International Journal of Innovative Research in Computer and Communication Engineering

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TITLE AI-Powered Hospital Management System Using Flask and OCR-Based Medical Report Summarization
ABSTRACT In old days, hospitals used to keep all the patient records in big registers and files. Doctors had to search manually for patient history which was very time consuming and sometimes records got lost also. This project is made to solve these problems by making a web based hospital system using Python Flask framework. The main problem was that hospitals do not have proper digital system where patients can book appointments, doctors can write notes, lab technicians can update test results and admin can manage everything from one place. So this system is build to handle all these things together. The methodology used is building a role based web application where four types of users that is admin, doctor, lab technician and patient can login and do their specific works. SQLite database is used for storing all data and OpenAI GPT-4o-mini model is used for making AI summary of medical reports. Tesseract OCR is also used for reading text from image reports. PDF generation is done using ReportLab library. The system also keep audit logs of all activities. In conclusion this system make hospital work more easy, fast and digital and also give patients a friendly summary of their medical reports using artificial intelligence.
AUTHOR DHANUSH A U, DR. RAGHAVENDRA S P PG Student, Dept. of MCA, Jawaharlal Nehru New College of Engineering, Shivamogga, Karnataka, India Assistant Professor, Dept. of MCA, Jawaharlal Nehru New College of Engineering, Shivamogga, Karnataka, India
VOLUME 184
DOI DOI: 10.15680/IJIRCCE.2026.1405104
PDF pdf/104_AI-Powered Hospital Management System Using Flask and OCR-Based Medical Report Summarization.pdf
KEYWORDS
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