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A Map for Clinical Laboratories Management Indicators in the Intelligent Dashboard Publisher



Azadmanjir Z1 ; Torabi M2 ; Safdari R1 ; Bayat M3 ; Golmahi F2
Authors
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Authors Affiliations
  1. 1. Health Information Management Department, School of Allied Medical Sciences, Tehran University of Medical Sciences, Tehran, Iran
  2. 2. Innovation Initiative, Tehran University of Medical Sciences, Tehran, Iran
  3. 3. Statistics Department, Sina Hospital, Tehran University of Medical Science, Tehran, Iran

Source: Acta Informatica Medica Published:2015


Abstract

Introduction: management challenges of clinical laboratories are more complicated for educational hospital clinical laboratories. Managers can use tools of business intelligence (BI), such as information dashboards that provide the possibility of intelligent decision-making and problem solving about increasing income, reducing spending, utilization management and even improving quality. Critical phase of dashboard design is setting indicators and modeling causal relations between them. The paper describes the process of creating a map for laboratory dashboard. Methods: the study is one part of an action research that begins from 2012 by innovation initiative for implementing laboratory intelligent dashboard. Laboratories management problems were determined in educational hospitals by the brainstorming sessions. Then, with regard to the problems key performance indicators (KPIs) specified. Results: the map of indicators designed in form of three layered. They have a causal relationship so that issues measured in the subsequent layers affect issues measured in the prime layers. Conclusion: the proposed indicator map can be the base of performance monitoring. However, these indicators can be modified to improve during iterations of dashboard designing process. © 2015 Zahra Azadmanjir, Mashallah Torabi, Reza Safdari, Maryam Bayat, Fatemeh Golmahi.
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