Recommendations for laboratory informatics specifications needed for the application of patient-based real time quality control
- PMID: 31194967
- DOI: 10.1016/j.cca.2019.06.009
Recommendations for laboratory informatics specifications needed for the application of patient-based real time quality control
Abstract
Patient based real time Quality Control (PBRTQC) algorithms provide many advantages over conventional QC approaches including lower cost, absence of commutability problems, continuous real-time monitoring of performance, and sensitivity to pre-analytical error. However, PBRTQC is not as simple to implement as conventional QC because of the requirement to access patient data as well as setting up appropriate rules, action protocols, and choosing best statistical algorithms. These requirements need capable and flexible laboratory informatics (middleware). In this document, the necessary features of software packages needed to support PBRTQC are discussed as well as recommendations for optimal integration of this technique into laboratory practice.
Keywords: Data mining; Middleware; Moving averages; Patient based real time quality control.
Copyright © 2019 Elsevier B.V. All rights reserved.
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