Literature DB >> 25400164

Mass-gathering health research foundational theory: part 1 - population models for mass gatherings.

Adam Lund, Sheila A Turris, Ron Bowles, Malinda Steenkamp, Alison Hutton, Jamie Ranse, Paul Arbon.   

Abstract

BACKGROUND: The science underpinning the study of mass-gathering health (MGH) is developing rapidly. Current knowledge fails to adequately inform the understanding of the science of mass gatherings (MGs) because of the lack of theory development and adequate conceptual analysis. Defining populations of interest in the context of MGs is required to permit meaningful comparison and meta-analysis between events. Process A critique of existing definitions and descriptions of MGs was undertaken. Analyzing gaps in current knowledge, the authors sought to delineate the populations affected by MGs, employing a consensus approach to formulating a population model. The proposed conceptual model evolved through face-to-face group meetings, structured break out sessions, asynchronous collaboration, and virtual international meetings. Findings and Interpretation Reporting on the incidence of health conditions at specific MGs, and comparing those rates between and across events, requires a common understanding of the denominators, or the total populations in question. There are many, nested populations to consider within a MG, such as the population of patients, the population of medical services providers, the population of attendees/audience/participants, the crew, contractors, staff, and volunteers, as well as the population of the host community affected by, but not necessarily attending, the event. A pictorial representation of a basic population model was generated, followed by a more complex representation, capturing a global-health perspective, as well as academically- and operationally-relevant divisions in MG populations.
CONCLUSIONS: Consistent definitions of MG populations will support more rigorous data collection. This, in turn, will support meta-analysis and pooling of data sources internationally, creating a foundation for risk assessment as well as illness and injury prediction modeling. Ultimately, more rigorous data collection will support methodology for evaluating health promotion, harm reduction, and clinical-response interventions at MGs. Delineating MG populations progresses the current body of knowledge of MGs and informs the understanding of the full scope of their health effects.

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Year:  2014        PMID: 25400164     DOI: 10.1017/S1049023X14001216

Source DB:  PubMed          Journal:  Prehosp Disaster Med        ISSN: 1049-023X            Impact factor:   2.040


  1 in total

Review 1.  Medicine at mass gatherings: current progress of preparedness of emergency medical services and disaster medical response during 2020 Tokyo Olympic and Paralympic Games from the perspective of the Academic Consortium (AC2020).

Authors:  Naoto Morimura; Yasumitsu Mizobata; Manabu Sugita; Satoshi Takeda; Tetsuro Kiyozumi; Tomohisa Shoko; Yoshiaki Inoue; Yasuhiro Otomo; Atsushi Sakurai; Yuichi Koido; Seizan Tanabe; Tetsu Okumura; Fumihiro Yamasawa; Hideharu Tanaka; Tomoya Kinoshi; Koki Kaku; Kiyoshi Matsuda; Nobuya Kitamura; Tatsuya Hayakawa; Yasuhiro Kuroda; Yumiko Kuroki; Junichi Sasaki; Jun Oda; Masataka Inokuchi; Toru Kakuta; Satoru Arai; Noriaki Sato; Hiroyuki Matsuura; Masahiro Nozawa; Toshio Osamura; Kazunori Yamashita; Hiroshi Okudera; Akihiko Kawana; Tsugumichi Koshinaga; Satoshi Hirano; Erisa Sugawara; Michihiro Kamata; Yasuhito Tajiri; Mototsugu Kohno; Michiyasu Suzuki; Hiroyuki Nakase; Eiichi Suehiro; Hiroaki Yamase; Hiroshi Otake; Hiroshi Morisaki; Akiko Ozawa; Sho Takahashi; Kotaro Otsuka; Kiyokazu Harikae; Kazuo Kishi; Hiroshi Mizuno; Hideaki Nakajima; Hiroki Ueta; Masao Nagayama; Migaku Kikuchi; Hiroyuki Yokota; Takeshi Shimazu; Tetsuo Yukioka
Journal:  Acute Med Surg       Date:  2021-02-02
  1 in total

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