于心率和血压时间序列的重症监护低血压发作预测器。

Computing in cardiology Pub Date : 2011-03-22
J Lee, Rg Mark
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引用次数: 0

摘要

在重症监护室(ICU),及时对低血压发作进行治疗干预是一项关键任务。可以前瞻性地识别未来几个小时内有发生HE风险的患者的预先警报将具有相当大的临床价值。在这项研究中,我们基于MIMIC II数据库中的心率和血压时间序列开发了一种自动化的人工神经网络HE预测器。预测时间和30分钟目标窗口开始之间的间隔从1到4小时不等。预测时间之前的30分钟观察窗口向预测器提供输入信息。在独立评估个体间隙大小的同时,还研究了基于不同间隙大小的加权后验概率。结果表明,预测性能随着间隙大小的增加而下降,加权方案的性能改进可以忽略不计。尽管阳性预测值较低,ROC曲线下的最佳平均面积为0.934。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hypotensive Episode Predictor for Intensive Care based on Heart Rate and Blood Pressure Time Series.

In the intensive care unit (ICU), prompt therapeutic intervention to hypotensive episodes (HEs) is a critical task. Advance alerts that can prospectively identify patients at risk of developing an HE in the next few hours would be of considerable clinical value. In this study, we developed an automated, artificial neural network HE predictor based on heart rate and blood pressure time series from the MIMIC II database. The gap between prediction time and the onset of the 30-minute target window was varied from 1 to 4 hours. A 30-minute observation window preceding the prediction time provided input information to the predictor. While individual gap sizes were evaluated independently, weighted posterior probabilities based on different gap sizes were also investigated. The results showed that prediction performance degraded as gap size increased and the weighting scheme induced negligible performance improvement. Despite low positive predictive values, the best mean area under ROC curve was 0.934.

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