2018
DOI: 10.2196/10727
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Mobile Decision Support Tool for Emergency Departments and Mass Casualty Incidents (EDIT): Initial Study

Abstract: BackgroundChemical exposures pose a significant threat to life. A rapid assessment by first responders and emergency nurses is required to reduce death and disability. Currently, no informatics tools exist to process victims of chemical exposures efficiently. The surge of patients into a hospital emergency department during a mass casualty incident creates additional stress on an already overburdened system, potentially placing patients at risk and challenging staff to process patients for appropriate care and… Show more

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Cited by 12 publications
(26 citation statements)
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“…EDICT is a mobile application designed to triage and manage patients during a chemical MCI using a client-server transaction model. 21 Users interacted with EDICT through unique modes, kiosk mode and nurse mode. Kiosk mode is designed for patient data entry while nurse mode utilizes the AI algorithm to provide decision support on exposure status and triage recommendations.…”
Section: Emergency Department Informatics Computational Toolmentioning
confidence: 99%
See 2 more Smart Citations
“…EDICT is a mobile application designed to triage and manage patients during a chemical MCI using a client-server transaction model. 21 Users interacted with EDICT through unique modes, kiosk mode and nurse mode. Kiosk mode is designed for patient data entry while nurse mode utilizes the AI algorithm to provide decision support on exposure status and triage recommendations.…”
Section: Emergency Department Informatics Computational Toolmentioning
confidence: 99%
“…The on-site server allowed for real-time bidirectional communication with EDICT to receive patient data from the kiosk stations and, based upon the tested AI algorithm discussed above, provided AI decision support to the nurse stations. 21 The server used the patients' symptoms (ie, type and number) and vitals (ie, heart rate, respiratory rate, oxygen saturation) along with the patients' geographical locations to provide the secondary triage nurse with a recommended exposure status (ie, exposed, potentially exposed, not exposed) and triage category (ie, exit, monitor, urgent, immediate). The interoperability allowed for data integrity in the event of a hardware failure.…”
Section: Fe Participantsmentioning
confidence: 99%
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“…The triage in healthcare management consists of three stages, namely, pre-hospital triage (stage 1), which involves dispatching an ambulance and pre-hospital care resources, triage at the scene (stage 2) by first response emergency staff who attend the patient, and triage on arrival at the hospital or emergency unit (stage 3) [ 16 ]. Several smart systems have been widely used in order to reduce the time consumed in the triage process based on supporting medical staff’s rapid decision-making [ 17 ] and patients’ self-triage [ 18 ].…”
Section: Introductionmentioning
confidence: 99%
“…Extensive work has been performed to create new mechanisms of predictive modeling [12] (such as LSTMs, DNNs, and CNNs) as well as to improve already existing methods (such as ANNs, decision trees, etc). In the closer domain of healthcare [9], [13], ANNs have been used in medical fraud detection [14], [15] and in prediction of a patient's response to a drug [16], [17], thereby paving the way to personalized medicine. More specific to our investigation, the key question for clinicians, patients, regulators and insurance providers is: Can Artificial Intelligence use personalized data in patients with PAD to derive a predictive model of individual outcomes following femoral endarterectomy in terms of complications (death, lower extremity amputation, disease progression and need for intervention) at presentation?…”
Section: Introductionmentioning
confidence: 99%