Alsaffar Mohammad, Alshammari Abdullah, Alshammari Gharbi, Aljaloud Saud, Almurayziq Tariq S, Abdoon Fadam Muteb, Abebaw Solomon
University of Ha'il, College of Computer Science and Engineering, Department of Computer Science and Information, Saudi Arabia.
Analytical Chemistry, College of Sciences, Tikrit University, Iraq.
Appl Bionics Biomech. 2021 Nov 17;2021:6718029. doi: 10.1155/2021/6718029. eCollection 2021.
Heart disease is the leading cause of death from chronic diseases in the developing countries. The difficulty of making an accurate and timely diagnosis is exacerbated by a lack of resources and professionals in some areas, which contributes to this reality. Medical professionals may benefit from technological advancements that aid in the accurate diagnosis of patients. In light of these findings, a hybrid diagnostic tool has been developed that combines several computational intelligence (machine learning) techniques capable of analyzing clinical histories and images of electrocardiogram signals and indicating whether or not the patient has ischemic heart disease with up to 97.01% accuracy. Working with medical experts and a database containing clinical data on approximately 1020 patients and their diagnoses was required for this project. Both were put to use. A picture database containing 92 images of electrocardiogram signals was also used in this project for the analysis of the Artificial Neural Network. After extensive research and testing by the medical community, which supported the project and provided positive feedback, a successful tool was developed. This demonstrated the tool's effectiveness.
在发展中国家,心脏病是慢性疾病导致死亡的主要原因。一些地区缺乏资源和专业人员,这加剧了准确及时诊断的难度,导致了这一现状。医疗专业人员可能会受益于有助于准确诊断患者的技术进步。鉴于这些发现,已开发出一种混合诊断工具,该工具结合了多种计算智能(机器学习)技术,能够分析临床病史和心电图信号图像,并以高达97.01%的准确率指示患者是否患有缺血性心脏病。该项目需要与医学专家合作,并使用一个包含约1020名患者临床数据及其诊断结果的数据库。两者都得到了应用。该项目还使用了一个包含92幅心电图信号图像的图片数据库来分析人工神经网络。经过医学界的广泛研究和测试,该项目得到了支持并获得了积极反馈,最终开发出了一个成功的工具。这证明了该工具的有效性。