An AI-based disease detection and prevention scheme for COVID-19.

Comput Electr Eng

Centre for Inter-Disciplinary Research and Innovation, University of Petroleum and Energy Studies, P.O. Bidholi Via-Prem Nagar, Dehradun, India.

Published: October 2022

AI Article Synopsis

  • - The COVID-19 outbreak has caused global health issues and led to lockdowns and quarantines, prompting the need for effective strategies to manage the crisis.
  • - The paper introduces a cloud-oriented AI solution called Disease-espy, which focuses on real-time disease detection and prevention, analyzing different AI techniques for prediction accuracy.
  • - Using Stacked LSTM for prediction, the proposed scheme achieves 96.2% accuracy and offers a Medical Resource Distribution mechanism to optimize resource allocation and aid in government decisions regarding lockdown measures.

Article Abstract

The proliferating outbreak of COVID-19 raises global health concerns and has brought many countries to a standstill. Several restrain strategies are imposed to suppress and flatten the mortality curve, such as lockdowns, quarantines, etc. Artificial Intelligence (AI) techniques could be a promising solution to leverage these restraint strategies. However, real-time decision-making necessitates a cloud-oriented AI solution to control the pandemic. Though many cloud-oriented solutions exist, they have not been fully exploited for real-time data accessibility and high prediction accuracy. Motivated by these facts, this paper proposes a cloud-oriented AI-based scheme referred to as (i.e., Disease-espy) for disease detection and prevention. The proposed scheme performs a comparative analysis between Autoregressive Integrated Moving Average (ARIMA), Vanilla Long Short Term Memory (LSTM), and Stacked LSTM techniques, which signify the dominance of Stacked LSTM in terms of prediction accuracy. Then, a Medical Resource Distribution (MRD) mechanism is proposed for the optimal distribution of medical resources. Next, a three-phase analysis of the COVID-19 spread is presented, which can benefit the governing bodies in deciding lockdown relaxation. Results show the efficacy of the scheme concerning 96.2% of prediction accuracy compared to the existing approaches.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9436917PMC
http://dx.doi.org/10.1016/j.compeleceng.2022.108352DOI Listing

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