Evaluation of Failure Causes in Employing Hospital Information Systems
Subject Areas : Business StrategyHossein Sayyadi Tooranloo 1 , Sepideh Saghafi 2 , Arezoo Sadat Ayatollah 3
1 - Department of Management, Meybod University, Meybod, Iran
2 - Department of Public Adminstration, University of Tehran Kish International campus, Tehran, Iran
3 - Department of Information Technology Management, University of Science & Art,Yazd, Iran
Keywords: Failure mode and effects analysis (FMEA), Hospital Information Systems (HIS), Intuitionistic Fuzzy,
Abstract :
Today, the information systems play a critical role in business for each organization. Like other organizations, hospitals use information systems for data collection, data storage, data processing and the like to have long-term and short-term achievements. Despite the very benefits of implementing HIS and its costly implementation, the HIS project sometimes fails. The importance of the HIS failure and preventive practices in this regard have led researchers investigate the causes of failure for information systems in hospitals. In this paper, an FMEA-based model is presented in an intuitionisticfuzzy environment to evaluate the HIS failure factors. For this purpose, Data required to implement the proposed model were collected in 5 hospital, in Kerman (Iran). Based on research studies and survey of hospital academic experts, a total number of 27 failure modes were determined for the implementation HIS. The results of the proposed approach indicated that 8 factors are of paramount importance in terms of HIS failure causes: Individuals' lack of skill/knowledge, lack of integration between system and organizational activities, unrealistic planning, lack of IT management or weak project team (information system), improper software development, lack of managerial skills, misdiagnosis of roles and responsibilities, inconsistency between corporate culture and change requirements (compatibility).
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