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Medicine Allotment for COVID-19 Patients by Statistical Data Analysis

机译:Covid-19患者的药物分配通过统计数据分析

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Computational intelligence deals with the development and application of computational models and simulations, often coupled with high performance computing, to solve complex physical problems arising in engineering analysis and design as well as natural phenomena. COVID-19 is a coronavirus-induced infectious disease. Most people worldwide got infected with this virus and became mild to moderately ill with respiratory related problems. Most infected individuals who experienced mild to moderate illness/disease and without hospitalization recovered. Yet older people with underlying medical conditions are more likely to experience severe diseases, such as cardiovascular disease, diabetes, chronic respiratory disease, and cancer. As specific vaccine or treatment for COVID-19 is not yet prescribed, it is a tough task to prescribe a common medicinal procedure. There are many ongoing clinical trials evaluating potential treatments. This work presents an application that allots medicines to the one who tested positive. This proceeds after checking patients medical data which include BP, diabetes, cancer, alcoholic habits etc.,. Variations in the patient data originated from various sources with several medical concerns with different specifications is useful in evaluating and allotting proper medical course for COVID-19 patient treatment. Number of attributes are used in creating the database. Different ages are categorized and the corresponding treatment will be prescribed based on the age category and the medical history of the patient. Missing data values can affect the data sets and the performance of data mining system. This work presents clustering methods which is a method of unsupervised learning and common technique for statistical data analysis. Various clustering algorithms with test samples are carried out for medicine allotment based on age category, symptoms and medical history to evaluate the respective accuracy score.
机译:计算智能涉及计算模型和模拟的开发和应用,通常与高性能计算相结合,解决工程分析和设计中出现的复杂物理问题以及自然现象。 Covid-19是冠状病毒诱导的传染病。大多数全世界的人都感染了这种病毒,并与呼吸相关问题感到温和。大多数受感染的个体患者患有轻度至中度疾病/疾病,没有住院治疗。然而,具有潜在的医疗状况的老年人更有可能体验严重疾病,如心血管疾病,糖尿病,慢性呼吸道疾病和癌症。作为Covid-19的特异性疫苗或治疗尚未规定,规定常见的药用程序是一项艰巨的任务。有许多正在进行的临床试验评估潜在治疗方法。这项工作提出了一个申请,即将药物发给测试积极的人。在检查患者的医疗数据后,这进行了,该数据包括BP,糖尿病,癌症,酒精习惯等。患者数据的变化来自于具有不同规格的多种医疗问题的各种来源可用于评估和分配适当的Covid-19患者治疗的医疗课程。创建数据库时使用属性数。不同年龄分类,相应的治疗将根据年龄类别和患者的病史规定。缺少的数据值可能会影响数据集和数据挖掘系统的性能。这项工作介绍了聚类方法,这是一种无监督的学习和常规技术的方法,用于统计数据分析。基于年龄类别,症状和医学史的药物分配来评估各种聚类算法,以评估各自的准确度分数。

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