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Main Authors: Alorbany, Arwa, Sheta, Mariam, Hagag, Ahmed, Elshaarawy, Mohamed, Elharty, Youssef, Fares, Ahmed
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.05603
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author Alorbany, Arwa
Sheta, Mariam
Hagag, Ahmed
Elshaarawy, Mohamed
Elharty, Youssef
Fares, Ahmed
author_facet Alorbany, Arwa
Sheta, Mariam
Hagag, Ahmed
Elshaarawy, Mohamed
Elharty, Youssef
Fares, Ahmed
contents Digital healthcare infrastructure is crucial for global medical service delivery. Egypt faces EHR adoption barriers: only 314 hospitals had such systems as of Oct 2024. This limits data management and decision-making. This project introduces an EHR system for Egypt's Universal Health Insurance and healthcare ecosystem. It simplifies data management by centralizing medical histories with a scalable micro-services architecture and polyglot persistence for real-time access and provider communication. Clinical workflows are enhanced via patient examination and history tracking. The system uses the Llama3-OpenBioLLM-70B model to generate summaries of medical histories, provide chatbot features, and generate AI-based medical reports, enabling efficient searches during consultations. A Vision Transformer (ViT) aids in pneumonia classification. Evaluations show the AI excels in capturing details (high recall) but needs improvement in concise narratives. With optimization (retrieval-augmented generation, local data fine-tuning, interoperability protocols), this AI-driven EHR could enhance diagnostic support, decision-making, and healthcare delivery in Egypt.
format Preprint
id arxiv_https___arxiv_org_abs_2502_05603
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AI-Driven Electronic Health Records System for Enhancing Patient Data Management and Diagnostic Support in Egypt
Alorbany, Arwa
Sheta, Mariam
Hagag, Ahmed
Elshaarawy, Mohamed
Elharty, Youssef
Fares, Ahmed
Computers and Society
Digital healthcare infrastructure is crucial for global medical service delivery. Egypt faces EHR adoption barriers: only 314 hospitals had such systems as of Oct 2024. This limits data management and decision-making. This project introduces an EHR system for Egypt's Universal Health Insurance and healthcare ecosystem. It simplifies data management by centralizing medical histories with a scalable micro-services architecture and polyglot persistence for real-time access and provider communication. Clinical workflows are enhanced via patient examination and history tracking. The system uses the Llama3-OpenBioLLM-70B model to generate summaries of medical histories, provide chatbot features, and generate AI-based medical reports, enabling efficient searches during consultations. A Vision Transformer (ViT) aids in pneumonia classification. Evaluations show the AI excels in capturing details (high recall) but needs improvement in concise narratives. With optimization (retrieval-augmented generation, local data fine-tuning, interoperability protocols), this AI-driven EHR could enhance diagnostic support, decision-making, and healthcare delivery in Egypt.
title AI-Driven Electronic Health Records System for Enhancing Patient Data Management and Diagnostic Support in Egypt
topic Computers and Society
url https://arxiv.org/abs/2502.05603