Marco Cascella, Daniela Schiavo, Arturo Cuomo, Alessandro Ottaiano, Francesco Perri, Renato Patrone, Sara Migliarelli, Elena Giovanna Bignami, Alessandro Vittori, Francesco Cutugno
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引用次数: 0
摘要
虽然正确的疼痛评估是确定适当疗法的必要条件,但自我报告的疼痛程度评估存在一些局限性。数据驱动的人工智能(AI)方法可用于自动疼痛评估(APA)研究。我们的目标是开发客观、标准化和可推广的工具,用于不同临床环境下的疼痛评估。本文旨在讨论 APA 在研究和临床场景中应用的研究现状和前景。本文将讨论人工智能功能的原理。为了便于叙述,本文将人工智能方法分为基于行为学的方法和基于神经生理学的疼痛检测方法。由于疼痛通常伴随着自发的面部行为,因此有几种 APA 方法是基于图像分类和特征提取的。通过自然语言策略、身体姿势和呼吸衍生元素获得的语言特征是其他基于行为的研究方法。基于神经生理学的疼痛检测是通过脑电图、肌电图、皮肤电活动和其他生物信号获得的。最近的方法通过将行为与神经生理学发现相结合,采用了多模式策略。在方法方面,早期的研究采用机器学习算法,如支持向量机、决策树和随机森林分类器。最近,卷积神经网络和递归神经网络等人工神经网络算法也开始应用,甚至是结合使用。临床医生和计算机科学家的合作计划必须以构建和处理强大的数据集为目标,这些数据集可用于从急性疼痛到不同慢性疼痛的各种情况。最后,在研究人工智能在疼痛研究和管理中的应用时,应用可解释性和伦理概念至关重要。
Artificial Intelligence for Automatic Pain Assessment: Research Methods and Perspectives.
Although proper pain evaluation is mandatory for establishing the appropriate therapy, self-reported pain level assessment has several limitations. Data-driven artificial intelligence (AI) methods can be employed for research on automatic pain assessment (APA). The goal is the development of objective, standardized, and generalizable instruments useful for pain assessment in different clinical contexts. The purpose of this article is to discuss the state of the art of research and perspectives on APA applications in both research and clinical scenarios. Principles of AI functioning will be addressed. For narrative purposes, AI-based methods are grouped into behavioral-based approaches and neurophysiology-based pain detection methods. Since pain is generally accompanied by spontaneous facial behaviors, several approaches for APA are based on image classification and feature extraction. Language features through natural language strategies, body postures, and respiratory-derived elements are other investigated behavioral-based approaches. Neurophysiology-based pain detection is obtained through electroencephalography, electromyography, electrodermal activity, and other biosignals. Recent approaches involve multimode strategies by combining behaviors with neurophysiological findings. Concerning methods, early studies were conducted by machine learning algorithms such as support vector machine, decision tree, and random forest classifiers. More recently, artificial neural networks such as convolutional and recurrent neural network algorithms are implemented, even in combination. Collaboration programs involving clinicians and computer scientists must be aimed at structuring and processing robust datasets that can be used in various settings, from acute to different chronic pain conditions. Finally, it is crucial to apply the concepts of explainability and ethics when examining AI applications for pain research and management.
期刊介绍:
Pain Research and Management is a peer-reviewed, Open Access journal that publishes original research articles, review articles, and clinical studies in all areas of pain management.
The most recent Impact Factor for Pain Research and Management is 1.685 according to the 2015 Journal Citation Reports released by Thomson Reuters in 2016.