International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
www.ijsr.net | Most Trusted Research Journal Since Year 2012

ISSN: 2319-7064



Informative Article | Medicine Science | India | Volume 6 Issue 2, February 2017

Online Multispecialty Hospital Management System

Ajay Mule, Siddhesh Naik, Vinson Noronha, Mihir Mule

- This paper Online Multispecialty Hospital Management System aim at automation of hospital system that provide service line operations for want of a better term (i.e. they provide care to individuals). As a result, in some of their information needs, and in terms of some of the systems with which they interact that distinction (managerial versus care provision) is only made by the kind of information they seek focused on individual patients as providers of care (service line), or conversely, focused on groups of patients, wards, business units or non-patient related (e.g. -finance, human resources (HR) and throughput), with their managerial hats on. This is therefore, the definition we will use of admin (some of whom also provide care), and of management information systems. This website Online Multispecialty Hospital Management System keeps track of day-to-day activities & records of its patients, doctors, nurses, ward boys and other staff personals that keep the hospital running smoothly & successfully. It allows to enter and retrieve details of both in-patient and out-patient easily. Patient id, patient name, address, admitted date, doctor name, and room numbers are entered in a form and stored for future reference. Also particular patient details can be viewed in the table using a separate form with an attribute patient id. This online web application provides recording and timely retrieval of great volumes of information. This information typically involves, patient personal information and medical history, staff information, room and ward, staff, operating theater scheduling and various other facilities. All of this information is managed in an efficient and cost wise fashion so that the resources are effectively utilized. Similarly, system automates the management of the hospital making it more efficient and error free. It aims at standardizing data, consolidating data ensuring data integrity and reducing inconsistencies. The project Online Multispecialty Hospital Management System is aimed to develop to maintain the dayto-day state of admission/discharge of patients, list of doctors, reports generation. All Information can be easily managed and accessed regarding patient personal details, medical history, staff details, room and ward scheduling, staff scheduling, operating theater scheduling and various facilities waiting lists. It aims at standardizing data, consolidating data ensuring data integrity and reducing inconsistencies.

Keywords: Web Application, Software process, Spiral model, Iterative development

Edition: Volume 6 Issue 2, February 2017

Pages: 46 - 48


How to Cite this Article?

Ajay Mule, Siddhesh Naik, Vinson Noronha, Mihir Mule, "Online Multispecialty Hospital Management System", International Journal of Science and Research (IJSR), https://www.ijsr.net/search_index_results_paperid.php?id=ART2017590, Volume 6 Issue 2, February 2017, 46 - 48

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