医学
止痛药
社会心理的
临床试验
慢性疼痛
精密医学
重症监护医学
个性化医疗
药物基因组学
物理疗法
生物信息学
内科学
麻醉
药理学
精神科
病理
生物
作者
Robert R. Edwards,Robert H. Dworkin,Dennis C. Turk,Martin S. Angst,Raymond A. Dionne,Roy Freeman,Per Hansson,Simon Haroutounian,Lars Arendt‐Nielsen,Nadine Attal,Ralf Baron,Joanna M. Brell,Shay Bujanover,Laurie B. Burke,Daniel B. Carr,Amy S. Chappell,Penney Cowan,Mila Etropolski,Roger B. Fillingim,Jennifer S. Gewandter
出处
期刊:Pain reports
[Wolters Kluwer]
日期:2021-01-01
卷期号:6 (1): e896-e896
被引量:23
标识
DOI:10.1097/pr9.0000000000000896
摘要
Abstract There is tremendous interpatient variability in the response to analgesic therapy (even for efficacious treatments), which can be the source of great frustration in clinical practice. This has led to calls for “precision medicine” or personalized pain therapeutics (ie, empirically based algorithms that determine the optimal treatments, or treatment combinations, for individual patients) that would presumably improve both the clinical care of patients with pain and the success rates for putative analgesic drugs in phase 2 and 3 clinical trials. However, before implementing this approach, the characteristics of individual patients or subgroups of patients that increase or decrease the response to a specific treatment need to be identified. The challenge is to identify the measurable phenotypic characteristics of patients that are most predictive of individual variation in analgesic treatment outcomes, and the measurement tools that are best suited to evaluate these characteristics. In this article, we present evidence on the most promising of these phenotypic characteristics for use in future research, including psychosocial factors, symptom characteristics, sleep patterns, responses to noxious stimulation, endogenous pain-modulatory processes, and response to pharmacologic challenge. We provide evidence-based recommendations for core phenotyping domains and recommend measures of each domain.
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