Mirko Jerber Rodríguez Mallma, Luis Zuloaga-Rotta, Rubén Borja-Rosales, Josef Renato Rodríguez Mallma, Marcos Vilca-Aguilar, María Salas-Ojeda, David Mauricio
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引用次数: 0
摘要
近年来,人工智能(AI)方法,特别是机器学习(ML)模型,在不同的知识领域都取得了卓越的成果,而健康领域则是其最具影响力的应用领域之一。然而,要想可靠地应用这些模型,就必须为用户提供清晰、简单、透明的医疗决策过程解释。本系统综述旨在调查脑疾病研究中使用的 ML 模型中可解释性的使用和应用情况。从 2014 年 1 月到 2023 年 12 月,我们在 Web of Science、Scopus 和 PubMed 三大文献数据库中进行了系统检索。在最初搜索到的总共 682 项研究中,共确定并分析了 133 项相关研究,其中研究了医学背景下 ML 模型的可解释性,确定了在 20 种脑部疾病研究中应用的 11 种 ML 模型和 12 种可解释性技术。
Explainable Machine Learning Models for Brain Diseases: Insights from a Systematic Review.
In recent years, Artificial Intelligence (AI) methods, specifically Machine Learning (ML) models, have been providing outstanding results in different areas of knowledge, with the health area being one of its most impactful fields of application. However, to be applied reliably, these models must provide users with clear, simple, and transparent explanations about the medical decision-making process. This systematic review aims to investigate the use and application of explainability in ML models used in brain disease studies. A systematic search was conducted in three major bibliographic databases, Web of Science, Scopus, and PubMed, from January 2014 to December 2023. A total of 133 relevant studies were identified and analyzed out of a total of 682 found in the initial search, in which the explainability of ML models in the medical context was studied, identifying 11 ML models and 12 explainability techniques applied in the study of 20 brain diseases.