Artificial intelligence and electrocardiography: A modern approach to heart rate monitoring

Joseph Nnaemeka Chukwunweike, Samakinwa Michael, Martin Ifeanyi Mbamalu MNSE, Chinonso Emeh
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Abstract

The integration of Artificial Intelligence (AI) in Electrocardiography (ECG) and Photoplethysmography (PPG) signifies AI's profound influence on heart rate monitoring and analysis. ECG traditionally offers critical insights into cardiac health, necessitating expert interpretation. This study introduces an AI framework with Fast Fourier Transformation Analysis for swift, human-like interpretation of complex ECG signals. A multilayer AI Network accurately detects intricate features, enhancing ECG analysis precision. Leveraging comprehensive datasets, AI models proficiently identify heart dysfunctions like atrial fibrillation and hypertrophic cardiomyopathy, and can estimate age, sex, and race. The proliferation of mobile ECG technologies has spurred AI-based ECG phenotyping, impacting clinical and population health. This research explores AI's role in enhancing cardiac health assessment and clinical decision-making using MATLAB, acknowledging its transformative potential and inherent limitations.
人工智能与心电图:心率监测的现代方法
人工智能(AI)与心电图(ECG)和血压计(PPG)的结合标志着人工智能对心率监测和分析的深远影响。传统上,心电图可提供有关心脏健康的重要信息,需要专家进行解读。本研究采用快速傅立叶变换分析的人工智能框架,对复杂的心电图信号进行类似人类的快速解读。多层人工智能网络可准确检测复杂的特征,提高心电图分析的精确度。利用综合数据集,人工智能模型能熟练识别心房颤动和肥厚型心肌病等心脏功能障碍,并能估计年龄、性别和种族。移动心电图技术的普及促进了基于人工智能的心电图表型分析,对临床和人口健康产生了影响。本研究利用 MATLAB 探索人工智能在增强心脏健康评估和临床决策方面的作用,同时承认其变革潜力和固有局限性。
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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