Petersen Kimberly J, Qualter Pamela, Humphrey Neil
Manchester Institute of Education, University of Manchester, Manchester, United Kingdom.
Front Psychol. 2019 May 29;10:1214. doi: 10.3389/fpsyg.2019.01214. eCollection 2019.
Latent class analysis (LCA) can be used to identify subgroups of children with similar patterns of mental health symptoms and/or strengths. The method is becoming more commonly used in child mental health research, but there are reservations about the replicability, reliability, and validity of findings. A systematic literature review was conducted to investigate the extent to which LCA has been used to study population mental health in children, and whether replicable, reliable and valid findings have been demonstrated. Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines were followed. A search of literature, published between January 1998 and December 2017, was carried out using MEDLINE, EMBASE, PsycInfo, Scopus, ERIC, ASSIA, and Google Scholar. A total of 2,748 studies were initially identified, of which 23 were eligible for review. The review examined the methods which studies had used to choose the number of mental health classes, the classes that they found, and whether there was evidence for the validity and reliability of the classes. Reviewed studies used LCA to investigate both disparate mental health symptoms, and those associated with specific disorders. The corpus of studies using similar indicators was small. Differences in the criteria used to select the final LCA model were found between studies. All studies found meaningful or useful subgroups, but there were differences in the extent to which the validity and reliability of classes were explicitly demonstrated. : LCA is a useful tool for studying and classifying child mental health at the population level. Recommendations are made to improve the application and reporting of LCA and to increase confidence in findings in the future, including use of a range of indices and criteria when enumerating classes, clear reporting of methods for replicability, and making efforts to establish the validity and reliability of identified classes.
潜在类别分析(LCA)可用于识别具有相似心理健康症状和/或优势模式的儿童亚组。该方法在儿童心理健康研究中越来越常用,但对于研究结果的可重复性、可靠性和有效性存在保留意见。进行了一项系统的文献综述,以调查LCA在研究儿童群体心理健康方面的应用程度,以及是否已证明研究结果具有可重复性、可靠性和有效性。遵循了系统评价和元分析的首选报告项目(PRISMA)指南。使用MEDLINE、EMBASE、PsycInfo、Scopus、ERIC、ASSIA和谷歌学术搜索了1998年1月至2017年12月期间发表的文献。最初共识别出2748项研究,其中23项符合综述条件。该综述考察了研究用于选择心理健康类别数量的方法、所发现的类别,以及是否有证据证明这些类别的有效性和可靠性。综述的研究使用LCA来调查不同的心理健康症状以及与特定障碍相关的症状。使用相似指标的研究群体规模较小。研究之间在选择最终LCA模型所使用的标准上存在差异。所有研究都发现了有意义或有用的亚组,但在明确证明类别有效性和可靠性的程度上存在差异。结论:LCA是在群体层面研究和分类儿童心理健康的有用工具。针对改进LCA的应用和报告以及增强未来对研究结果的信心提出了建议,包括在列举类别时使用一系列指标和标准、清晰报告可重复性方法,以及努力确立所识别类别的有效性和可靠性。