Author:
Dr N Mookhambika, B Balaganesh, G Boopathy, E Balamurugan, S Bharath
Published in
Journal of Science Technology and Research
( Volume 7, Issue 01 )
Abstract
Artificial Intelligence (AI) has become one of the most important technologies used in modern healthcare systems. With the rapid growth of digital health services, AI-based systems are helping both patients and medical professionals by providing faster analysis, better diagnosis support, and improved healthcare management. An AI-Powered Healthcare Assistant is a smart system designed to assist users by analyzing symptoms, providing medical suggestions, and helping manage personal health information. many people today face challenges when trying to access healthcare services. In rural areas and small towns, hospitals and doctors may not always be available. Even in urban areas, long waiting times and high medical costs can make healthcare difficult to access. Because of these challenges, intelligent healthcare systems are becoming increasingly important. An AI-Powered Healthcare Assistant can help users quickly understand their symptoms and guide them toward proper medical care. The system works by allowing users to enter their symptoms through a web or mobile interface. Artificial intelligence algorithms analyze these symptoms using a large medical dataset that contains information about diseases, symptoms, and treatments. Artificial intelligence models compare the entered symptoms with existing medical patterns to predict possible health conditions. The system can also recommend basic precautions, suggest when to consult a doctor, and provide general health advice. This technology helps improve early detection of diseases and supports better healthcare decision-making for users.
Keywords
Artificial Intelligence, Healthcare Assistant, Machine Learning, Symptom Analysis, Digital Healthcare.
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