Yanchun Lin, Isaiah K Mensah, Michelle Doering, Ryan C Shean, Nicholas C Spies
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引用次数: 0
Abstract
Laboratory test results play a crucial role in the modern medical decision-making process. As such, errors in any phase of the testing process can have substantial clinical and operational impacts. While the development of increasingly robust quality assurance systems has enhanced the reliability of laboratory results, opportunities for improvement still exist. Machine learning approaches offer the potential to evaluate complex patterns and discriminate physiological variation from laboratory errors. In this work, we critically evaluate the current state of published machine learning solutions to laboratory errors, while highlighting unmet needs and potential barriers to widespread implementation.
期刊介绍:
Critical Reviews in Clinical Laboratory Sciences publishes comprehensive and high quality review articles in all areas of clinical laboratory science, including clinical biochemistry, hematology, microbiology, pathology, transfusion medicine, genetics, immunology and molecular diagnostics. The reviews critically evaluate the status of current issues in the selected areas, with a focus on clinical laboratory diagnostics and latest advances. The adjective “critical” implies a balanced synthesis of results and conclusions that are frequently contradictory and controversial.