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心血管成像相关机器学习评估的建议要求(PRIME):检查表:经美国心脏病学会医疗保健创新理事会审查。

Proposed Requirements for Cardiovascular Imaging-Related Machine Learning Evaluation (PRIME): A Checklist: Reviewed by the American College of Cardiology Healthcare Innovation Council.

机构信息

West Virginia University Heart and Vascular Institute, Division of Cardiology, Morgantown, West Virginia.

West Virginia University Heart and Vascular Institute, Division of Cardiology, Morgantown, West Virginia.

出版信息

JACC Cardiovasc Imaging. 2020 Sep;13(9):2017-2035. doi: 10.1016/j.jcmg.2020.07.015.

DOI:10.1016/j.jcmg.2020.07.015
PMID:32912474
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7953597/
Abstract

Machine learning (ML) has been increasingly used within cardiology, particularly in the domain of cardiovascular imaging. Due to the inherent complexity and flexibility of ML algorithms, inconsistencies in the model performance and interpretation may occur. Several review articles have been recently published that introduce the fundamental principles and clinical application of ML for cardiologists. This paper builds on these introductory principles and outlines a more comprehensive list of crucial responsibilities that need to be completed when developing ML models. This paper aims to serve as a scientific foundation to aid investigators, data scientists, authors, editors, and reviewers involved in machine learning research with the intent of uniform reporting of ML investigations. An independent multidisciplinary panel of ML experts, clinicians, and statisticians worked together to review the theoretical rationale underlying 7 sets of requirements that may reduce algorithmic errors and biases. Finally, the paper summarizes a list of reporting items as an itemized checklist that highlights steps for ensuring correct application of ML models and the consistent reporting of model specifications and results. It is expected that the rapid pace of research and development and the increased availability of real-world evidence may require periodic updates to the checklist.

摘要

机器学习(ML)在心脏病学领域的应用日益广泛,特别是在心血管成像领域。由于 ML 算法固有的复杂性和灵活性,模型性能和解释可能存在不一致。最近发表了几篇综述文章,介绍了 ML 在心内科医生中的基本原理和临床应用。本文基于这些介绍性原则,列出了在开发 ML 模型时需要完成的更全面的关键职责清单。本文旨在为参与机器学习研究的研究人员、数据科学家、作者、编辑和审稿人提供科学依据,以便统一报告 ML 研究。一个独立的多学科 ML 专家、临床医生和统计学家小组共同审查了 7 组要求的理论基础,这些要求可能会减少算法错误和偏差。最后,本文总结了一份报告项目清单,作为一个分项清单,突出了确保正确应用 ML 模型以及一致报告模型规范和结果的步骤。预计研究和开发的快速步伐以及真实世界证据的增加可能需要定期更新清单。

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