scholarly journals Data Mining Techniques for Pandemic Outbreak in Healthcare

Author(s):  
Nur Izyan Suraya Abdul Satar ◽  
Azlinah Mohamed ◽  
Azliza Mohd Ali

Pandemic outbreaks such as SARS-CoV, MERS-CoV and Covid-19 have attracted worldwide attention since these viruses have affected many countries and become a global public health issue. In 2019, Covid-19 was announced as a pandemic disease and categorized as a public health emergency globally. It is ranked as the sixth most serious pandemic internationally. This pandemic tracking and analysis require an appropriate method that gives better performance in terms of accuracy, precision and recall that defines its pattern since it involves huge and complicated datasets from the pandemic. Pattern identification is currently applied in many instances due to the rapid growth of data besides having the   potential to generate a knowledge-rich environment which can help to significantly improve the quality of clinical decisions and identify the relationships between data items. Therefore, there is a need to review the techniques in data mining on the pandemic outbreak that focuses on healthcare. The goal of this study was to analyze the algorithms from the data mining method that had been implemented for pandemic outbreaks in past research such as SARS-CoV, MERS-CoV and Covid-19. The result shows that 2 main algorithms, namely Naïve Bayes and Decision Tree, from the classification method, are appropriate algorithms and give more than 90% accuracy in both the pandemic and healthcare. This will be further considered and investigated for future analysis on large datasets of Covid-19 which can help researchers and healthcare practitioners in controlling the infection of the coronavirus using the data mining technique discussed.

Author(s):  
Patricia Cerrito ◽  
John Cerrito

In this book, we provide tools that are needed to investigate administrative and clinical databases that are routinely collected in the support of patient treatment. Often, these databases are large and require non-traditional methodology to investigate. In addition, as they are collected for purposes other than research, there is considerable preprocessing that is required in order to use the data for the purpose of analysis in order to find important results that can improve the quality of patient care. Therefore, we will show by example just how to preprocess the data, and how non-traditional statistical methods can be used to investigate the data and to extract meaning from the databases. We will show details and programming code necessary to complete the preprocessing, and we will discuss the type of preprocessing necessary to use each statistical method and data mining technique.


Author(s):  
Md. Sadeki Salman ◽  
Nazmun Naher Shila ◽  
Khalid Hasan ◽  
Piash Ahmed ◽  
Mumenunnessa Keya ◽  
...  

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