An integrative approach to medical laboratory equipment risk management
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Date
2024-02
Journal Title
Journal ISSN
Volume Title
Type
Article
Publisher
Nature Publishing Group
Series Info
Scientifc Reports;(2024) 14:4045
Scientific Journal Rankings
Abstract
Medical Laboratory Equipment (MLE) is one of the most infuential means for diagnosing a patient
in healthcare facilities. The accuracy and dependability of clinical laboratory testing is essential for
making disease diagnosis. A risk-reduction plan for managing MLE is presented in the study. The
methodology was initially based on the Failure Mode and Efects Analysis (FMEA) method. Because of
the drawbacks of standard FMEA implementation, a Technique for Ordering Preference by Similarity
to the Ideal Solution (TOPSIS) was adopted in addition to the Simple Additive Weighting (SAW)
method. Each piece of MLE under investigation was given a risk priority number (RPN), which in turn
assigned its risk level. The equipment performance can be improved, and maintenance work can be
prioritized using the generated RPN values. Moreover, fve machine learning classifers were employed
to classify TOPSIS results for appropriate decision-making. The current study was conducted on 15
various hospitals in Egypt, utilizing a 150 MLE set of data from an actual laboratory, considering three
diferent types of MLE. By applying the TOPSIS and SAW methods, new RPN values were obtained to
rank the MLE risk. Because of its stability in ranking the MLE risk value compared to the conventional
FMEA and SAW methods, the TOPSIS approach has been accepted. Thus, a prioritized list of MLEs was
identifed to make decisions related to appropriate incoming maintenance and scrapping strategies
according to the guidance of machine learning classifers.
Description
Keywords
Risk management, FMEA, TOPSIS, Machine learning, Medical laboratory, Multi-criteria decision-making