COVID-19 Spreading Prediction and Impact Analysis by Using Artificial
Intelligence for Sustainable Global Health Assessment
- URL: http://arxiv.org/abs/2304.11733v1
- Date: Sun, 23 Apr 2023 19:48:29 GMT
- Title: COVID-19 Spreading Prediction and Impact Analysis by Using Artificial
Intelligence for Sustainable Global Health Assessment
- Authors: Subhrangshu Adhikary, Sonam Chaturvedi, Sudhir Kumar Chaturvedi and
Saikat Banerjee
- Abstract summary: The current epidemic of COVID-19 has influenced more than 2,164,111 persons and killed more than 146,198 folks in over 200 countries across the globe.
The fundamental difficulties of AI in this situation is the limited availability of information and the uncertain nature of the disease.
Here in this article, we have tried to integrate AI to predict the infection outbreak and along with this, we have also tried to test whether AI with help deep learning can recognize COVID-19 infected chest X-Rays or not.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The COVID-19 pandemic is considered as the most alarming global health
calamity of this century. COVID-19 has been confirmed to be mutated from
coronavirus family. As stated by the records of The World Health Organization
(WHO at April 18 2020), the present epidemic of COVID-19, has influenced more
than 2,164,111 persons and killed more than 146,198 folks in over 200 countries
across the globe and billions had confronted impacts in lifestyle because of
this virus outbreak. The ongoing overall outbreak of the COVID-19 opened up new
difficulties to the research sectors. Artificial intelligence (AI) driven
strategies can be valuable to predict the parameters, hazards, and impacts of
such an epidemic in a cost-efficient manner. The fundamental difficulties of AI
in this situation is the limited availability of information and the uncertain
nature of the disease. Here in this article, we have tried to integrate AI to
predict the infection outbreak and along with this, we have also tried to test
whether AI with help deep learning can recognize COVID-19 infected chest X-Rays
or not. The global outbreak of the virus posed enormous economic, ecological
and societal challenges into the human population and with help of this paper,
we have tried to give a message that AI can help us to identify certain
features of the disease outbreak that could prove to be essential to protect
the humanity from this deadly disease.
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