Literature DB >> 33630966

CoViD-19, learning from the past: A wavelet and cross-correlation analysis of the epidemic dynamics looking to emergency calls and Twitter trends in Italian Lombardy region.

Bruno Alessandro Rivieccio1, Alessandra Micheletti2, Manuel Maffeo3,4, Matteo Zignani5, Alessandro Comunian6, Federica Nicolussi7, Silvia Salini7, Giancarlo Manzi7, Francesco Auxilia3,8, Mauro Giudici6, Giovanni Naldi2, Sabrina Gaito5, Silvana Castaldi3,9, Elia Biganzoli10.   

Abstract

The first case of Coronavirus Disease 2019 in Italy was detected on February the 20th in Lombardy region. Since that date, Lombardy has been the most affected Italian region by the epidemic, and its healthcare system underwent a severe overload during the outbreak. From a public health point of view, therefore, it is fundamental to provide healthcare services with tools that can reveal possible new health system stress periods with a certain time anticipation, which is the main aim of the present study. Moreover, the sequence of law decrees to face the epidemic and the large amount of news generated in the population feelings of anxiety and suspicion. Considering this whole complex context, it is easily understandable how people "overcrowded" social media with messages dealing with the pandemic, and emergency numbers were overwhelmed by the calls. Thus, in order to find potential predictors of possible new health system overloads, we analysed data both from Twitter and emergency services comparing them to the daily infected time series at a regional level. Particularly, we performed a wavelet analysis in the time-frequency plane, to finely discriminate over time the anticipation capability of the considered potential predictors. In addition, a cross-correlation analysis has been performed to find a synthetic indicator of the time delay between the predictor and the infected time series. Our results show that Twitter data are more related to social and political dynamics, while the emergency calls trends can be further evaluated as a powerful tool to potentially forecast new stress periods. Since we analysed aggregated regional data, and taking into account also the huge geographical heterogeneity of the epidemic spread, a future perspective would be to conduct the same analysis on a more local basis.

Entities:  

Mesh:

Year:  2021        PMID: 33630966      PMCID: PMC7906455          DOI: 10.1371/journal.pone.0247854

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  14 in total

1.  Comparison of STFT and wavelet transform methods in determining epileptic seizure activity in EEG signals for real-time application.

Authors:  M Kemal Kiymik; Inan Güler; Alper Dizibüyük; Mehmet Akin
Journal:  Comput Biol Med       Date:  2005-10       Impact factor: 4.589

2.  Time and frequency domain responses of the mechanomyogram and electromyogram during isometric ramp contractions: a comparison of the short-time Fourier and continuous wavelet transforms.

Authors:  Eric D Ryan; Joel T Cramer; Alison D Egan; Michael J Hartman; Trent J Herda
Journal:  J Electromyogr Kinesiol       Date:  2006-10-27       Impact factor: 2.368

3.  Nonstationary Gaussian processes in wavelet domain: synthesis, estimation, and significance testing.

Authors:  D Maraun; J Kurths; M Holschneider
Journal:  Phys Rev E Stat Nonlin Soft Matter Phys       Date:  2007-01-22

4.  What can we learn about the Ebola outbreak from tweets?

Authors:  Michelle Odlum; Sunmoo Yoon
Journal:  Am J Infect Control       Date:  2015-06       Impact factor: 2.918

Review 5.  Trending on Social Media: Integrating Social Media into Infectious Disease Dynamics.

Authors:  J Sooknanan; D M G Comissiong
Journal:  Bull Math Biol       Date:  2020-07-02       Impact factor: 1.758

6.  Tracking Social Media Discourse About the COVID-19 Pandemic: Development of a Public Coronavirus Twitter Data Set.

Authors:  Emily Chen; Kristina Lerman; Emilio Ferrara
Journal:  JMIR Public Health Surveill       Date:  2020-05-29

Review 7.  Social media based surveillance systems for healthcare using machine learning: A systematic review.

Authors:  Aakansha Gupta; Rahul Katarya
Journal:  J Biomed Inform       Date:  2020-07-02       Impact factor: 6.317

8.  Heterogeneity of COVID-19 outbreak in Italy.

Authors:  Bruno Alessandro Rivieccio; Ester Luconi; Patrizia Boracchi; Elena Pariani; Luisa Romanò; Silvia Salini; Silvana Castaldi; Elia Biganzoli; Massimo Galli
Journal:  Acta Biomed       Date:  2020-04-20

9.  Epidemic Dynamics via Wavelet Theory and Machine Learning with Applications to Covid-19.

Authors:  Tô Tat Dat; Protin Frédéric; Nguyen T T Hang; Martel Jules; Nguyen Duc Thang; Charles Piffault; Rodríguez Willy; Figueroa Susely; Hông Vân Lê; Wilderich Tuschmann; Nguyen Tien Zung
Journal:  Biology (Basel)       Date:  2020-12-18

10.  Wavelet coherence analysis of dynamic cerebral autoregulation in neonatal hypoxic-ischemic encephalopathy.

Authors:  Fenghua Tian; Takashi Tarumi; Hanli Liu; Rong Zhang; Lina Chalak
Journal:  Neuroimage Clin       Date:  2016-01-25       Impact factor: 4.881

View more
  2 in total

1.  Emergency Medical Services Calls Analysis for Trend Prediction during Epidemic Outbreaks: Interrupted Time Series Analysis on 2020-2021 COVID-19 Epidemic in Lazio, Italy.

Authors:  Antonio Vinci; Amina Pasquarella; Maria Paola Corradi; Pelagia Chatzichristou; Gianluca D'Agostino; Stefania Iannazzo; Nicoletta Trani; Maria Annunziata Parafati; Leonardo Palombi; Domenico Antonio Ientile
Journal:  Int J Environ Res Public Health       Date:  2022-05-13       Impact factor: 4.614

2.  Modeling Provincial Covid-19 Epidemic Data Using an Adjusted Time-Dependent SIRD Model.

Authors:  Luisa Ferrari; Giuseppe Gerardi; Giancarlo Manzi; Alessandra Micheletti; Federica Nicolussi; Elia Biganzoli; Silvia Salini
Journal:  Int J Environ Res Public Health       Date:  2021-06-18       Impact factor: 3.390

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.