ARCHIVES

Original Article

AI-Based OCR System for Handwritten Medical Prescription Recognition and Interpretation

Shaik Sharjeel1 Mohammad Ubaidulla Arif2
1Student, MCA, Deccan College of Engineering and Technology, Hyderabad, Telangana, India. 2Assistant Professor, MCA, Deccan College of Engineering and Technology, Hyderabad, Telangana, India.

Published Online: May-August 2025

Pages: 365-370

Abstract

Handwritten medical prescriptions remain a common practice across healthcare systems, particularly in developing regions, yet they pose significant challenges due to poor legibility and inconsistent formats. Misinterpretation of these prescriptions by pharmacists or patients can result in serious consequences such as incorrect dosages, adverse drug reactions, and delayed treatments. To address this issue, this project proposes the design and development of an AI-Based Optical Character Recognition (OCR) System for Handwritten Medical Prescription Recognition and Interpretation. The system integrates deep learning models, specifically CNN-LSTM architectures, with Natural Language Processing (NLP) techniques to accurately extract key medical information such as patient and doctor names, prescribed drugs, dosages, and administration instructions. An image preprocessing pipeline including binarization, noise removal, and line segmentation enhances recognition accuracy, while integration with OCR engines like Tesseract ensures robust text detection. A web-based user interface, developed using Streamlit, enables users to upload scanned or photographed prescriptions and obtain structured, real-time outputs. The recognized data is securely stored in a database for easy retrieval and integration with pharmacy systems or electronic health records. Experimental validation highlights the system’s potential to significantly reduce human errors in prescription handling, improve workflow efficiency in healthcare settings, and contribute to digital healthcare transformation across multilingual and multicultural environments.

Related Articles

2025

Transforming Cyber-Physical Systems: Machine Learning for Secure and Efficient Solutions

2025

Exploring AI Techniques for Quantum Threat Detection and Prevention

2025

Maturity Models for Business Intelligence: An Overview

2025

INSPIRO: An AI Driven Institution Auditor

2025

Adaptive AI Framework for Anomaly Detection and DDoS Mitigation in Distributed Systems

2025

Predictive Modeling for College Admission Using Machine Learning and Statistical Methods

Share Article

X
LinkedIn
Facebook
WhatsApp

Or copy link

https://test.indjcst.com/archives/10.59256/indjcst.20250402050

*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.