Machine learning-based error detection in the clinical laboratory: a critical review.

IF 5.5 2区 医学 Q1 MEDICAL LABORATORY TECHNOLOGY
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.

临床实验室中基于机器学习的错误检测:综述。
实验室检测结果在现代医疗决策过程中起着至关重要的作用。因此,测试过程中任何阶段的错误都可能对临床和操作产生重大影响。虽然日益健全的质量保证体系的发展提高了实验室结果的可靠性,但改进的机会仍然存在。机器学习方法提供了评估复杂模式和区分实验室错误的生理变化的潜力。在这项工作中,我们批判性地评估了针对实验室错误的已发表机器学习解决方案的现状,同时强调了未满足的需求和广泛实施的潜在障碍。
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来源期刊
CiteScore
20.00
自引率
0.00%
发文量
25
审稿时长
>12 weeks
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.
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