BLOOD PROTEOMICS AND PAIN - A TRANSLATIONAL STUDY TO PROGNOSTICATE PAIN PHENOTYPES AND ASSESS NEW BIOMARKERS FOR PREVENTING PAIN IN HUMANS

Daniel Segelcke, Julia R Sondermann, Christin Kappert, Bruno Pradier, Dennis Goerlich, Manfred Fobker, Jan Vollert, Peter K. Zahn, Manuela Schmidt, Esther M. Pogatzki-Zahn
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Abstract

Personalized strategies in pain management and prevention should be based on individual risk factors as early as possible, but the factors most relevant are not yet known. An innovative approach would be to integrate multi-modal risk factors, including blood proteomics, in predicting high pain responders and using them as targets for personalized treatment options. Here, we determined and mapped multi-modal factors to prognosticate a phenotype with high risk of developing pain and hyperalgesia after an experimental incision in humans. We profiled unbiased blood plasma proteome signature of 26 male volunteers, assessed psychophysical and psychological aspects before incision injury. Outcome measures were pain intensity ratings and the extent of the area of hyperalgesia to mechanical stimuli surrounding the incision as a proxy for central sensitization. Phenotype-based stratification resulted in the identification of low- and high-responders for the two different outcome measures. Logistic regression analysis revealed prognostic potential for blood plasma proteins and for psychophysical and psychological parameters. The combination of certain parameters increased the prognostic accuracy for both outcome measures, exceeding 97%. In high-responders, term-term-interaction network analysis showed a proteome signature of a low-grade inflammation reaction. Intriguingly, in silico drug repurposing indicates a high potential for specific antidiabetic and anti-inflammatory drugs already available. In conclusion, we show an integrated pipeline that provides a valuable resource for patient stratification and the identification of (i) multi-feature prognostic models, (ii) treatment targets, and (iii) mechanistic correlates that may be relevant for individualized management of pain and its long-term consequences.
血液蛋白质组学与疼痛--预测疼痛表型和评估预防人类疼痛的新生物标志物的转化研究
疼痛管理和预防的个性化策略应尽早以个体风险因素为基础,但最相关的因素尚不清楚。一种创新的方法是整合多模态风险因素,包括血液蛋白质组学,以预测高疼痛反应者,并将其作为个性化治疗方案的目标。在这里,我们确定并绘制了多模态因素图,以预测人类在实验性切口后出现疼痛和痛觉减退的高风险表型。我们对 26 名男性志愿者的血浆蛋白质组特征进行了无偏见分析,并对切口损伤前的心理物理和心理方面进行了评估。结果测量指标是疼痛强度评级和切口周围机械刺激的痛觉减退程度,以此作为中枢敏化的替代指标。通过基于表型的分层,确定了两种不同结果测量的低响应者和高响应者。逻辑回归分析表明,血浆蛋白以及精神物理和心理参数具有预后潜力。某些参数的组合提高了两种结果测量的预后准确率,超过了 97%。在高应答者中,术语-交互网络分析显示了低度炎症反应的蛋白质组特征。耐人寻味的是,硅学药物再利用表明,现有的特异性抗糖尿病和抗炎药物具有很大的潜力。总之,我们展示了一个综合管道,它为患者分层和确定(i)多特征预后模型、(ii)治疗目标和(iii)可能与疼痛及其长期后果的个体化管理相关的机理相关性提供了宝贵的资源。
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