测量疼痛和伤害感:通过计算科学家的眼镜。方法的跨学科概述。

Frontiers in network physiology Pub Date : 2023-02-10 eCollection Date: 2023-01-01 DOI:10.3389/fnetp.2023.1099282
Ekaterina Kutafina, Susanne Becker, Barbara Namer
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引用次数: 0

摘要

在健康状态下,疼痛在自然生物反馈回路中发挥着重要作用,有助于检测和预防潜在的有害刺激和情况。然而,疼痛可以成为慢性的,并作为一种病理状态,失去其信息和适应功能。有效的疼痛治疗仍然是一个很大程度上未得到满足的临床需求。一个有希望改善疼痛特征的途径,以及更有效的疼痛治疗的潜力,是通过尖端的计算方法整合不同的数据模式。使用这些方法,可以创建和利用疼痛信号的多尺度、复杂和网络模型,以造福患者。这些模型需要来自医学、生物学、生理学、心理学以及数学和数据科学等不同研究领域的专家进行合作。协作团队的高效工作需要发展共同的语言和共同的理解水平作为先决条件。满足这一需求的方法之一是提供疼痛研究领域内某些主题的易于理解的概述。在这里,我们为计算研究人员提出了一个关于人类疼痛评估主题的概述。与疼痛相关的量化对于建立计算模型是必要的。然而,正如国际疼痛研究协会(IASP)所定义的那样,疼痛是一种感官和情感体验,因此无法客观地测量和量化。这就需要明确区分伤害感受、疼痛和疼痛相关因素。因此,在这里,我们回顾了将疼痛作为一种感知进行评估的方法,并将伤害感知作为人类这种感知的生物学基础,目的是创建建模选项的路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measuring pain and nociception: Through the glasses of a computational scientist. Transdisciplinary overview of methods.

In a healthy state, pain plays an important role in natural biofeedback loops and helps to detect and prevent potentially harmful stimuli and situations. However, pain can become chronic and as such a pathological condition, losing its informative and adaptive function. Efficient pain treatment remains a largely unmet clinical need. One promising route to improve the characterization of pain, and with that the potential for more effective pain therapies, is the integration of different data modalities through cutting edge computational methods. Using these methods, multiscale, complex, and network models of pain signaling can be created and utilized for the benefit of patients. Such models require collaborative work of experts from different research domains such as medicine, biology, physiology, psychology as well as mathematics and data science. Efficient work of collaborative teams requires developing of a common language and common level of understanding as a prerequisite. One of ways to meet this need is to provide easy to comprehend overviews of certain topics within the pain research domain. Here, we propose such an overview on the topic of pain assessment in humans for computational researchers. Quantifications related to pain are necessary for building computational models. However, as defined by the International Association of the Study of Pain (IASP), pain is a sensory and emotional experience and thus, it cannot be measured and quantified objectively. This results in a need for clear distinctions between nociception, pain and correlates of pain. Therefore, here we review methods to assess pain as a percept and nociception as a biological basis for this percept in humans, with the goal of creating a roadmap of modelling options.

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