检验医学中机器学习的严格验证:质量改进指南。

IF 6.6 2区 医学 Q1 MEDICAL LABORATORY TECHNOLOGY
Hunter A Miller, Roland Valdes
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引用次数: 0

摘要

人工智能(AI)在检验医学中的应用将彻底改变使用临床实验室信息的预测建模。机器学习(ML)是人工智能的一个分支学科,涉及到数据集的拟合算法,广泛用于各种学科的数据驱动预测建模。在系统综述中报告的大多数ML研究缺乏质量保证的关键方面。在临床检验医学中,重要的是要考虑分析方法、测定校准、协调、分析前误差、干扰和影响被测分析物浓度的生理因素的差异,这些差异也可能影响ML模型的下游稳健性和可靠性。在本文中,我们讨论了ML分类模型的质量改进和适当验证的需要,目的是引起病理学和实验室医学领域的研究人员、手稿审稿人和期刊编辑对关键概念的关注。一些现有的预测建模指南和建议可以很容易地适应实验室医学ML模型的发展。我们总结了机器学习的基本概述和当前指南中的关键点,包括应用机器学习的优势和缺陷。此外,我们在当前监管框架的背景下,在临床分析和机器学习模型的验证之间进行了类比。本文还讨论了分类性能指标、模型可解释性和数据质量的重要性,以及加强期刊提交要求的建议。虽然本文的重点是ML在实验室医学中的应用,但其中许多概念也扩展到医学和生物医学科学的其他领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rigorous validation of machine learning in laboratory medicine: guidance toward quality improvement.

The application of artificial intelligence (AI) in laboratory medicine will revolutionize predictive modeling using clinical laboratory information. Machine learning (ML), a sub-discipline of AI, involves fitting algorithms to datasets and is broadly used for data-driven predictive modeling in various disciplines. The majority of ML studies reported in systematic reviews lack key aspects of quality assurance. In clinical laboratory medicine, it is important to consider how differences in analytical methodologies, assay calibration, harmonization, pre-analytical errors, interferences, and physiological factors affecting measured analyte concentrations may also affect the downstream robustness and reliability of ML models. In this article, we address the need for quality improvement and proper validation of ML classification models, with the goal of bringing attention to key concepts pertinent to researchers, manuscript reviewers, and journal editors within the field of pathology and laboratory medicine. Several existing predictive modeling guidelines and recommendations can be readily adapted to the development of ML models in laboratory medicine. We summarize a basic overview of ML and key points from current guidelines including advantages and pitfalls of applied ML. In addition, we draw a parallel between validation of clinical assays and ML models in the context of current regulatory frameworks. The importance of classification performance metrics, model explainability, and data quality along with recommendations for strengthening journal submission requirements are also discussed. Although the focus of this article is on the application of ML in laboratory medicine, many of these concepts extend into other areas of medicine and biomedical science as well.

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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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