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首页> 外文期刊>Journal of Engineering and Science in Medical Diagnostics and Therapy >Real-Time Bradycardia Prediction in Preterm Infants Using a Dynamic System Identification Approach
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Real-Time Bradycardia Prediction in Preterm Infants Using a Dynamic System Identification Approach

机译:实时心动过缓预测早产婴儿使用一个动态系统识别方法

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Chronic bradycardia, or slowing of heart rate, is common in preterm infants, and may often lead to neuropsychiatric disorders, developmental problems, and impaired cognitive functions in the long term. Therefore, early detection and treatment of bradycardia is important. To this end, we present a system identification-based approach to the prediction of bradycardia in preterm infants. This algorithm is based on the notion that the cardiovascular system can be treated as a dynamic system, and that under bradycardia, this system reacts abnormally due to temporal and spatial destabilization. This paper presents a proof-of-concept of the proposed methodology by testing its performance using electrocardiogram (ECG) data collected from ten preterm infants. We show that the proposed algorithm is correctly able to predict bradycardia occurrences (mean area under the receiver operating characteristic (ROC) curve=0.782 and variance=0.0039) while minimizing the training or burn-in period. The physical interpretation of the results using the system dynamics approach is discussed. The developed algorithm performs well on not only classifying normal to abnormal conditions, but also showing a trend of transition between the two conditions. Future work is also discussed to further improve the algorithm and implement the algorithm in the neonatal intensive care unit. Our proposed method is able to predict bradycardia using only ECG data with minimal training period and can be integrated into an automated system for bradycardia detection and treatment, and there-fore, reduce the risks related to bradycardia in preterm infants.
机译:慢性心动过缓或减缓心率,常见的早产儿,可能经常导致神经精神障碍,发展问题,和认知功能受损长期的。治疗心动过缓是很重要的。最后,我们提出一个系统识别心动过缓的预测方法早产儿。认为心血管系统作为一个动态系统,心动过缓,这个系统反应异常原因时间和空间不稳定。提出了一个概念验证的方法方法通过测试其性能心电图(ECG)数据收集到十个早产儿。算法能够正确预测心动过缓发生(平均面积接受者操作特征(中华民国)曲线= 0.782和方差= 0.0039)同时最小化培训或老化时期。使用该系统的解释结果动力学的方法进行了探讨。算法执行不仅分类正常不正常的条件,但也显示两个条件之间的过渡的趋势。未来的工作还讨论了进一步提高的算法和实现算法新生儿重症监护室。能够预测心动过缓只使用心电图培训期间,可以最小的数据集成到一个自动化的系统心动过缓检测和治疗因此,减少相关的风险在早产儿心动过缓。

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