STOPPAGE: Spatio-temporal Data Driven Cloud-Fog-Edge Computing Framework
for Pandemic Monitoring and Management
- URL: http://arxiv.org/abs/2104.01600v1
- Date: Sun, 4 Apr 2021 12:29:31 GMT
- Title: STOPPAGE: Spatio-temporal Data Driven Cloud-Fog-Edge Computing Framework
for Pandemic Monitoring and Management
- Authors: Shreya Ghosh, Anwesha Mukherjee, Soumya K Ghosh, Rajkumar Buyya
- Abstract summary: It is absolutely necessary to develop an analytics framework to deliver insights in improving administrative policy and enhance the preparedness to combat the pandemic.
This paper proposes a STOP-temporal knowledge mining framework, named STOP to model the impact of human mobility and contextual information over large geographic area in different temporal scales.
The framework has two modules: (i) S-temporal data and computing infrastructure using fog/edge based architecture; and (ii) S-temporal data analytics module to efficiently extract knowledge from heterogeneous data sources.
- Score: 28.205715426050105
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Several researches and evidence show the increasing likelihood of pandemics
(large-scale outbreaks of infectious disease) which has far reaching sequels in
all aspects of human lives ranging from rapid mortality rates to economic and
social disruption across the world. In the recent time, COVID-19 (Coronavirus
Disease 2019) pandemic disrupted normal human lives, and motivated by the
urgent need of combating COVID-19, researchers have put significant efforts in
modelling and analysing the disease spread patterns for effective preventive
measures (in addition to developing pharmaceutical solutions, like vaccine). In
this regards, it is absolutely necessary to develop an analytics framework by
extracting and incorporating the knowledge of heterogeneous datasources to
deliver insights in improving administrative policy and enhance the
preparedness to combat the pandemic. Specifically, human mobility, travel
history and other transport statistics have significant impacts on the spread
of any infectious disease. In this direction, this paper proposes a
spatio-temporal knowledge mining framework, named STOPPAGE to model the impact
of human mobility and other contextual information over large geographic area
in different temporal scales. The framework has two major modules: (i)
Spatio-temporal data and computing infrastructure using fog/edge based
architecture; and (ii) Spatio-temporal data analytics module to efficiently
extract knowledge from heterogeneous data sources. Typically, we develop a
Pandemic-knowledge graph to discover correlations among mobility information
and disease spread, a deep learning architecture to predict the next hot-spot
zones; and provide necessary support in home-health monitoring utilizing
Femtolet and fog/edge based solutions. The experimental evaluations on
real-life datasets related to COVID-19 in India illustrate the efficacy of the
proposed methods.
Related papers
- MedDiffusion: Boosting Health Risk Prediction via Diffusion-based Data
Augmentation [58.93221876843639]
This paper introduces a novel, end-to-end diffusion-based risk prediction model, named MedDiffusion.
It enhances risk prediction performance by creating synthetic patient data during training to enlarge sample space.
It discerns hidden relationships between patient visits using a step-wise attention mechanism, enabling the model to automatically retain the most vital information for generating high-quality data.
arXiv Detail & Related papers (2023-10-04T01:36:30Z) - Data-Centric Epidemic Forecasting: A Survey [56.99209141838794]
This survey delves into various data-driven methodological and practical advancements.
We enumerate the large number of epidemiological datasets and novel data streams that are relevant to epidemic forecasting.
We also discuss experiences and challenges that arise in real-world deployment of these forecasting systems.
arXiv Detail & Related papers (2022-07-19T16:15:11Z) - Towards a Unified Pandemic Management Architecture: Survey, Challenges
and Future Directions [1.1470070927586016]
SARS-CoV-2 has left an unprecedented impact on health, economy and society worldwide.
There is an urge to collect epidemiological, clinical, and physiological data to make an informed decision on mitigation measures.
Advances in the Internet of Things (IoT) and edge computing provide solutions for pandemic management through data collection and intelligent computation.
We envision a unified pandemic management architecture that leverages the IoT and edge computing to automate recommendations on vaccine distribution, dynamic lockdown, mobility scheduling and pandemic prediction.
arXiv Detail & Related papers (2022-02-04T02:01:02Z) - An Interactive Dashboard for Real-Time Analytics and Monitoring of
COVID-19 Outbreak in India: A proof of Concept [0.0]
We have developed a dashboard application for data visualization and analysis of several indicators to follow the SARS-CoV-2 epidemic using data science techniques.
A district-level tool for basic epidemiological surveillance, in an interactive and user-friendly manner which includes time trends, epidemic curves, key epidemiological parameters such as growth rate, doubling time, and effective reproduction number have been estimated.
arXiv Detail & Related papers (2021-08-23T05:14:12Z) - #StayHome or #Marathon? Social Media Enhanced Pandemic Surveillance on
Spatial-temporal Dynamic Graphs [23.67939019353524]
COVID-19 has caused lasting damage to almost every domain in public health, society, and economy.
Existing studies rely on the aggregation of traditional statistical models and epidemic spread theory.
We propose a novel framework, Social Media enhAnced pandemic knowledge based on the extracted events and relationships.
arXiv Detail & Related papers (2021-08-08T15:46:05Z) - Digital Epidemiology: A review [0.0]
The epidemiology has recently witnessed great advances based on computational models.
Big Data along with apps are enabling for validating and refining models with real world data at scale.
Ebolas have to be approached from the lens of complexity as they require systemic solutions.
arXiv Detail & Related papers (2021-04-08T08:45:20Z) - An Optimal Control Approach to Learning in SIDARTHE Epidemic model [67.22168759751541]
We propose a general approach for learning time-variant parameters of dynamic compartmental models from epidemic data.
We forecast the epidemic evolution in Italy and France.
arXiv Detail & Related papers (2020-10-28T10:58:59Z) - Steering a Historical Disease Forecasting Model Under a Pandemic: Case
of Flu and COVID-19 [75.99038202534628]
We propose CALI-Net, a neural transfer learning architecture which allows us to'steer' a historical disease forecasting model to new scenarios where flu and COVID co-exist.
Our experiments demonstrate that our approach is successful in adapting a historical forecasting model to the current pandemic.
arXiv Detail & Related papers (2020-09-23T22:35:43Z) - Epidemic mitigation by statistical inference from contact tracing data [61.04165571425021]
We develop Bayesian inference methods to estimate the risk that an individual is infected.
We propose to use probabilistic risk estimation in order to optimize testing and quarantining strategies for the control of an epidemic.
Our approaches translate into fully distributed algorithms that only require communication between individuals who have recently been in contact.
arXiv Detail & Related papers (2020-09-20T12:24:45Z) - The Past, Present, and Future of COVID-19: A Data-Driven Perspective [4.373183416616983]
We report results on our development and deployment of a web-based integrated real-time operational dashboard as an important decision support system for COVID-19.
We conducted data-driven analysis based on available data from diverse authenticated sources to predict upcoming consequences of the pandemic.
We also explored correlations between pandemic spread and important socio-economic and environmental factors.
arXiv Detail & Related papers (2020-08-12T19:03:57Z) - Mapping the Landscape of Artificial Intelligence Applications against
COVID-19 [59.30734371401316]
COVID-19, the disease caused by the SARS-CoV-2 virus, has been declared a pandemic by the World Health Organization.
We present an overview of recent studies using Machine Learning and, more broadly, Artificial Intelligence to tackle many aspects of the COVID-19 crisis.
arXiv Detail & Related papers (2020-03-25T12:30:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.