Department of Mechanical, Mechatronics and Manufacturing Engineering, University of Engineering and Technology Lahore, Faisalabad, Pakistan.
Department of Information Technology, Lappeenranta University of Technology, Lappeenranta, Finland.
Comput Biol Med. 2023 Mar;154:106583. doi: 10.1016/j.compbiomed.2023.106583. Epub 2023 Jan 24.
During the COVID-19 pandemic, there is a global demand for intelligent health surveillance and diagnosis systems for patients with critical conditions, particularly those with severe heart diseases. Sophisticated measurement tools are used in hospitals worldwide to identify serious heart conditions. However, these tools need the face-to-face involvement of healthcare experts to identify cardiac problems.
To design and implement an intelligent health monitoring and diagnosis system for critical cardiac arrhythmia COVID-19 patients.
We use artificial intelligence tools divided into two parts: (i) IoT-based health monitoring; and (ii) fuzzy logic-based medical diagnosis. The intelligent diagnosis of heart conditions and IoT-based health surveillance by doctors is offered to critical COVID-19 patients or isolated in remote locations. Sensors, cloud storage, as well as a global system for mobile texts and emails for communication with doctors in case of emergency are employed in our proposal.
Our implemented system favors remote areas and isolated critical patients. This system utilizes an intelligent algorithm that employs an ECG signal pre-processed by moving through six digital filters. Then, based on the processed results, features are computed and assessed. The intelligent fuzzy system can make an autonomous diagnosis and has enough information to avoid human intervention. The algorithm is trained using ECG data from the MIT-BIH database and achieves high accuracy. In real-time validation, the fuzzy algorithm obtained almost 100% accuracy for all experiments.
Our intelligent system can be helpful in many situations, but it is particularly beneficial for isolated COVID-19 patients who have critical heart arrhythmia and must receive intensive care.
在 COVID-19 大流行期间,全球对智能健康监测和诊断系统存在需求,尤其是针对重症患者,如患有严重心脏病的患者。全球医院都使用精密的测量工具来识别严重的心脏问题。然而,这些工具需要医疗专家的面对面参与来识别心脏问题。
设计并实施一种针对 COVID-19 重症心脏心律失常患者的智能健康监测和诊断系统。
我们使用人工智能工具分为两部分:(i)基于物联网的健康监测;(ii)基于模糊逻辑的医疗诊断。为重症 COVID-19 患者或隔离在偏远地区的患者提供心脏状况的智能诊断和基于物联网的健康监测。我们的方案中使用了传感器、云存储以及全球移动文本短信和电子邮件系统,以便在紧急情况下与医生进行通信。
我们实施的系统有利于偏远地区和隔离的重症患者。该系统利用了一种智能算法,该算法通过移动经过六个数字滤波器来预处理心电图信号。然后,根据处理结果计算和评估特征。智能模糊系统可以进行自主诊断,并且具有足够的信息来避免人为干预。该算法使用来自 MIT-BIH 数据库的心电图数据进行训练,达到了很高的准确性。在实时验证中,模糊算法在所有实验中几乎都达到了 100%的准确性。
我们的智能系统在许多情况下都很有帮助,但对于患有严重心脏心律失常且必须接受重症监护的隔离 COVID-19 患者尤其有益。