Recent Advancement In Healthcare Management By Using Technology

Main Article Content

Christian Isha
Adarsh S Bhadoria
Dr. Pragnesh Patani

Abstract

Recent advancements in healthcare management through the use of technology have revolutionized the way healthcare is delivered and managed. Here are some starting points to explore this topic: Information and communication technologies (ICT), Electronic Health Records (EHRs), Wearable Health Devices, and Big Data. Information and communication technologies (ICT) are being widely used in healthcare management systems. Rapid advancements in ICT provide solutions to the problems in healthcare management systems. Also, particular advances in the field of Information Technology (IT) are assisting in better management of health appointments and record management. With the proliferation of IT and management, data is now playing a vital role in diagnostics, drug administration, and management of healthcare services. Smart healthcare uses a new generation of information technologies, such as the Internet of Things (IoT), and big data, to transform the traditional medical system in an all-around way, making healthcare more efficient, more convenient, and more personalized. Advancements in Wearable Healthcare Devices have transformed the healthcare system by reducing hospital workload and giving more accurate and timely data. Wearable technology has made remarkable advancements in healthcare, and its future perspective is promising. By providing continuous monitoring, personalized insights, and remote patient management, wearables have the potential to improve healthcare outcomes, enhance preventive care, and contribute to population health management. Advanced healthcare sensors are used for the easy monitoring of patients.  These technologies allow the monitoring and analysis of various health parameters in real-time. Electronic Health Records (EHRs) to the utilization of telemedicine, and wearable devices, technology has enabled healthcare professionals to provide better, more accessible, and more personalized care. As we move forward, it is crucial to strike a balance between the benefits of technology and the essential human element of care, all while addressing the associated challenges to ensure a bright and sustainable future for healthcare management.

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How to Cite
Christian Isha, Adarsh S Bhadoria, & Dr. Pragnesh Patani. (2024). Recent Advancement In Healthcare Management By Using Technology. Journal of Advanced Zoology, 45(2), 539–548. https://doi.org/10.53555/jaz.v45i2.3934
Section
Articles
Author Biographies

Christian Isha

Student, Khyati College of Pharmacy, Palodia, Ahmedabad

Adarsh S Bhadoria

Assistant Professor, Khyati College of Pharmacy, Palodia, Ahmedabad

Dr. Pragnesh Patani

Principal, Khyati College of Pharmacy, Palodia, Ahmedabad

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