Spectral features of non-nutritive suck dynamics in extremely preterm infants.

Pediatric medicine (Hong Kong, China) Pub Date : 2023-08-30 Epub Date: 2023-03-09 DOI:10.21037/pm-21-91
Steven M Barlow, Chunxiao Liao, Jaehoon Lee, Seungman Kim, Jill L Maron, Dongli Song, Priya Jegatheesan, Balaji Govindaswami, Bernard J Wilson, Kushal Bhakta, John P Cleary
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引用次数: 0

Abstract

Background: Non-nutritive suck (NNS) is used to promote ororhythmic patterning and assess oral feeding readiness in preterm infants in the neonatal intensive care unit (NICU). While time domain measures of NNS are available in real time at cribside, our understanding of suck pattern generation in the frequency domain is limited. The aim of this study is to model the development of NNS in the frequency domain using Fourier and machine learning (ML) techniques in extremely preterm infants (EPIs).

Methods: A total of 117 EPIs were randomized to a pulsed or sham orocutaneous intervention during tube feedings 3 times/day for 4 weeks, beginning at 30 weeks post-menstrual age (PMA). Infants were assessed 3 times/week for NNS dynamics until they attained 100% oral feeding or NICU discharge. Digitized NNS signals were processed in the frequency domain using two transforms, including the Welch power spectral density (PSD) method, and the Yule-Walker PSD method. Data analysis proceeded in two stages. Stage 1: ML longitudinal cluster analysis was conducted to identify groups (classes) of infants, each showing a unique pattern of change in Welch and Yule-Walker calculations during the interventions. Stage 2: linear mixed modeling (LMM) was performed for the Welch and Yule-Walker dependent variables to examine the effects of gestationally-aged (GA), PMA, sex (male, female), patient type [respiratory distress syndrome (RDS), bronchopulmonary dysplasia (BPD)], treatment (NTrainer, Sham), intervention phase [1, 2, 3], cluster class, and phase-by-class interaction.

Results: ML of Welch PSD method and Yule-Walker PSD method measures revealed three membership classes of NNS growth patterns. The dependent measures peak_Hz, PSD amplitude, and area under the curve (AUC) are highly dependent on PMA, but show little relation to respiratory status (RDS, BPD) or somatosensory intervention. Thus, neural regulation of NNS in the frequency domain is significantly different for each identified cluster (classes A, B, C) during this developmental period.

Conclusions: Efforts to increase our knowledge of the evolution of the suck central pattern generator (sCPG) in preterm infants, including NNS rhythmogenesis will help us better understand the observed phenotypes of NNS production in both the frequency and time domains. Knowledge of those features of the NNS which are relatively invariant vs. other features which are modifiable by experience will likewise inform more effective treatment strategies in this fragile population.

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极早产儿非营养性吸吮动态的光谱特征
背景:在新生儿重症监护室(NICU),非营养性吮吸(NNS)用于促进早产儿的口腔节律模式并评估其口腔喂养准备情况。虽然在婴儿床旁可以实时获得NNS的时域测量,但我们对频域中抽吸模式生成的理解是有限的。本研究的目的是使用傅立叶和机器学习(ML)技术在频域中对极早产儿(EPIs)的NNS发展进行建模。方法:从月经后30周开始,共有117名EPIs在管饲期间随机接受脉冲或假口腔皮肤干预,每天3次,持续4周。每周对婴儿进行3次NNS动力学评估,直到他们获得100%的口服喂养或新生儿重症监护室出院。数字化的NNS信号在频域中使用两种变换进行处理,包括Welch功率谱密度(PSD)方法和Yule-Worker PSD方法。数据分析分两个阶段进行。第1阶段:进行ML纵向聚类分析,以确定婴儿组(类别),在干预期间,每个组的Welch和Yule-Worker计算都显示出独特的变化模式。第2阶段:对Welch和Yule-Worker因变量进行线性混合建模(LMM),以检查孕龄(GA)、PMA、性别(男性、女性)、患者类型[呼吸窘迫综合征(RDS)、支气管肺发育不良(BPD)]、治疗(NTrainer、Sham)、干预阶段[1、2、3]、集群类别和逐阶段交互的影响。结果:Welch PSD方法和Yule Walker PSD方法的ML测度揭示了NNS增长模式的三个成员类。依赖性测量peak_Hz、PSD振幅和曲线下面积(AUC)高度依赖于PMA,但与呼吸状态(RDS、BPD)或体感干预关系不大。因此,在这一发育时期,每个已识别的聚类(A类、B类、C类)在频域中对NNS的神经调节显著不同。结论:努力增加我们对早产儿吮吸中枢模式发生器(sCPG)进化的了解,包括NNS韵律发生,将有助于我们更好地了解在频域和时域观察到的NNS产生表型。对NNS的那些相对不变的特征与其他可通过经验改变的特征的了解同样将为这个脆弱群体的更有效的治疗策略提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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