DEVELOPMENT OF AN AUTOMATED HOSPITAL MANAGEMENT SYSTEM FOR ENHANCED PATIENT CARE AND OPERATIONAL EFFICIENCY

Authors

  • Bittu Department Of Computer Science & Engineering, Echelon Institute of Technology, Faridabad
  • Megha Department Of Computer Science & Engineering, Echelon Institute of Technology, Faridabad
  • Anshul Gangwar Department Of Computer Science & Engineering, Echelon Institute of Technology, Faridabad
  • Pinky Yadav Department Of Computer Science & Engineering, Echelon Institute of Technology, Faridabad

DOI:

https://doi.org/10.29121/granthaalayah.v12.i7.2024.6098

Keywords:

Development, Automated, Management System, Patient Care, Operational Efficiency

Abstract [English]

The Hospital Management System (HMS) is a robust, computerized solution designed to streamline and manage the daily operations of a hospital. This system aims to improve the overall efficiency of hospital activities, ranging from patient management to billing, diagnosis, and medical record maintenance. The primary goal of the system is to automate and organize tasks such as managing inpatient and outpatient data, processing medical treatments, storing diagnostic records, generating bills, and tracking pharmacy and laboratory activities. Additionally, the system ensures seamless access to patient reports, allowing them to retrieve their medical history and test results from anywhere in the world, addressing the prevalent issue of delayed access to medical records after consultation.
One of the major issues faced by hospitals is the inefficient management of patient information, which is often recorded manually on paper, leading to increased administrative workload and the risk of errors. The Hospital Management System automates these manual processes, allowing staff to easily store and retrieve patient data. It also facilitates the creation of digital bills, maintains patient diagnosis records, tracks immunization details for children, and offers a centralized database of various diseases and treatment options.
The system eliminates the need for paper-based documentation, reducing the administrative burden on hospital staff, and ensuring more accurate, up-to-date information. For doctors, it provides instant access to patient histories, reducing the chances of missing important medical information. Overall, the Hospital Management System is designed to increase hospital productivity, improve patient care, and reduce errors by consolidating all hospital-related data into one centralized platform. This ensures smoother workflows, faster decision-making, and better communication across hospital departments, ultimately leading to improved healthcare delivery.
This project focuses on automating and digitizing key aspects of hospital operations, thereby creating a comprehensive solution to manage hospital activities efficiently and effectively.

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Published

2024-07-31

How to Cite

Bittu, Megha, Gangwar, A., & Yadav, P. (2024). DEVELOPMENT OF AN AUTOMATED HOSPITAL MANAGEMENT SYSTEM FOR ENHANCED PATIENT CARE AND OPERATIONAL EFFICIENCY. International Journal of Research -GRANTHAALAYAH, 12(7), 200–210. https://doi.org/10.29121/granthaalayah.v12.i7.2024.6098