首页> 外文会议>Conference on Artificial Intelligence in Medicine >Rapid Detection of Heart Rate Fragmentation and Cardiac Arrhythmias: Cycle-by-Cycle rr Analysis, Supervised Machine Learning Model and Novel Insights
【24h】

Rapid Detection of Heart Rate Fragmentation and Cardiac Arrhythmias: Cycle-by-Cycle rr Analysis, Supervised Machine Learning Model and Novel Insights

机译:快速检测心率碎裂和心律失常:逐周期rr分析,有监督的机器学习模型和新颖的见解

获取原文

摘要

Heart rate dynamics are a macroscopic indicator of cardiac health. Sino-atrial degradation manifested as heart rate fragmentation (HRF) are analyzed using rr values (relative-RR intervals) derived from the inter-beat-intervals of ECGs. The rr-value is useful for the analysis of cycle-by-cycle variations such as HRF and arrhythmias. Three novel metrics developed in this work: CM20, Z3e20 and sPIP, along with two conventional metrics: SDNN and LFHF ratio are used for the detection of HRF and arrhythmias. The supervised machine learning technique of random forests is applied to develop the classification model. For this, we used a balanced dataset of 300 cases comprising of arrhythmic, non-arrhythmic coronary artery disease, and individuals without any medically significant cardiac conditions. The model was tested on 104 independent cases. The F1 score of the classifier is 91.1% without any adjustments for age, gender, prior medical conditions, etc. Insight into threshold values of heart rate dynamics for arrhythmic, heart rate fragmentation and normal cases are obtained from a single decision tree model.
机译:心率动态是心脏健康的宏观指标。使用心电信号心跳间隔的rr值(相对RR间隔)分析表现为心率碎裂(HRF)的中性房退化。 rr值可用于分析逐周期变化,例如HRF和心律不齐。在这项工作中开发的三个新颖指标:CM20,Z3e20和sPIP,以及两个常规指标:SDNN和LFHF比值用于检测HRF和心律不齐。应用随机森林的监督机器学习技术来开发分类模型。为此,我们使用了300例患者的平衡数据集,包括心律不齐,非心律不齐的冠状动脉疾病以及没有任何医学上显着心脏疾病的个体。该模型在104个独立案例中进行了测试。分类器的F1分数是91.1%,无需对年龄,性别,以前的医疗状况等进行任何调整。对于心律不齐,心律不全和正常病例的心律动态阈值的了解可从单个决策树模型获得。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号