利用多变量方法推进生命早期逆境的科学研究。

IF 3.4 2区 心理学 Q1 FAMILY STUDIES
Alexis Brieant , Lucinda M. Sisk , Taylor J. Keding , Emily M. Cohodes , Dylan G. Gee
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引用次数: 0

摘要

自具有里程碑意义的 "童年逆境经历(ACEs)"研究以来,逆境研究的范围不断扩大,以更精确地反映逆境经历的多面性。逆境数据复杂的数据结构和相互关联的性质需要强有力的多元统计方法,而最近的方法和统计创新促进了儿童逆境研究的进步。在此,我们将概述我们认为特别有希望促进该领域对生命早期逆境理解的多元方法子集,并讨论如何实际应用这些方法来探索不同的研究问题。本综述涵盖了数据驱动或无监督方法(包括降维和以人为中心的聚类/子类型识别)以及有监督/基于预测的方法(包括线性和基于树的模型以及神经网络)。对于每一种方法,我们都重点介绍了有效应用该方法对早期生活逆境提供新见解的研究。总之,我们希望这篇综述能为逆境研究人员提供资源,帮助他们在最初的 ACEs 研究中描述的累积法基础上进行扩展,从而推进该领域对逆境复杂性及相关发展后果的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging multivariate approaches to advance the science of early-life adversity
Since the landmark Adverse Childhood Experiences (ACEs) study, adversity research has expanded to more precisely account for the multifaceted nature of adverse experiences. The complex data structures and interrelated nature of adversity data require robust multivariate statistical methods, and recent methodological and statistical innovations have facilitated advancements in research on childhood adversity. Here, we provide an overview of a subset of multivariate methods that we believe hold particular promise for advancing the field's understanding of early-life adversity, and discuss how these approaches can be practically applied to explore different research questions. This review covers data-driven or unsupervised approaches (including dimensionality reduction and person-centered clustering/subtype identification) as well as supervised/prediction-based approaches (including linear and tree-based models and neural networks). For each, we highlight studies that have effectively applied the method to provide novel insight into early-life adversity. Taken together, we hope this review serves as a resource to adversity researchers looking to expand upon the cumulative approach described in the original ACEs study, thereby advancing the field's understanding of the complexity of adversity and related developmental consequences.
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来源期刊
CiteScore
7.40
自引率
10.40%
发文量
397
期刊介绍: Official Publication of the International Society for Prevention of Child Abuse and Neglect. Child Abuse & Neglect The International Journal, provides an international, multidisciplinary forum on all aspects of child abuse and neglect, with special emphasis on prevention and treatment; the scope extends further to all those aspects of life which either favor or hinder child development. While contributions will primarily be from the fields of psychology, psychiatry, social work, medicine, nursing, law enforcement, legislature, education, and anthropology, the Journal encourages the concerned lay individual and child-oriented advocate organizations to contribute.
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