Dumkrieger Gina M, Chiang Chia-Chun, Zhang Pengfei, Minen Mia T, Cohen Fred, Hranilovich Jennifer A
Department of Neurology, Mayo Clinic, Phoenix, Arizona, USA.
Department of Neurology, Mayo Clinic, Rochester, Minnesota, USA.
Headache. 2025 Jan;65(1):180-190. doi: 10.1111/head.14880. Epub 2024 Dec 10.
The goal is to provide an overview of artificial intelligence (AI) and machine learning (ML) methodology and appraisal tailored to clinicians and researchers in the headache field to facilitate interdisciplinary communications and research.
The application of AI to the study of headache and other healthcare challenges is growing rapidly. It is critical that these findings be accurately interpreted by headache specialists, but this can be difficult for non-AI specialists.
This paper is a narrative review of the fundamentals required to understand ML/AI headache research. Using guidance from key leaders in the field of headache medicine and AI, important references were reviewed and cited to provide a comprehensive overview of the terminology, methodology, applications, pitfalls, and bias of AI.
We review how AI models are created, common model types, methods for evaluation, and examples of their application to headache medicine. We also highlight potential pitfalls relevant when consuming AI research, and discuss ethical issues of bias, privacy and abuse generated by AI. Additionally, we highlight recent related research from across headache-related applications.
Many promising current and future applications of ML and AI exist in the field of headache medicine. Understanding the fundamentals of AI will allow readers to understand and critically appraise AI-related research findings in their proper context. This paper will increase the reader's comfort in consuming AI/ML-based research and will prepare them to think critically about related research developments.
目标是为头痛领域的临床医生和研究人员提供针对人工智能(AI)和机器学习(ML)方法及评估的概述,以促进跨学科交流与研究。
AI在头痛研究及其他医疗保健挑战中的应用正在迅速增长。头痛专家准确解读这些研究结果至关重要,但对于非AI专家来说可能具有挑战性。
本文是对理解ML/AI头痛研究所需基础知识的叙述性综述。依据头痛医学和AI领域关键领导者的指导意见,对重要参考文献进行了回顾和引用,以全面概述AI的术语、方法、应用、陷阱和偏差。
我们回顾了AI模型的创建方式、常见模型类型、评估方法及其在头痛医学中的应用实例。我们还强调了在解读AI研究时可能存在的潜在陷阱,并讨论了AI产生的偏差、隐私和滥用等伦理问题。此外,我们突出了近期头痛相关应用的相关研究。
ML和AI在头痛医学领域目前和未来存在许多有前景的应用。了解AI基础知识将使读者能够在适当背景下理解和批判性评估与AI相关的研究结果。本文将提高读者对基于AI/ML研究的接受度,并使他们准备好对相关研究进展进行批判性思考。