Toward personalized medicine for pharmacological interventions in neonates using vital signs

C. Hartley
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引用次数: 2

Abstract

Vital signs, such as heart rate and oxygen saturation, are continuously monitored for infants in neonatal care units. Pharmacological interventions can alter an infant's vital signs, either as an intended effect or as a side effect, and consequently could provide an approach to explore the wide variability in pharmacodynamics across infants and could be used to develop models to predict outcome (efficacy or adverse effects) in an individual infant. This will enable doses to be tailored according to the individual, shifting the balance toward efficacy and away from the adverse effects of a drug. Pharmacological analgesics are frequently not given in part due to the risk of adverse effects, yet this exposes infants to the short‐ and long‐term effects of painful procedures. Personalized analgesic dosing will be an important step forward in providing safer effective pain relief in infants. The aim of this paper was to describe a framework to develop predictive models of drug outcome from analysis of vital signs data, focusing on analgesics as a representative example. This framework investigates changes in vital signs in response to the analgesic (prior to the painful procedure) and proposes using machine learning to examine if these changes are predictive of outcome—either efficacy (with pain response measured using a multimodal approach, as changes in vital signs alone have limited sensitivity and specificity) or adverse effects. The framework could be applied to both preterm and term infants in neonatal care units, as well as older children. Sharing vital signs data are proposed as a means to achieve this aim and bring personalized medicine rapidly to the forefront in neonatology.
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利用生命体征对新生儿进行药物干预的个性化医学研究
生命体征,如心率和血氧饱和度,持续监测新生儿护理单位的婴儿。药物干预可以改变婴儿的生命体征,无论是作为预期效果还是作为副作用,因此可以提供一种方法来探索婴儿药效学的广泛变异性,并可用于开发模型来预测个体婴儿的结果(疗效或不良反应)。这将使剂量能够根据个人量身定制,将平衡转向疗效,远离药物的副作用。由于不良反应的风险,通常不给予药理学镇痛药,但这使婴儿暴露于痛苦手术的短期和长期影响。个性化的镇痛药剂量将是向前迈出的重要一步,为婴儿提供更安全有效的疼痛缓解。本文的目的是描述一个框架,从生命体征数据的分析中开发药物结果的预测模型,以镇痛药为代表的例子。该框架研究了对镇痛药反应的生命体征的变化(在疼痛过程之前),并建议使用机器学习来检查这些变化是否可以预测结果——无论是疗效(使用多模式方法测量疼痛反应,因为单独的生命体征变化具有有限的敏感性和特异性)还是不良反应。该框架可适用于新生儿护理单位的早产儿和足月婴儿,以及年龄较大的儿童。共享生命体征数据被提议作为实现这一目标的一种手段,并将个性化医疗迅速推向新生儿学的前沿。
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