Author: Kumar, Ajay; Kolnure, Smita Nivrutti; Abhishek, Kumar; Fadi-Al-Turjman,; Nerurkar, Pranav; Ghalib, Muhammad Rukunuddin; Shankar, Achyut
Title: Advanced deep learning algorithms for infectious disease modeling using clinical data- A Case Study on CoVID-19. Cord-id: 3uejls1c Document date: 2021_9_8
ID: 3uejls1c
Snippet: BACKGROUND Infectious disease happens when an individual is defiled by a micro-organism/virus from another person or an animal. It is troublesome that causes hurt at both individual and huge scope scales. CASE PRESENTATION The ongoing episode of COVID-19 ailment brought about by the new coronavirus first distinguished in Wuhan China, and its quick spread far and wide, revived the consideration of the world towards the impacts of such plagues on individual's regular daily existence. We attempt to
Document: BACKGROUND Infectious disease happens when an individual is defiled by a micro-organism/virus from another person or an animal. It is troublesome that causes hurt at both individual and huge scope scales. CASE PRESENTATION The ongoing episode of COVID-19 ailment brought about by the new coronavirus first distinguished in Wuhan China, and its quick spread far and wide, revived the consideration of the world towards the impacts of such plagues on individual's regular daily existence. We attempt to exploit this effectiveness of Advanced deep learning algorithms to predict the Growth of Infectious disease based on time series data and classification based on (symptoms) text data and X-ray image data. CONCLUSION Goal is identifying the nature of the phenomenon represented by the sequence of observations and forecasting.
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