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Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations

机译:根据感觉特征对周围神经性疼痛患者进行分层:算法和样本量建议

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摘要

In a recent cluster analysis, it has been shown that patients with peripheral neuropathic pain can be grouped into 3 sensory phenotypes based on quantitative sensory testing profiles, which are mainly characterized by either sensory loss, intact sensory function and mild thermal hyperalgesia and/or allodynia, or loss of thermal detection and mild mechanical hyperalgesia and/or allodynia. Here, we present an algorithm for allocation of individual patients to these subgroups. The algorithm is nondeterministic—ie, a patient can be sorted to more than one phenotype—and can separate patients with neuropathic pain from healthy subjects (sensitivity: 78%, specificity: 94%). We evaluated the frequency of each phenotype in a population of patients with painful diabetic polyneuropathy (n = 151), painful peripheral nerve injury (n = 335), and postherpetic neuralgia (n = 97) and propose sample sizes of study populations that need to be screened to reach a subpopulation large enough to conduct a phenotype-stratified study. The most common phenotype in diabetic polyneuropathy was sensory loss (83%), followed by mechanical hyperalgesia (75%) and thermal hyperalgesia (34%, note that percentages are overlapping and not additive). In peripheral nerve injury, frequencies were 37%, 59%, and 50%, and in postherpetic neuralgia, frequencies were 31%, 63%, and 46%. For parallel study design, either the estimated effect size of the treatment needs to be high (>0.7) or only phenotypes that are frequent in the clinical entity under study can realistically be performed. For crossover design, populations under 200 patients screened are sufficient for all phenotypes and clinical entities with a minimum estimated treatment effect size of 0.5.
机译:在最近的聚类分析中,已显示基于定量的感官测试概况,周围神经性疼痛的患者可分为3种感官表型,​​其主要特征是感官丧失,完整的感官功能和轻度热痛觉过敏和/或异常性疼痛,或失去热检测和轻度机械性痛觉过敏和/或异常性疼痛。在这里,我们提出了一种将个体患者分配到这些亚组的算法。该算法是不确定性的,即可以将患者分类为一个以上的表型,并且可以将患有神经性疼痛的患者与健康受试者分开(敏感性:78%,特异性:94%)。我们评估了糖尿病多发性神经病(n = 151),周围神经痛(n = 335)和疱疹后神经痛(n = 97)的患者群体中每种表型的频率,并提出了需要进行筛选以达到足以进行表型分层研究的亚人群。糖尿病多发性神经病中最常见的表型是感觉丧失(83%),其次是机械性痛觉过敏(75%)和热痛觉过敏(34%,请注意,百分比是重叠的而不是累加的)。在周围神经损伤中,频率为37%,59%和50%,在带状疱疹后神经痛中,频率为31%,63%和46%。对于平行研究设计,估计的治疗效果大小需要很高(> 0.7),或者只能现实地执行所研究临床实体中频繁出现的表型。对于交叉设计,所筛选的200名以下患者的人群足以满足所有表型和临床实体,且估计的治疗效应最小为0.5。

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