小型COVID-19诊断项目:菲律宾视角

R. Baldovino, Justin Bernard A. Carlos
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引用次数: 0

摘要

目前,世界仍面临一场大流行。在菲律宾,病例数量正在迅速上升。由于尚未找到治疗方法,因此最好的治疗方法是预防,例如意识到它对人们的不利影响以及患有这种疾病的人通常感受到的症状。经常保持卫生也是必要的,可以在引起疾病的细菌有机会传播到整个人体之前将其杀死。在此次研究中,开发出了可以诊断患有这种疾病的可能性的小规模人工智能程序。该程序使用患有该疾病的患者的症状以及相应的严重程度作为输入。通过对模糊推理系统(FIS)的开发和集成,将模糊逻辑应用于程序的开发。此外,该系统的检测准确率为70.83%,这是基于对感染病毒的患者产生中等或高判决的诊断数量。此类诊断的输入是COVID-19确诊患者的症状及其相应的严重程度,这些症状和严重程度是从获取的包含菲律宾COVID-19患者信息的数据集中获得的。此外,MATLAB是用于开发程序和FIS的软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Small Scale COVID-19 Diagnosis Program: A Philippine Perspective
The world is still currently facing a pandemic. In the Philippines, the number of cases is rapidly rising. Since there is yet a cure to be found, the best cure to such is prevention such as being aware of the adverse effects that it has on people along with the symptoms commonly felt by those who have the disease. Constant sanitation is also necessary to kill the bacteria causing the disease before it even has the chance to spread throughout the human body. In this research, a small scale AI program that could diagnose a person with the probability of having the disease was developed. Theprogram used patients' symptoms who have the disease, along with the corresponding severities of such, as input. Fuzzy logic was used in developing the program through the development and integration of a fuzzy inference system (FIS). Moreover, the testing accuracy of the proposed system was 70.83% which was based on the number of diagnoses that produced a medium or high verdict of a patient contracting the virus. The inputs for such diagnoses were the symptoms felt by confirmed COVID-19 patients along with their corresponding severities which were obtained from the data set acquired containing information regarding COVID-19 patients in the Philippines. Additionally, MATLAB was the software used to develop both the program and the FIS.
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