Author
Listed:
- Pratibha Sharma
- Ved vrat Verma
- Manashree Mane
- Shashikant Patil
- Ansuman Samal
- Manni Sruthi
- Ayaan Faiz
Abstract
People are getting long-term illnesses like diabetes, heart disease, and high blood pressure more and more often. Because of this, it's even more important to find better ways to handle these situations and move quickly when they happen. Using AI-powered health informatics in predictive analytics seems like a good way to improve the quality of care and patient outcomes when dealing with long-term illnesses. This study looks at how AI models, like machine learning algorithms, predictive modelling, and data-driven analytics, can change how long-term illnesses are watched, identified, and treated. By looking at a lot of data from smart tech, medical pictures, and electronic health records (EHRs), AI systems can find patterns and guess how a disease will get worse before the symptoms show up. By finding high-risk patients early on, these insights can help healthcare workers make the best use of resources, give more personalised care, and cut costs. Using AI in health technology also makes it easier to make systems that can keep an eye on people with long-term illnesses in real time. These systems can keep an eye on vital signs, living factors, and drug compliance all the time. This can help people get help right away, which can cut down on problems and hospital stays. AI technologies can also help automate repetitive chores like data filing, medical support, and decision-making, which frees up healthcare workers to spend more time caring for patients directly. However, using AI to handle chronic diseases can be hard because of issues with data protection, the need for uniform data forms, and making sure that AI models can be understood and held accountable. At the end of the paper, the future uses of AI in managing chronic diseases are talked about. It is emphasized that healthcare workers, data scientists, and lawmakers need to keep researching and working together to get the most out of AI-driven health informatics.
Suggested Citation
Handle:
RePEc:dbk:medicw:v:3:y:2024:i::p:507:id:507
DOI: 10.56294/mw2024507
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