False alarm detection in intensive care unit for monitoring arrhythmia condition using bio-signals

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Aleena Swetapadma, Tishya Manna, Maryam Samami
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引用次数: 0

Abstract

Purpose

A novel method has been proposed to reduce the false alarm rate of arrhythmia patients regarding life-threatening conditions in the intensive care unit. In this purpose, the atrial blood pressure, photoplethysmogram (PLETH), electrocardiogram (ECG) and respiratory (RESP) signals are considered as input signals.

Design/methodology/approach

Three machine learning approaches feed-forward artificial neural network (ANN), ensemble learning method and k-nearest neighbors searching methods are used to detect the false alarm. The proposed method has been implemented using Arduino and MATLAB/SIMULINK for real-time ICU-arrhythmia patients' monitoring data.

Findings

The proposed method detects the false alarm with an accuracy of 99.4 per cent during asystole, 100 per cent during ventricular flutter, 98.5 per cent during ventricular tachycardia, 99.6 per cent during bradycardia and 100 per cent during tachycardia. The proposed framework is adaptive in many scenarios, easy to implement, computationally friendly and highly accurate and robust with overfitting issue.

Originality/value

As ECG signals consisting with PQRST wave, any deviation from the normal pattern may signify some alarming conditions. These deviations can be utilized as input to classifiers for the detection of false alarms; hence, there is no need for other feature extraction techniques. Feed-forward ANN with the Lavenberg–Marquardt algorithm has shown higher rate of convergence than other neural network algorithms which helps provide better accuracy with no overfitting.

利用生物信号监测重症监护室心律失常状况的误报检测
目的 为降低重症监护室中心律失常患者在危及生命的情况下的误报率,提出了一种新方法。设计/方法/途径使用了三种机器学习方法:前馈人工神经网络(ANN)、集合学习法和 k 近邻搜索法来检测误报。使用 Arduino 和 MATLAB/SIMULINK 对 ICU 心律失常患者的实时监测数据实施了所提出的方法。研究结果所提出的方法检测误报的准确率为:心搏骤停 99.4%、心室扑动 100%、室性心动过速 98.5%、心动过缓 99.6%、心动过速 100%。由于心电信号由 PQRST 波组成,任何与正常模式的偏差都可能意味着一些警报情况。这些偏差可作为分类器的输入,用于检测误报,因此无需其他特征提取技术。与其他神经网络算法相比,采用 Lavenberg-Marquardt 算法的前馈神经网络显示出更高的收敛速度,这有助于提供更好的准确性,同时不会出现过度拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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