使用Naïve贝叶斯方法预测Covid患者的医疗行为

Arfan Haqiqi, Rais -, Istiqomah Dwi Andari, Siti Fatimah
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引用次数: 0

摘要

在处理ODP(监测人员)、OTG(无症状人员)、PDP(监测人员)和Covid-19阳性患者时,根据假设进行医疗行动管理,例如自我隔离、住院或在ICU(重症监护病房)病房进行特殊治疗。每个病人的身体状况是不同的,一个病人可能有相同的症状,但治疗是不同的,特别是在老年病人。由于患者的身体状况不同,在确定医疗行动时出现了许多问题。因此,它需要被指定为一项研究。本研究使用的研究方法是Nive Bayes算法,支持应用程序Rapid Miner。它被应用于对多达500个数据、25个变量或患者症状和3个输出作为医疗行动形式的患者数据进行测试的过程。基于本研究的分析结果,通过使用Rapid Miner应用程序将训练数据与测试数据进行比较,得出ODP、PDP、OTG和Covid-19阳性患者的医疗行为预测。结果显示准确率为76.00%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction Of Medical Actions For Covid Patients Using Naïve Bayes Method
Management of medical actions carried out in handling patients who are ODP (people under monitoring), OTG (asymptomatic people), PDP (patient under monitoring) and positive Covid-19 patients is carried out based on assumptions, such as self-isolation, hospitalization, or special treatments in the ICU (Intensive Care Unit) room. The condition of the body in each patient is different, a patient may have same symptoms but the treatment is different, especially in elderly patients. Many problems occur in determining medical action because the patient's body condition is different. Therefore, it needs to be appointed as a research. The research method used in this study was Nive Bayes algorithm with supporting application Rapid Miner. It was applied to carry out the process of testing on patient data as much as 500 data, 25 variables or patient symptoms and 3 outputs as a form of medical action. Based on the results of the analysis carried out in this study, prediction of medical actions for ODP, PDP, OTG and positive Covid-19 patients were obtained by comparing training data with testing data using Rapid Miner application. It resulted that an accuracy rate of 76.00% was obtained
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