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Background: Evaluating geographic access to health services often requires determining the patient travel time to a specified service. For urgent care, many research studies have modeled patient pre-hospital time by ground emergency medical services (EMS) using geographic information systems (GIS). The purpose of this study was to determine if the modeling assumptions proposed through prior United States (US) studies are valid in a non-US context, and to use the resulting information to provide revised recommendations for modeling travel time using GIS in the absence of actual EMS trip data.
Methods: The study sample contained all emergency adult patient trips within the Calgary area for 2006. Each record included four components of pre-hospital time (activation, response, on-scene and transport interval). The actual activation and on-scene intervals were compared with those used in published models. The transport interval was calculated within GIS using the Network Analyst extension of Esri ArcGIS 10.0 and the response interval was derived using previously established methods. These GIS derived transport and response intervals were compared with the actual times using descriptive methods. We used the information acquired through the analysis of the EMS trip data to create an updated model that could be used to estimate travel time in the absence of actual EMS trip records.
Results: There were 29,765 complete EMS records for scene locations inside the city and 529 outside. The actual median on-scene intervals were longer than the average previously reported by 7-8 minutes. Actual EMS pre-hospital times across our study area were significantly higher than the estimated times modeled using GIS and the original travel time assumptions. Our updated model, although still underestimating the total pre-hospital time, more accurately represents the true pre-hospital time in our study area.
Conclusions: The widespread use of generalized EMS pre-hospital time assumptions based on US data may not be appropriate in a non-US context. The preference for researchers should be to use actual EMS trip records from the proposed research study area. In the absence of EMS trip data researchers should determine which modeling assumptions more accurately reflect the EMS protocols across their study area.
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http://dx.doi.org/10.1186/1476-072X-11-42 | DOI Listing |
PLoS One
September 2025
Division of NCD, Indian Council of Medical Research, New Delhi, India.
Introduction: Integrated emergency care systems are essential for achieving universal health coverage and managing time-sensitive conditions. In India, emergency care remains fragmented, with limited resources and coordination across healthcare tiers. The INDIA-EMS study aims to develop and evaluate a patient-centric, high-quality integrated emergency care model in diverse Indian districts.
View Article and Find Full Text PDFEur J Appl Physiol
September 2025
Laboratório de Biomecânica, Centro de Desportos, Universidade Federal de Santa Catarina, Florianópolis, Brazil.
Purpose: The environmental conditions in open water swimming (OWS) can impair thermoregulation. Here we explored and discussed four interrelated topics concerning the disruption of thermal homeostasis, in parallel with the underlying physiological mechanisms, during OWS competitions in hot climates: (i) potential health risks; (ii) possible impacts on performance; (iii) technical feasibility of core temperature (Tc) measurement; and (iv) cooling strategies applicable to this context.
Methods: An integrative review was conducted.
Bioengineering (Basel)
July 2025
U.S. Army Institute of Surgical Research, JBSA Fort Sam Houston, San Antonio, TX 78234, USA.
Hemorrhage is the leading cause of preventable death in trauma care, requiring rapid and accurate detection to guide effective interventions. Hemorrhagic shock can be masked by underlying compensatory mechanisms, which may lead to delayed decision-making that can compromise casualty care. In this proof-of-concept study, we aimed to develop and evaluate machine learning models to predict Percent Estimated Blood Loss from a photoplethysmography waveform, offering non-invasive, field deployable solutions.
View Article and Find Full Text PDFBMC Health Serv Res
August 2025
Nursing and Midwifery Care Research Center, School of Nursing and Midwifery, Tehran University of Medical Sciences, Tehran, Iran.
Background: Presenteeism is when individuals despite experiencing illness or discomfort that necessitates rest and absence from work, still attend their jobs. This type of presence poses challenges for both the individual and the organization. Among the strategies for adapting to and coping with workplace challenges is resilience.
View Article and Find Full Text PDFFront Cardiovasc Med
August 2025
Department of Computer Arquitecture and Automation, Universidad Complutense de Madrid, Madrid, Spain.
Background: Stroke is a leading cause of death and disability globally, with rising prevalence driven by modern lifestyle factors. Despite the critical nature of stroke as a time-sensitive condition requiring prompt diagnosis and intervention, current pre-diagnostic practices are often limited by reliance on specific patient symptoms, which can delay appropriate treatment, especially for large vessel occlusions (LVO). This study introduces a novel approach utilizing machine learning techniques to accurately identify stroke type and severity using hemodynamic data.
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