早产儿的营养:我们能做得更精确吗?

Q1 Medicine
Josef Neu
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引用次数: 0

摘要

在新生儿重症监护的早期(约五六十年前),大多数营养方法主要基于医生的直觉、以往的经验以及患者的体征和症状。这导致诊断、预防和治疗措施的多样性。最近,数据回顾和临床试验等循证方法成为大多数新生儿重症监护室(NICU)使用的营养指南的基础。这些指南是从针对平均水平的人口统计数据中得出的,因此能满足许多早产儿的需求,但由于早产儿的异质性极强,这些指南会将其他早产儿边缘化。现在已经有了一些有用的评分程序,可以使用确定的指标来识别早产儿群体中的营养不良情况。然而,与生长曲线类似,它们并不能提供前瞻性指导。新开发的基于人工智能(AI)和机器学习(ML)的算法和预测分析的精准方法将提供基于先验的预防方法。这些方法很可能会采用将婴儿分为不同风险类别的技术,然后通过多组学整合对这些类别进行机理研究,从而提供机理相互作用,并提供生物标志物的线索,用于发现生物标志物,从而用于制定预防策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nutrition for the Sick Preterm: Can We Make It More Precise?

In the early era of neonatal intensive care (about 5-6 decades ago), most nutritional approaches were based largely on the physician's intuition, previous experience, and patient's signs and symptoms. This resulted in a large heterogeneity of diagnostic, preventative, and therapeutic measures. More recently, evidence-based approaches, such as data reviews and clinical trials, form the foundation for nutritional guidelines used in most Neonatal Intensive Care Unit (NICUs). These are derived from population statistics aimed toward the average and, thereby, meet the needs of many of these infants, but because of the extreme heterogeneity of the preterm population, they marginalize others. Helpful scoring programs are now available to identify malnutrition in populations of preterm infants using defined indicators. However, similar to growth curves, they do not provide proactive guidance. Newly developed precision-based approaches using algorithms and predictive analytics based on artificial intelligence (AI) and machine learning (ML) will provide for a priori-based preventative approaches. It is likely that these will employ technologies that cluster infants into different risk categories that can then be investigated mechanistically with multiomic integrations that provide mechanistic interactions and provide clues to biomarkers that can be used for the discovery of biomarkers that can be utilized for the development of preventative strategies.

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来源期刊
Nestle Nutrition Institute workshop series
Nestle Nutrition Institute workshop series Medicine-Pediatrics, Perinatology and Child Health
CiteScore
4.30
自引率
0.00%
发文量
22
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