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基于算法的动脉采血识别可提高即时诊断的安全性。

Algorithm-based arterial blood sampling recognition increasing safety in point-of-care diagnostics.

作者信息

Peter Jörg, Klingert Wilfried, Klingert Kathrin, Thiel Karolin, Wulff Daniel, Königsrainer Alfred, Rosenstiel Wolfgang, Schenk Martin

机构信息

Jörg Peter, Wolfgang Rosenstiel, Department of Computer Engineering, University of Tübingen, 72076 Tübingen, Germany.

出版信息

World J Crit Care Med. 2017 Aug 4;6(3):172-178. doi: 10.5492/wjccm.v6.i3.172.

Abstract

AIM

To detect blood withdrawal for patients with arterial blood pressure monitoring to increase patient safety and provide better sample dating.

METHODS

Blood pressure information obtained from a patient monitor was fed as a real-time data stream to an experimental medical framework. This framework was connected to an analytical application which observes changes in systolic, diastolic and mean pressure to determine anomalies in the continuous data stream. Detection was based on an increased mean blood pressure caused by the closing of the withdrawal three-way tap and an absence of systolic and diastolic measurements during this manipulation. For evaluation of the proposed algorithm, measured data from animal studies in healthy pigs were used.

RESULTS

Using this novel approach for processing real-time measurement data of arterial pressure monitoring, the exact time of blood withdrawal could be successfully detected retrospectively and in real-time. The algorithm was able to detect 422 of 434 (97%) blood withdrawals for blood gas analysis in the retrospective analysis of 7 study trials. Additionally, 64 sampling events for other procedures like laboratory and activated clotting time analyses were detected. The proposed algorithm achieved a sensitivity of 0.97, a precision of 0.96 and an F1 score of 0.97.

CONCLUSION

Arterial blood pressure monitoring data can be used to perform an accurate identification of individual blood samplings in order to reduce sample mix-ups and thereby increase patient safety.

摘要

目的

检测动脉血压监测患者的采血情况,以提高患者安全性并提供更好的样本标注。

方法

从患者监护仪获取的血压信息作为实时数据流输入到一个实验性医学框架中。该框架连接到一个分析应用程序,该程序观察收缩压、舒张压和平均压的变化,以确定连续数据流中的异常情况。检测基于采血三通阀关闭导致平均血压升高以及在此操作过程中收缩压和舒张压测量值缺失。为评估所提出的算法,使用了健康猪动物研究的测量数据。

结果

使用这种处理动脉压监测实时测量数据的新方法,可以成功地回顾性和实时检测到采血的确切时间。在7项研究试验的回顾性分析中,该算法能够检测出434次血气分析采血中的422次(97%)。此外,还检测到64次用于实验室检查和活化凝血时间分析等其他程序的采样事件。所提出的算法灵敏度为0.97,精度为0.96,F1得分为0.97。

结论

动脉血压监测数据可用于准确识别个体采血情况,以减少样本混淆,从而提高患者安全性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ee21/5547431/84e79e3c6cef/WJCCM-6-172-g001.jpg

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