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Smart Healthcare Revolution: Artificial Intelligence-Based Futuristic Healthcare Innovation as a Form of Optimization Health Facilities in Indonesia
0
Zitationen
6
Autoren
2025
Jahr
Abstract
Smart Healthcare Revolution is a service optimization innovation with a futuristic hospital concept driven by advanced and innovative technology to improve all aspects of health facilities, from diagnosis to patient management. Artificial Intelligence (AI), Machine Learning, the Internet of Things (IoT), and Big Data Analysis technologies are the main pillars of the system that will be developed according to the government's three concepts in realizing intelligent hospitals. This innovation creates a practical and rapid healthcare ecosystem that offers significant benefits in diagnostic accuracy, operational efficiency and improved patient experience. This innovation is expected to improve the overall quality of healthcare and create better collaboration among healthcare providers, including hospitals, physicians and other related parties. The Smart Healthcare Revolution innovation idea in Indonesia has the potential for significant impact in the areas of health, economy and human resources. In healthcare, hospital technology can improve service quality, speed up diagnosis and provide more effective treatment. Enhanced operational efficiency and disease prevention through technology can help reduce healthcare expenditures and generate positive economic outcomes. With this innovation, the country is projected to save approximately IDR 150 trillion annually in overseas medical expenses. Furthermore, it is expected to cut the cost of importing pharmaceutical raw materials by up to 50%. In addition, it has the potential to stimulate the growth of Indonesia’s healthcare technology industry, generate employment opportunities, and increase investment in research and development.
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