利用机器学习研究气质评分如何预测早产状况

Erich Seamon , Jennifer.A. Mattera , Sarah.A. Keim , Esther.M. Leerkes , Jennifer.L. Rennels , Andrea.J. Kayl , Kirsty.M. Kulhanek , Darcia Narvaez , Sarah.M. Sanborn , Jennifer.B. Grandits , Christine Dunkel Schetter , Mary Coussons-Read , Amanda.R. Tarullo , Sarah.J. Schoppe-Sullivan , Moriah.E. Thomason , Julie.M. Braungart-Rieker , Julie.C. Lumeng , Shannon.N. Lenze , Lisa M. Christian , Darby.E. Saxbe , Maria.A. Gartstein
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引用次数: 0

摘要

背景早产(妊娠满 37 周时出生)是全球关注的重大公共卫生问题。本研究利用先进的定量技术,即机器学习方法,来鉴别狭义和宽带气质维度对出生状态分类(足月与早产)的贡献。研究设计本研究是一项荟萃分析,使用了多个样本(N = 19),包括早产儿(n = 201)和足月儿(n = 402),将不同调查的数据结合起来进行分类分析。结果测量婴儿行为问卷-修订版极简表(IBQ-R VSF)由母亲填写,本文考虑了因子和项目级数据。结果和结论无论对比组如何,准确度估计值基本相似。结果表明,基于 IBQR-VSF 项目模型的准确度和效率略高于基于因子模型的准确度和效率。在使用因子水平得分的两个比较组(年代年龄与调整后年龄)中,观察到了特征重要性(即因子/项目对分类的贡献程度)的不同模式;然而,分项模型表明,无论比较组如何,两个最关键的项目都与努力控制和消极情绪有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging machine learning to study how temperament scores predict pre-term birth status

Background

Preterm birth (birth at <37 completed weeks gestation) is a significant public heatlh concern worldwide. Important health, and developmental consequences of preterm birth include altered temperament development, with greater dysregulation and distress proneness.

Aims

The present study leveraged advanced quantitative techniques, namely machine learning approaches, to discern the contribution of narrowly defined and broadband temperament dimensions to birth status classification (full-term vs. preterm). Along with contributing to the literature addressing temperament of infants born preterm, the present study serves as a methodological demonstration of these innovative statistical techniques.

Study design

This study represents a metanalysis conducted with multiple samples (N = 19) including preterm (n = 201) children and (n = 402) born at term, with data combined across investigations to perform classification analyses.

Subjects

Participants included infants born preterm and term-born comparison children, either matched on chronological age or age adjusted for prematurity.

Outcome measures

Infant Behavior Questionnaire-Revised Very Short Form (IBQ-R VSF) was completed by mothers, with factor and item-level data considered herein.

Results and conclusions

Accuracy estimates were generally similar regardless of the comparison groups. Results indicated a slightly higher accuracy and efficiency for IBQR-VSF item-based models vs. factor-level models. Divergent patterns of feature importance (i.e., the extent to which a factor/item contributed to classification) were observed for the two comparison groups (chronological age vs. adjusted age) using factor-level scores; however, itemized models indicated that the two most critical items were associated with effortful control and negative emotionality regardless of comparison group.

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Global pediatrics
Global pediatrics Perinatology, Pediatrics and Child Health
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