Holmes Scott A, Upadhyay Jaymin, Borsook David
Department of Anesthesia, Critical Care and Pain Medicine Harvard Medical School, Boston, United States.
Pain Rep. 2019 Aug 7;4(4):e768. doi: 10.1097/PR9.0000000000000768. eCollection 2019 Jul-Aug.
Differentiating subtypes of chronic pain still remains a challenge-both from a subjective and objective point of view. Personalized medicine is the current goal of modern medical care and is limited by the subjective nature of patient self-reporting of symptoms and behavioral evaluation. Physiology-focused techniques such as genome and epigenetic analyses inform the delineation of pain groups; however, except under rare circumstances, they have diluted effects that again, share a common reliance on behavioral evaluation. The application of structural neuroimaging towards distinguishing pain subtypes is a growing field and may inform pain-group classification through the analysis of brain regions showing hypertrophic and atrophic changes in the presence of pain. Analytical techniques such as machine-learning classifiers have the capacity to process large volumes of data and delineate diagnostically relevant information from neuroimaging analysis. The issue of defining a "brain type" is an emerging field aimed at interpreting observed brain changes and delineating their clinical identity/significance. In this review, 2 chronic pain conditions (migraine and irritable bowel syndrome) with similar clinical phenotypes are compared in terms of their structural neuroimaging findings. Independent investigations are compared with findings from application of machine-learning algorithms. Findings are discussed in terms of differentiating patient subgroups using neuroimaging data in patients with chronic pain and how they may be applied towards defining a personalized pain signature that helps segregate patient subgroups (eg, migraine with and without aura, with or without nausea; irritable bowel syndrome vs other functional gastrointestinal disorders).
从主观和客观角度来看,区分慢性疼痛的亚型仍然是一项挑战。个性化医疗是现代医疗护理的当前目标,但受到患者症状自我报告和行为评估主观性的限制。以生理学为重点的技术,如基因组和表观遗传学分析,为疼痛群体的划分提供了信息;然而,除了在极少数情况下,它们的效果有限,并且同样普遍依赖行为评估。应用结构神经影像学来区分疼痛亚型是一个不断发展的领域,通过分析在疼痛存在时显示肥厚和萎缩变化的脑区,可能为疼痛群体分类提供信息。机器学习分类器等分析技术有能力处理大量数据,并从神经影像学分析中提取与诊断相关的信息。定义“脑型”的问题是一个新兴领域,旨在解释观察到的脑变化并确定其临床特征/意义。在本综述中,对两种具有相似临床表型的慢性疼痛病症(偏头痛和肠易激综合征)的结构神经影像学发现进行了比较。将独立研究与机器学习算法应用的结果进行了比较。讨论了如何利用神经影像学数据区分慢性疼痛患者的亚组,以及这些数据如何用于定义个性化疼痛特征,以帮助区分患者亚组(例如,有无先兆的偏头痛、有无恶心;肠易激综合征与其他功能性胃肠疾病)。