ARTEMIS: AI-driven Robotic Triage Labeling and Emergency Medical Information System

Mass casualty incidents (MCIs) pose a significant challenge to emergency medical services by overwhelming available resources and personnel. Effective victim assessment is the key to minimizing casualties during such a crisis. We introduce ARTEMIS, an AI-driven Robotic Triage Labeling and Emergency...

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Veröffentlicht in:arXiv.org 2024-03
Hauptverfasser: Senthilkumaran, Revanth Krishna, Mridu Prashanth, Viswanath, Hrishikesh, Kotha, Sathvika, Tiwari, Kshitij, Bera, Aniket
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Mridu Prashanth
Viswanath, Hrishikesh
Kotha, Sathvika
Tiwari, Kshitij
Bera, Aniket
description Mass casualty incidents (MCIs) pose a significant challenge to emergency medical services by overwhelming available resources and personnel. Effective victim assessment is the key to minimizing casualties during such a crisis. We introduce ARTEMIS, an AI-driven Robotic Triage Labeling and Emergency Medical Information System, to aid first responders in MCI events. It leverages speech processing, natural language processing, and deep learning to help with acuity classification. This is deployed on a quadruped that performs victim localization and preliminary injury severity assessment. First responders access victim information through a Graphical User Interface that is updated in real-time. To validate our proposed algorithmic triage protocol, we used the Unitree Go1 quadruped. The robot identifies humans, interacts with them, gets vitals and information, and assigns an acuity label. Simulations of an MCI in software and a controlled environment outdoors were conducted. The system achieved a triage-level classification precision of over 74% on average and 99% for the most critical victims, i.e. level 1 acuity, outperforming state-of-the-art deep learning-based triage labeling systems. In this paper, we showcase the potential of human-robot interaction in assisting medical personnel in MCI events.
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source Freely Accessible Journals
subjects Acuity
Casualties
Classification
Emergency medical services
Emergency response
Graphical user interface
Information systems
Labeling
Labels
Machine learning
Mass casualty incidents
Robots
title ARTEMIS: AI-driven Robotic Triage Labeling and Emergency Medical Information System
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