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监督式机器学习算法在低血压事件实时预测中的应用

Supervised Machine-Learning Algorithms in Real-time Prediction of Hypotensive Events.

作者信息

Moghadam Mina Chookhachizadeh, Masoumi Ehsan, Bagherzadeh Nader, Ramsingh Davinder, Kain Zeev N

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:5468-5471. doi: 10.1109/EMBC44109.2020.9175451.

Abstract

Hypotension is common in critically ill patients. Early prediction of hypotensive events in the Intensive Care Units (ICUs) allows clinicians to pre-emptively treat the patient and avoid possible organ damage. In this study, we investigate the performance of various supervised machine-learning classification algorithms along with a real-time labeling technique to predict acute hypotensive events in the ICU. It is shown that logistic regression and SVM yield a better combination of specificity, sensitivity and positive predictive value (PPV). Logistic regression is able to predict 85% of events within 30 minutes of their onset with 81% PPV and 96% specificity, while SVM results in 96% specificity, 83% sensitivity and 82% PPV. To further reduce the false alarm rate, we propose a high-level decision-making algorithm that filters isolated false positives identified by the machine-learning algorithms. By implementing this technique, 24% of the false alarms are filtered. This saves 21 hours of medical staff time through 2,560 hours of monitoring and significantly reduces the disturbance caused by alarming monitors.

摘要

低血压在重症患者中很常见。重症监护病房(ICU)中低血压事件的早期预测可让临床医生对患者进行预防性治疗,并避免可能的器官损伤。在本研究中,我们研究了各种监督式机器学习分类算法以及实时标记技术在预测ICU急性低血压事件方面的性能。结果表明,逻辑回归和支持向量机在特异性、敏感性和阳性预测值(PPV)方面有更好的组合。逻辑回归能够在事件发生后30分钟内预测85%的事件,PPV为81%,特异性为96%,而支持向量机的特异性为96%,敏感性为83%,PPV为82%。为了进一步降低误报率,我们提出了一种高级决策算法,该算法可过滤机器学习算法识别出的孤立误报。通过实施该技术,24%的误报被过滤掉。通过2560小时的监测,这节省了医护人员21小时的时间,并显著减少了警报监护仪造成的干扰。

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