Multifactor data analysis to forecast an individual's severity over novel COVID‐19 pandemic using extreme gradient boosting and random forest classifier algorithms

Author:

Yenurkar Ganesh Keshaorao12ORCID,Mal Sandip1,Nyangaresi Vincent O.3,Hedau Anshul2ORCID,Hatwar Prajwal2,Rajurkar Shreyas2,Khobragade Juli2

Affiliation:

1. School of Computing Science & Engineering VIT Bhopal University Bhopal India

2. Computer Technology Yeshwantrao Chavan College of Engineering, Wanadongri Nagpur India

3. Computer Science & Engineering Jaramogi Oginga Odinga University of Science & Technology Bondo Kenya

Abstract

AbstractAI and machine learning are increasingly often applied in the medical industry. The COVID‐19 epidemic will start to spread quickly over the planet around the start of 2020. At hospitals, there were more patients than there were beds. It was challenging for medical personnel to identify the patient who needed treatment right away. A machine learning approach is used to predict COVID‐19 pandemic patients at high risk. To provide input data and output results that execute the machine learning model on the backend, a straightforward Python Flask web application is employed. Here, the XGBoost algorithm, a supervised machine learning method, is applied. In order to predict high‐risk patients based on their current underlying health issues, the model uses patient characteristics as well as criteria like age, sex, health issues including diabetes, asthma, hypertension, and smoking, among others. The XGBoost model predicts the patient's severity with an accuracy of about 98% after data pre‐processing and training. The most important factors to the models are chosen to be age, diabetes, sex, and obesity. Patients and hospital personnel will benefit from this project's assistance in making timely choices and taking appropriate action. This will let medical personnel decide how much time and space to devote to the COVID‐19 high‐risk patients. providing a treatment that is both efficient and ideal. With this programme and the necessary patient data, hospitals may decide whether a patient need immediate care or not.

Publisher

Wiley

Subject

General Engineering,General Computer Science

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Subject-Wise Cognitive Load Detection Using Time–Frequency EEG and Bi-LSTM;Arabian Journal for Science and Engineering;2023-11-29

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