Mena Luis J, Félix Vanessa G, Ochoa Alberto, Ostos Rodolfo, González Eduardo, Aspuru Javier, Velarde Pablo, Maestre Gladys E
Academic Unit of Computing, Master Program in Applied Sciences, Universidad Politecnica de Sinaloa, Mazatlan 82199, Mexico.
Department of Electronic, Faculty of Mechanical and Electrical Engineering, Universidad de Colima, Colima 28400, Mexico.
Comput Math Methods Med. 2018 May 29;2018:9128054. doi: 10.1155/2018/9128054. eCollection 2018.
Mobile electrocardiogram (ECG) monitoring is an emerging area that has received increasing attention in recent years, but still real-life validation for elderly residing in low and middle-income countries is scarce. We developed a wearable ECG monitor that is integrated with a self-designed wireless sensor for ECG signal acquisition. It is used with a native purposely designed smartphone application, based on machine learning techniques, for automated classification of captured ECG beats from aged people. When tested on 100 older adults, the monitoring system discriminated normal and abnormal ECG signals with a high degree of accuracy (97%), sensitivity (100%), and specificity (96.6%). With further verification, the system could be useful for detecting cardiac abnormalities in the home environment and contribute to prevention, early diagnosis, and effective treatment of cardiovascular diseases, while keeping costs down and increasing access to healthcare services for older persons.
动态心电图监测是近年来受到越来越多关注的一个新兴领域,但对于低收入和中等收入国家的老年人而言,现实生活中的验证仍然很少。我们开发了一种可穿戴式心电图监测器,它集成了一个自行设计的用于采集心电图信号的无线传感器。它与一个专门设计的原生智能手机应用程序配合使用,该应用程序基于机器学习技术,用于对老年人采集到的心电图搏动进行自动分类。在对100名老年人进行测试时,该监测系统对正常和异常心电图信号的辨别具有很高的准确性(97%)、敏感性(100%)和特异性(96.6%)。经过进一步验证,该系统可用于在家庭环境中检测心脏异常情况,并有助于心血管疾病的预防、早期诊断和有效治疗,同时降低成本并增加老年人获得医疗服务的机会。