Background: Submersion time is a strong predictor for death in drowning, already 10 min after submersion, survival is poor. Traditional search efforts are time-consuming and demand a large number of rescuers and resources. We aim to investigate the feasibility and effectiveness of using drones combined with an online machine learning (ML) model for automated recognition of simulated drowning victims.
Methods: This feasibility study used photos taken by a drone hovering at 40 m altitude over an estimated 3000 m surf area with individuals simulating drowning. Photos from 2 ocean beaches in the south of Sweden were used to (a) train an online ML model (b) test the model for recognition of a drowning victim.
Results: The model was tested for recognition on n = 100 photos with one victim and n = 100 photos with no victims. In drone photos containing one victim (n = 100) the ML model sensitivity for drowning victim recognition was 91% (95%CI 84.9%-96.2%) with a median probability score that the finding was human of 66% (IQR 52-71). In photos with no victim (n = 100) the ML model specificity was 90% (95%CI: 83.9%-95.6%). False positives were present in 17.5% of all n = 200 photos but could all be ruled out manually as false objects.
Conclusions: The use of a drone and a ML model was feasible and showed satisfying effectiveness in identifying a submerged static human simulating drowning in open water and favorable environmental conditions. The ML algorithm and methodology should be further optimized, again tested and validated in a real-life clinical study.
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http://dx.doi.org/10.1016/j.resuscitation.2020.09.022 | DOI Listing |
BMC Public Health
November 2024
International Clinical Research Center, St. Anne's University Hospital Brno, Brno, Czech Republic.
Background: If carried out correctly and without delay, activation of emergency services by stroke bystanders could improve mortality and disability from stroke. This paper describes the development of a school-based intervention using the Intervention Mapping approach. It aims to improve the appropriate activation of emergency medical services for suspected stroke by 12-15-year-old children.
View Article and Find Full Text PDFRev Bras Enferm
September 2024
Universidade de São Paulo. Ribeirão Preto, São Paulo, Brazil.
Objectives: to describe researchers' experience in collecting data from families of femicide victims.
Methods: this descriptive, qualitative study took the form of an experience report and was conducted in Manaus, Amazonas, Brazil. It involved documentary consultation, training researchers, scheduling and conducting interviews, and using a field diary to record the researchers' perceptions and experiences.
Anxiety Stress Coping
September 2024
Department of Psychology and Neuroscience, Temple University, Philadelphia, PA, USA.
Background: Individuals at a higher weight experience greater victimization and exclusion by peers, and limited research suggests that the salience of one's body image may increase negative emotional reactions to social rejection. Additionally, social exclusion is related to higher levels of social anxiety (SA). We examined how body salience interacts with SA and weight to predict anxiety, self-esteem, and negative affect following social rejection.
View Article and Find Full Text PDFChilds Nerv Syst
December 2024
Division of Neurosurgery and Director, Department of Surgery, Santa Casa of São Paulo, Hospital and School of Medical Sciences, São Paulo, Brazil.
Purpose: An inflammatory cascade associated with the systemic neutrophil response can be triggered after traumatic brain injury (TBI), causing neuronal dysfunction, which is considered to be related to the prognosis of the victims. The scope of this research is to identify the performance of the neutrophil-lymphocyte ratio (NLR) as a predictor of prognosis considering TBI severity and death as outcomes in a group of pediatric patients.
Methods: We retrospectively evaluated NLR through a consecutive review of the medical records (cross-sectional study) of children and adolescents aged < 17 years victims of TBI.
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