Wearable Proximity Sensors for Monitoring a Mass Casualty Incident Exercise: Feasibility Study.

contact networks contact patterns mass casualty incident medical staff – patient interaction patients’ flow simulation wearable proximity sensors

Journal

Journal of medical Internet research
ISSN: 1438-8871
Titre abrégé: J Med Internet Res
Pays: Canada
ID NLM: 100959882

Informations de publication

Date de publication:
26 04 2019
Historique:
received: 19 09 2018
accepted: 25 01 2019
revised: 25 01 2019
entrez: 27 4 2019
pubmed: 27 4 2019
medline: 14 2 2020
Statut: epublish

Résumé

Over the past several decades, naturally occurring and man-made mass casualty incidents (MCIs) have increased in frequency and number worldwide. To test the impact of such events on medical resources, simulations can provide a safe, controlled setting while replicating the chaotic environment typical of an actual disaster. A standardized method to collect and analyze data from mass casualty exercises is needed to assess preparedness and performance of the health care staff involved. In this study, we aimed to assess the feasibility of using wearable proximity sensors to measure proximity events during an MCI simulation. In the first instance, our objective was to demonstrate how proximity sensors can collect spatial and temporal information about the interactions between medical staff and patients during an MCI exercise in a quasi-autonomous way. In addition, we assessed how the deployment of this technology could help improve future simulations by analyzing the flow of patients in the hospital. Data were obtained and collected through the deployment of wearable proximity sensors during an MCI functional exercise. The scenario included 2 areas: the accident site and the Advanced Medical Post, and the exercise lasted 3 hours. A total of 238 participants were involved in the exercise and classified in categories according to their role: 14 medical doctors, 16 nurses, 134 victims, 47 Emergency Medical Services staff members, and 27 health care assistants and other hospital support staff. Each victim was assigned a score related to the severity of his/her injury. Each participant wore a proximity sensor, and in addition, 30 fixed devices were placed in the field hospital. The contact networks show a heterogeneous distribution of the cumulative time spent in proximity by the participants. We obtained contact matrices based on the cumulative time spent in proximity between the victims and rescuers. Our results showed that the time spent in proximity by the health care teams with the victims is related to the severity of the patient's injury. The analysis of patients' flow showed that the presence of patients in the rooms of the hospital is consistent with the triage code and diagnosis, and no obvious bottlenecks were found. Our study shows the feasibility of the use of wearable sensors for tracking close contacts among individuals during an MCI simulation. It represents, to our knowledge, the first example of unsupervised data collection-ie, without the need for the involvement of observers, which could compromise the realism of the exercise-of face-to-face contacts during an MCI exercise. Moreover, by permitting detailed data collection about the simulation, such as data related to the flow of patients in the hospital, such deployment provides highly relevant input for the improvement of MCI resource allocation and management.

Sections du résumé

BACKGROUND
Over the past several decades, naturally occurring and man-made mass casualty incidents (MCIs) have increased in frequency and number worldwide. To test the impact of such events on medical resources, simulations can provide a safe, controlled setting while replicating the chaotic environment typical of an actual disaster. A standardized method to collect and analyze data from mass casualty exercises is needed to assess preparedness and performance of the health care staff involved.
OBJECTIVE
In this study, we aimed to assess the feasibility of using wearable proximity sensors to measure proximity events during an MCI simulation. In the first instance, our objective was to demonstrate how proximity sensors can collect spatial and temporal information about the interactions between medical staff and patients during an MCI exercise in a quasi-autonomous way. In addition, we assessed how the deployment of this technology could help improve future simulations by analyzing the flow of patients in the hospital.
METHODS
Data were obtained and collected through the deployment of wearable proximity sensors during an MCI functional exercise. The scenario included 2 areas: the accident site and the Advanced Medical Post, and the exercise lasted 3 hours. A total of 238 participants were involved in the exercise and classified in categories according to their role: 14 medical doctors, 16 nurses, 134 victims, 47 Emergency Medical Services staff members, and 27 health care assistants and other hospital support staff. Each victim was assigned a score related to the severity of his/her injury. Each participant wore a proximity sensor, and in addition, 30 fixed devices were placed in the field hospital.
RESULTS
The contact networks show a heterogeneous distribution of the cumulative time spent in proximity by the participants. We obtained contact matrices based on the cumulative time spent in proximity between the victims and rescuers. Our results showed that the time spent in proximity by the health care teams with the victims is related to the severity of the patient's injury. The analysis of patients' flow showed that the presence of patients in the rooms of the hospital is consistent with the triage code and diagnosis, and no obvious bottlenecks were found.
CONCLUSIONS
Our study shows the feasibility of the use of wearable sensors for tracking close contacts among individuals during an MCI simulation. It represents, to our knowledge, the first example of unsupervised data collection-ie, without the need for the involvement of observers, which could compromise the realism of the exercise-of face-to-face contacts during an MCI exercise. Moreover, by permitting detailed data collection about the simulation, such as data related to the flow of patients in the hospital, such deployment provides highly relevant input for the improvement of MCI resource allocation and management.

Identifiants

pubmed: 31025944
pii: v21i4e12251
doi: 10.2196/12251
pmc: PMC6658323
doi:

Types de publication

Journal Article Research Support, Non-U.S. Gov't

Langues

eng

Sous-ensembles de citation

IM

Pagination

e12251

Informations de copyright

©Laura Ozella, Laetitia Gauvin, Luca Carenzo, Marco Quaggiotto, Pier Luigi Ingrassia, Michele Tizzoni, André Panisson, Davide Colombo, Anna Sapienza, Kyriaki Kalimeri, Francesco Della Corte, Ciro Cattuto. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 26.04.2019.

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Auteurs

Laura Ozella (L)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.

Laetitia Gauvin (L)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.

Luca Carenzo (L)

Department of Translational Medicine, Eastern Piedmont University, Novara, Italy.
Centro Interdipartimentale di Didattica Innovativa e di Simulazione in Medicina e Professioni Sanitarie SIMNOVA, Università del Piemonte Orientale, Novara, Italy.

Marco Quaggiotto (M)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.
Department of Design, Politecnico di Milano, Milano, Italy.

Pier Luigi Ingrassia (PL)

Centro Interdipartimentale di Didattica Innovativa e di Simulazione in Medicina e Professioni Sanitarie SIMNOVA, Università del Piemonte Orientale, Novara, Italy.

Michele Tizzoni (M)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.

André Panisson (A)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.

Davide Colombo (D)

Department of Translational Medicine, Eastern Piedmont University, Novara, Italy.

Anna Sapienza (A)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.
University of Southern California Information Sciences Institute, Marina del Rey, CA, United States.

Kyriaki Kalimeri (K)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.

Francesco Della Corte (F)

Department of Translational Medicine, Eastern Piedmont University, Novara, Italy.

Ciro Cattuto (C)

Data Science Laboratory, Institute for Scientific Interchange Foundation, Torino, Italy.

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