This work is licensed under the Creative Commons Attribution 4.0 International License.
Ahlmén-Laiho, U., Suominen, S., Järvi, U. and Tuominen, R. 2014. “Finnish health journalists’ perceptions of collaborating with medical professionals”, International Conference on Well-Being in the Information Society, Springer, Cham, pp. 1–.Ahlmén-LaihoU.SuominenS.JärviU.TuominenR.2014“Finnish health journalists’ perceptions of collaborating with medical professionals”Springer, Champp.110.1007/978-3-319-10211-5_1Search in Google Scholar
Anger, I. and Kittl, C. 2011. “Measuring influence on Twitter”, Proceedings of the 11th International Conference on Knowledge Management and Knowledge Technologies, pp. 1–4.AngerI.KittlC.2011“Measuring influence on Twitter”pp.14Search in Google Scholar
Ansari, A. 2013. “Green’s art: new media aesthetics in pre-and post-election events in Iran”, Proceedings of the 19th International Symposium of Electronic Art edited by K. Cleland, L. Fisher, and R. Harley, ISEA International, the Australian Network for Art & Technology, and the University of Sydney, Sydney.AnsariA.2013“Green’s art: new media aesthetics in pre-and post-election events in Iran”edited by K. Cleland, L. Fisher, and R. HarleyISEA International, the Australian Network for Art & Technology, and the University of SydneySydneySearch in Google Scholar
Aramburu, M. J., Berlanga, R. and Lanza, I. 2020. Social media multidimensional analysis for intelligent health surveillance. International Journal of Environmental Research and Public Health 17: 2289.AramburuM. J.BerlangaR.LanzaI.2020Social media multidimensional analysis for intelligent health surveillance17228910.3390/ijerph17072289Search in Google Scholar
Broido, A. D. and Clauset, A. 2019. Scale-free networks are rare. Nature Communications 10: 1–10..BroidoA. D.ClausetA.2019Scale-free networks are rare10110.10.1038/s41467-019-08746-5Search in Google Scholar
Centers for Disease Control and Prevention. 2014. Crisis and Emergency Risk Communication (CERC) Manual, Centers for Disease Control and Prevention, Atlanta, available at: https://emergency.cdc.gov/cerc/manual/index.asp.Centers for Disease Control and Prevention.2014Centers for Disease Control and Prevention, Atlantaavailable at:https://emergency.cdc.gov/cerc/manual/index.aspSearch in Google Scholar
Cha, M., Haddadi, H., Benevenuto, F. and Gummadi, P. K. 2010. Measuring user influence in Twitter: the million follower fallacy. Icwsm, 10: 30.ChaM.HaddadiH.BenevenutoF.GummadiP. K.2010Measuring user influence in Twitter: the million follower fallacy103010.1609/icwsm.v4i1.14033Search in Google Scholar
Clauset, A., Newman, M. E. and Moore, C. 2004. Finding community structure in very large networks. Physical Review E 70: 066111, doi: 10.1103/PhysRevE.70.066111.ClausetA.NewmanM. E.MooreC.2004Finding community structure in very large networks70066111doi: 10.1103/PhysRevE.70.06611110.1103/PhysRevE.70.066111Search in Google Scholar
Conover, M. D., Ratkiewicz, J., Francisco, M., Gonçalves, B., Menczer, F. and Flammini, A. 2011. Political polarization on twitter. Fifth international AAAI Conference on Weblogs and Social Media.ConoverM. D.RatkiewiczJ.FranciscoM.GonçalvesB.MenczerF.FlamminiA.2011Political polarization on twitter10.1609/icwsm.v5i1.14126Search in Google Scholar
Csardi, G. and Nepusz, T. 2006. The igraph software package for complex network research. InterJournal Complex Systems 1695: 1–9.CsardiG.NepuszT.2006The igraph software package for complex network research169519Search in Google Scholar
De Brún, A. and McAuliffe, E. 2018. Social network analysis as a methodological approach to explore health systems: a case study exploring support among senior managers/executives in a hospital network. International Journal of Environmental Research and Public Health 15: 511.De BrúnA.McAuliffeE.2018Social network analysis as a methodological approach to explore health systems: a case study exploring support among senior managers/executives in a hospital network1551110.3390/ijerph15030511Search in Google Scholar
Department of Homeland Security 2018. Countering False Information on Social Media in Disasters and Emergencies: Social Media Working Group for Emergency Services and Disaster Management.Department of Homeland Security2018Search in Google Scholar
Fortunato, S. and Barthelemy, M. 2007. Resolution limit in community detection. Proceedings of the National Academy of Sciences 104: 36–41, available at: https://doi.org/10.1073/pnas.0605965104.FortunatoS.BarthelemyM.2007Resolution limit in community detection1043641available at:https://doi.org/10.1073/pnas.060596510410.1073/pnas.0605965104Search in Google Scholar
Freeman, L. C. 1977. A set of measures of centrality based on betweenness. Sociometry 40: 35–41, available at: https://doi.org/10.2307/3033543.FreemanL. C.1977A set of measures of centrality based on betweenness403541available at: https://doi.org/10.2307/303354310.2307/3033543Search in Google Scholar
Freeman, L. C. 1979. Centrality in social networks: conceptual clarification. Social Networks 1: 215–239.FreemanL. C.1979Centrality in social networks: conceptual clarification121523910.1016/0378-8733(78)90021-7Search in Google Scholar
Giglou, R. I., d’Haenens, L. and Van Gorp, B. 2020. “Identifying influential users in Twitter networks of the Turkish Diaspora in Belgium, the Netherlands, and Germany”, Handbook of Research on Politics in the Computer Age, IGI Global, pp. 235–263.GiglouR. I.d’HaenensL.Van GorpB.2020“Identifying influential users in Twitter networks of the Turkish Diaspora in Belgium, the Netherlands, and Germany”IGI Globalpp.23526310.4018/978-1-7998-0377-5.ch014Search in Google Scholar
Girvan, M. and Newman, M. E. 2002. Community structure in social and biological networks. Proceedings of the National Academy of Sciences 99: 7821–7826.GirvanM.NewmanM. E.2002Community structure in social and biological networks997821782610.1073/pnas.122653799Search in Google Scholar
Gleason, B. 2013. #Occupy Wall Street: exploring informal learning about a social movement on Twitter. American Behavioral Scientist 57: 966–982.GleasonB.2013#Occupy Wall Street: exploring informal learning about a social movement on Twitter5796698210.1177/0002764213479372Search in Google Scholar
González-Bailón, S. and Wang, N. 2016. Networked discontent: the anatomy of protest campaigns in social media. Social Networks 44: 95–104.González-BailónS.WangN.2016Networked discontent: the anatomy of protest campaigns in social media449510410.1016/j.socnet.2015.07.003Search in Google Scholar
Gruzd, A., Wellman, B. and Takhteyev, Y. 2011. Imagining Twitter as an imagined community. American Behavioral Scientist 55: 1294–1318.GruzdA.WellmanB.TakhteyevY.2011Imagining Twitter as an imagined community551294131810.1177/0002764211409378Search in Google Scholar
Hagberg, A., Swart, P. and S Chult, D. 2008. Exploring Network Structure, dynamics, and Function using NetworkX(No. LA-UR-08-05495; LA-UR-08-5495) Los Alamos National Lab. (LANL), Los Alamos, NM.HagbergA.SwartP.S ChultD2008Los Alamos National Lab. (LANL)Los Alamos, NMSearch in Google Scholar
Hamzehei, A., Jiang, S., Koutra, D., Wong, R. and Chen, F. 2017. Topic-based social influence measurement for social networks. Australasian Journal of Information Systems 21: 61.HamzeheiA.JiangS.KoutraD.WongR.ChenF.2017Topic-based social influence measurement for social networks216110.3127/ajis.v21i0.1552Search in Google Scholar
Harris, J. K., Duncan, A., Men, V., Shevick, N., Krauss, M. J. and Cavazos-Rehg, P. A. 2018. Peer Reviewed: Messengers and messages for tweets that Used #thinspo and #fitspo Hashtags in 2016. Preventing Chronic Disease 15, e01, doi: 10.5888/pcd15.170309.HarrisJ. K.DuncanA.MenV.ShevickN.KraussM. J.Cavazos-RehgP. A.2018Peer Reviewed: Messengers and messages for tweets that Used #thinspo and #fitspo Hashtags in 201615e01, doi: 10.5888/pcd15.17030910.5888/pcd15.170309Search in Google Scholar
Harris, J. K., Moreland-Russell, S., Choucair, B., Mansour, R., Staub, M. and Simmons, K. 2014. Tweeting for and against public health policy: response to the Chicago Department of Public Health’s electronic cigarette Twitter campaign. Journal of Medical Internet Research 16: e238.HarrisJ. K.Moreland-RussellS.ChoucairB.MansourR.StaubM.SimmonsK.2014Tweeting for and against public health policy: response to the Chicago Department of Public Health’s electronic cigarette Twitter campaign16e23810.2196/jmir.3622Search in Google Scholar
Hilton, S. and Hunt, K. 2011. UK newspapers’ representations of the 2009–10 outbreak of swine flu: one health scare not over-hyped by the media?. Journal of Epidemiology and Community Health 65: 941–946.HiltonS.HuntK.2011UK newspapers’ representations of the 2009–10 outbreak of swine flu: one health scare not over-hyped by the media?6594194610.1136/jech.2010.119875Search in Google Scholar
Himelboim, I., Lariscy, R. W., Tinkham, S. F. and Sweetser, K. D. 2012. Social media and online political communication: the role of interpersonal informational trust and openness. Journal of Broadcasting & Electronic Media 56: 92–115.HimelboimI.LariscyR. W.TinkhamS. F.SweetserK. D.2012Social media and online political communication: the role of interpersonal informational trust and openness569211510.1080/08838151.2011.648682Search in Google Scholar
Himelboim, I., Smith, M. A., Rainie, L., Shneiderman, B. and Espina, C. 2017. Classifying Twitter topic-networks using social network analysis. Social Media+ Society 3.HimelboimI.SmithM. A.RainieL.ShneidermanB.EspinaC.2017Classifying Twitter topic-networks using social network analysis310.1177/2056305117691545Search in Google Scholar
Hinds, P. and McGrath, C. 2006. Structures that work: social structure, work structure and coordination ease in geographically distributed teams. Proceedings of the 2006 20th Anniversary Conference on Computer Supported Cooperative Work, pp. 343–352.HindsP.McGrathC.2006Structures that work: social structure, work structure and coordination ease in geographically distributed teamspp.34335210.1145/1180875.1180928Search in Google Scholar
Homeland Security Council (US) 2006. National Strategy for Pandemic Influenza: Implementation Plan. Executive Office of the President.Homeland Security Council (US)2006Search in Google Scholar
Hossain, L. and Kuti, M. 2010. Disaster response preparedness coordination through social networks. Disasters 34: 755–786.HossainL.KutiM.2010Disaster response preparedness coordination through social networks3475578610.1111/j.1467-7717.2010.01168.xSearch in Google Scholar
Kaalia, R. and Rajapakse, J. C. 2019. Refining modules to determine functionally significant clusters in molecular networks. BMC Genomics 20: 901.KaaliaR.RajapakseJ. C.2019Refining modules to determine functionally significant clusters in molecular networks2090110.1186/s12864-019-6294-9Search in Google Scholar
Kaur, M. and Singh, S. 2016. Analyzing negative ties in social networks: a survey. Egyptian Informatics Journal 17: 21–43.KaurM.SinghS.2016Analyzing negative ties in social networks: a survey17214310.1016/j.eij.2015.08.002Search in Google Scholar
Kearney, M. W. 2019. rtweet: collecting and analyzing Twitter data. Journal of Open Source Software 4: 1829KearneyM. W.2019rtweet: collecting and analyzing Twitter data4182910.21105/joss.01829Search in Google Scholar
Kemp, S. 2020. Digital 2020: April Global Statshot, available at: https://datareportal.com/reports/digital-2020-april-global-statshot (accessed May 24, 2020).KempS.2020available at:https://datareportal.com/reports/digital-2020-april-global-statshot (accessed May 24, 2020)Search in Google Scholar
Keshvari, M., Yamani, N., Adibi, P. and Shahnazi, H. 2018. Health journalism: health reporting status and challenges. Iranian Journal of Nursing and Midwifery Research 23: 14.KeshvariM.YamaniN.AdibiP.ShahnaziH.2018Health journalism: health reporting status and challenges231410.4103/ijnmr.IJNMR_158_16Search in Google Scholar
Kruikemeier, S. 2014. How political candidates use Twitter and the impact on votes. Computers in Human Behavior 34: 131–139.KruikemeierS.2014How political candidates use Twitter and the impact on votes3413113910.1016/j.chb.2014.01.025Search in Google Scholar
Liang, H., Fung, I. C. H., Tse, Z. T. H., Yin, J., Chan, C. H., Pechta, L. E. and Fu, K. W. 2019. How did Ebola information spread on twitter: broadcasting or viral spreading?. BMC Public Health 19: 438.LiangH.FungI. C. H.TseZ. T. H.YinJ.ChanC. H.PechtaL. E.FuK. W.2019How did Ebola information spread on twitter: broadcasting or viral spreading?1943810.1186/s12889-019-6747-8Search in Google Scholar
Littau, J. and Jahng, M. R. 2016. Interactivity, social presence, and journalistic use of Twitter. # ISOJ Journal 6: 71–90.LittauJ.JahngM. R.2016Interactivity, social presence, and journalistic use of Twitter67190Search in Google Scholar
Lossio-Ventura, J. A. and Alatrista-Salas, H. (Eds), 2017. Information Management and Big Data: Second Annual International Symposium, SIMBig 2015, Cusco, Peru, September 2-4, 2015, and Third Annual International Symposium, SIMBig 2016, Cusco, Peru, September 1-3, 2016, Revised Selected Papers (Vol. 656), Springer.Lossio-VenturaJ. A.Alatrista-SalasH.(Eds)201710.1007/978-3-319-55209-5Search in Google Scholar
Majmundar, A., Allem, J. P., Cruz, T. B. and Unger, J. B. 2018. The why we retweet scale. PLoS ONE 13: e0206076, available at: https://doi.org/10.1371/journal.pone.0206076.MajmundarA.AllemJ. P.CruzT. B.UngerJ. B.2018The why we retweet scale13e0206076, available at: https://doi.org/10.1371/journal.pone.020607610.1037/t70514-000Search in Google Scholar
Martin, J. G. III 2012. Visualizing the Invisible: Application of Knowledge Domain Visualization to the Longstanding Problem of Disciplinary and Professional Conceptualization in Emergency and Disaster Management. Universal-Publishers, Charles Town, MA.MartinJ. G.III2012Charles Town, MASearch in Google Scholar
Matsa, K. E. and Shearer, E. 2018. News use across social media platforms 2018. Pew Research Center.MatsaK. E.ShearerE2018News use across social media platforms 2018Search in Google Scholar
Moody, J., McFarland, D. and Bender-deMoll, S. 2005. Dynamic network visualization. American Journal of Sociology 110: 1206–1241.MoodyJ.McFarlandD.Bender-deMollS.2005Dynamic network visualization1101206124110.1086/421509Search in Google Scholar
Morris, M. R., Counts, S., Roseway, A., Hoff, A. and Schwarz, J. 2012. Tweeting is believing? Understanding microblog credibility perceptions. Proceedings of the ACM 2012 Conference on Computer Supported Cooperative Work, pp. 441–450.MorrisM. R.CountsS.RosewayA.HoffA.SchwarzJ.2012Tweeting is believing? Understanding microblog credibility perceptionspp.44145010.1145/2145204.2145274Search in Google Scholar
Recuero, R., Zago, G. and Soares, F. 2019. Using social network analysis and social capital to identify user roles on polarized political conversations on Twitter. Social Media+ Society 5: 205630511984874.RecueroR.ZagoG.SoaresF.2019Using social network analysis and social capital to identify user roles on polarized political conversations on Twitter520563051198487410.1177/2056305119848745Search in Google Scholar
Shin, J., Jian, L., Driscoll, K. and Bar, F. 2017. Political rumoring on Twitter during the 2012 US presidential election: rumor diffusion and correction. New Media & Society 19: 1214–1235.ShinJ.JianL.DriscollK.BarF.2017Political rumoring on Twitter during the 2012 US presidential election: rumor diffusion and correction191214123510.1177/1461444816634054Search in Google Scholar
Shin, J., Jian, L., Driscoll, K. and Bar, F. 2018. The diffusion of misinformation on social media: temporal pattern, message, and source. Computers in Human Behavior 83: 278–287.ShinJ.JianL.DriscollK.BarF.2018The diffusion of misinformation on social media: temporal pattern, message, and source8327828710.1016/j.chb.2018.02.008Search in Google Scholar
Staniland, K. and Smith, G. 2013. Flu frames. Sociology of Health & Illness 35: 309–324.StanilandK.SmithG.2013Flu frames3530932410.1002/9781118553923.ch13Search in Google Scholar
Takeichi, Y., Sasahara, K., Suzuki, R. and Arita, T. 2015. Concurrent bursty behavior of social sensors in sporting events. PLoS ONE 10: e0144646.TakeichiY.SasaharaK.SuzukiR.AritaT.2015Concurrent bursty behavior of social sensors in sporting events10e014464610.1371/journal.pone.0144646Search in Google Scholar
Valente, T. W. 1995. Network Models of the Diffusion of Innovations, Hampton Press, Cresskill, NJ.ValenteT. W.1995Hampton PressCresskill, NJSearch in Google Scholar
Valente, T. W. 2010. Social Networks and Health: Models, Methods, and Applications, Oxford University Press.ValenteT. W.2010Oxford University Press10.1093/acprof:oso/9780195301014.001.0001Search in Google Scholar
Wang, J., Cellary, W., Wang, D., Wang, H., Chen, S. C., Li, T. and Zhang, Y. (Eds), 2015. Web Information Systems Engineering–WISE 2015: 16th International Conference, Miami, FL, USA, November 1–3, 2015, Proceedings (Vol. 9418), Springer.WangJ.CellaryW.WangD.WangH.ChenS. C.LiT.ZhangY.(Eds)201510.1007/978-3-319-26187-4Search in Google Scholar
Wojcik, S. and Hughes, A. 2019. Sizing up Twitter users Pew Research Center, Washington, DC.WojcikS.HughesA.2019Pew Research CenterWashington, DCSearch in Google Scholar
World Health Organization. 2009. Pandemic Influenza Preparedness and Response: A WHO Guidance Document, World Health Organization, Geneva.World Health Organization.2009World Health OrganizationGenevaSearch in Google Scholar
Yang, J. and Counts, S. 2010. Predicting the speed, scale, and range of information diffusion in Twitter. 4th International AAAI Conference on Weblogs and Social Media (ICWSM), 10: 355–358.YangJ.CountsS.2010Predicting the speed, scale, and range of information diffusion in Twitter.1035535810.1609/icwsm.v4i1.14039Search in Google Scholar
Zhou, L., Zhang, D., Yang, C. C. and Wang, Y. 2018. Harnessing social media for health information management. Electronic Commerce Research and Applications 27: 139–151.ZhouL.ZhangD.YangC. C.WangY.2018Harnessing social media for health information management2713915110.1016/j.elerap.2017.12.003Search in Google Scholar