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Risk Assessment of COVID-19 Pandemic Using Deep Learning Model for J&K in India: a District Level Analysis

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Publisher Springer
Date 2021 Oct 23
PMID 34687416
Citations 3
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Abstract

The coronavirus disease 2019 (COVID-19) is an ongoing pandemic with high morbidity and mortality rates. Current epidemiological studies urge the need of implementing sophisticated methods to appraise the evolution of COVID-19. In this study, we analysed the data for 228 days (1 May to 15 December 2020) of daily incidence of COVID-19 cases for a district level analysis in the region of Jammu and Kashmir in the northern Himalayan belt of India. We used a deep learning-based incremental learning technique to model the current trend of COVID-19 transmission and to predict the future trends with 60-day forecasting. The results not only indicate high rates of morbidity and mortality but also forecast high rise in the incidence of COVID-19 in different districts of the study region. We used geographic information system (GIS) for storing, analysing, and presenting the spread of COVID-19 which provides key insights in understanding, planning, and implementing mitigating measures to tackle the current spread of the pandemic and its possible future scenarios. The existing disparity in health care facilities at district level is shown in relation to the spread of disease. The study results also highlight the need to upgrade health care infrastructure in the study region to control the current and future pandemics. These results could be useful for administration and scientific community to develop efficient short-term and long-term strategies against such diseases.

Citing Articles

An inter-district analysis of health infrastructure disparities in the Union Territory of Jammu and Kashmir.

Kaur N, Ahmad S, Shakeel A GeoJournal. 2024; :1-12.

PMID: 38625168 PMC: 10103674. DOI: 10.1007/s10708-023-10869-8.


COVID-19 Pandemic Risk Assessment: Systematic Review.

Chu A, Kwok P, Chan J, So M Risk Manag Healthc Policy. 2024; 17:903-925.

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Understanding COVID-19 vaccine hesitancy in Meghalaya, India: Multiple correspondence and agglomerative hierarchical cluster analyses.

Kim S, Sarkar R, Kumar S, Lewis M, Tozan Y, Albert S PLOS Glob Public Health. 2024; 4(2):e0002250.

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