REVOLUTIONIZING EMERGENCY HEALTHCARE IN DEVELOPING INDIA: AN AI-INTEGRATED AMBULANCE SYSTEM FOR TIMELY INTERVENTION IN CRITICAL CONDITIONS
Keywords:
Artificial Intelligence, Emergency Medical Services, Intelligent Ambulance, Real-Time Data Analysis, Healthcare Communication, Decision Support Tools.Abstract
The field of emergency medical services (EMS) has undergone significant advancements over the years, with a focus on improving response times, patient care, and overall outcomes. The integration of artificial intelligence (AI) and human interaction technologies into ambulances represents a transformative approach to enhance emergency medical care. The background encompasses the evolution of EMS, the rise of AI in healthcare, and the potential for synergies between technology and human interactions in emergency situations. Historically, ambulances have primarily been vehicles equipped with basic life support equipment and staffed by paramedics and emergency medical technicians to provide initial care during transportation to a medical facility. Communication with hospitals and the processing of patient information be manual and time-consuming. The traditional system is lack of real-time data analysis capabilities and decision support tools that AI can offer in emergency situations. The problem at hand is optimizing emergency medical responses and care through the integration of AI and human interaction technologies within ambulances. This involves addressing challenges such as quick and accurate diagnosis, communication between emergency responders and healthcare facilities, and the provision of real-time medical information to enhance decision-making. The goal is to create a seamless, intelligent, and responsive system that improves patient outcomes during critical moments. The need for the intelligence ambulance arises from the recognition that leveraging AI and human interaction technologies can significantly enhance the efficiency and effectiveness of emergency medical services. In critical situations, quick and accurate decision-making is crucial, and the integration of intelligent systems can provide valuable support to healthcare professionals. This approach can also improve communication, data sharing, and coordination between ambulances, hospitals, and other healthcare entities.
Downloads
References
Akash Bansode, Sanket Thakare, Sarthak Pawar, Subodh Wavhal and D.S. Rakshe, Smart
Ambulance Management Application Using Cloud, IJARIIE-ISSN(O)-2395-4396, Vol-8, Issue-3 2022.
Divya Ganesh, Gayathri Seshadri, Sumathi Sokkanarayanan, Panjavarnam Bose, Sharanya Rajan
and Mithileysh Sathiyanarayanan, “Automatic Health Machine for COVID-19 and Other
Emergencies,” in IEEE-2021.
Gargi Beri, Pankaj Ganjare, Amruta Gate, Ashwin Channawar, Vijay Gaikwad, “Intelligent
Ambulance with Traffic Control”, Upper Indira Nagar, Bibvewadi, Pune, ISSN: 2454-5031, Volume 2
- Issue 5, May 2016. Design & Development of Intelligent Ambulance Concept – AI and Human
Interface Technology Section A-Research paper 186 Eur. Chem. Bull. 2023,12(Special Issue 9), 177-
Ms. Aisha Meethian, Althaf B.K., Athinan Saeed, Ligin Abraham, Mohammed Samran, “IOT Based
Traffic Control System with Patient Health Monitoring For Ambulance”, ISSN:2395-5252, Volume 4,
Issue 8, August 2022.
Himadri Nath Saha , Neha Firdaush Raun, Maitrayee Saha, “Monitoring Patient’s Health with Smart Ambulance system using Internet of Things (IOTs)”, IEEE 2017.
Timothy Malche, Sumegh Tharewal, Pradeep Kumar Tiwari and Mohammad Aman Ullah,
“Artificial Intelligence of Things- (AIoT) Based Patient Activity Tracking System for Remote Patient
Monitoring”, 2022.
Erik Alonso, Unai Irusta, Elisabete Aramendi and Mohamud R. Daya, “A Machine Learning
Framework for Pulse Detection During Out-of-Hospital Cardiac Arrest”, 2020.
Yuanyuan Pan, Minghuan Fu, Biao Cheng, Xuefei Tao and Jing Guo, “Enhanced Deep Learning
Assisted Convolutional Neural Network for Heart Disease Prediction on the Internet of Medical Things Platform”, 2020.
M. Sheetal Singh, Prakash Choudhary, “Stroke Prediction using Artificial Intelligence”, 2017.
Santhana Krishnan J. and Geetha S., “Prediction of Heart Disease using Machine Learning
Algorithms” ICIICT, 2019.
Downloads
Published
Issue
Section
License
You are free to:
- Share — copy and redistribute the material in any medium or format for any purpose, even commercially.
- Adapt — remix, transform, and build upon the material for any purpose, even commercially.
- The licensor cannot revoke these freedoms as long as you follow the license terms.
Under the following terms:
- Attribution — You must give appropriate credit , provide a link to the license, and indicate if changes were made . You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.
- No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.
Notices:
You do not have to comply with the license for elements of the material in the public domain or where your use is permitted by an applicable exception or limitation .
No warranties are given. The license may not give you all of the permissions necessary for your intended use. For example, other rights such as publicity, privacy, or moral rights may limit how you use the material.