Abstract
The coronavirus disease-2019 (COVID-19) has drastically impacted each and everyone’s life in the whole duration, and those critical impacts can be seen in today’s life also. A very less number of studies are there which present a detailed comparison among the hospitalized patients, during the distinct three waves of this disease in India. So, this particular study aims at presenting a comparison of the clinical data and laboratory results of the patients who were infected by this virus and were hospitalized for the duration of wave 1, wave 2, and the ongoing, wave 3. The duration of wave 1 was from January to August 2020, from March 2021 to October 2021, and was wave 2 duration, whereas the impact of wave 3 started in December 2021. The goal is also to find the risk aspects for the criticality of this virus and to discuss the causes of infection. This paper is an effort to perform a thoughtful study by analyzing the medical data of 500 distinct patients of which 200 were from wave 1, 150 from wave 2, and 150 patients from wave 3. The analysis considering various aspects and factors was performed for all three waves. This particular study discusses various symptoms of COVID-19, mediums of spread, standard characteristics such as gender, age, and disease, analysis of the result data of laboratory testing, and finally presents the cure provided to the different infected patients. Lastly, on the basis of this study, it is concluded that wave 1 was more dangerous as compared to wave 2 and wave 3.
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Malik, A., Parihar, V., Bhushan, B., Srivastava, J., Sharma, R. (2023). Comparative Analysis of Three Waves of COVID-19 in India: A Deep Study of Three Waves Based on Selected Parameters. In: Sharma, D.K., Peng, SL., Sharma, R., Jeon, G. (eds) Micro-Electronics and Telecommunication Engineering . Lecture Notes in Networks and Systems, vol 617. Springer, Singapore. https://doi.org/10.1007/978-981-19-9512-5_48
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DOI: https://doi.org/10.1007/978-981-19-9512-5_48
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