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An introduction to the partial least squares approach to structural equation modelling: a method for exploratory psychiatric research

In psychiatry and psychology, relationship patterns connecting disorders and risk factors are always complex and intricate. Advanced statistical methods have been developed to overcome this issue, the most common being structural equation modelling (SEM). The main approach to SEM (CB‐SEM for covaria...

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Bibliographic Details
Published in:International journal of methods in psychiatric research 2016-09, Vol.25 (3), p.220-231
Main Authors: Riou, Julien, Guyon, Hervé, Falissard, Bruno
Format: Article
Language:English
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Summary:In psychiatry and psychology, relationship patterns connecting disorders and risk factors are always complex and intricate. Advanced statistical methods have been developed to overcome this issue, the most common being structural equation modelling (SEM). The main approach to SEM (CB‐SEM for covariance‐based SEM) has been widely used by psychiatry and psychology researchers to test whether a comprehensive theoretical model is compatible with observed data. While the validity of this approach method has been demonstrated, its application is limited in some situations, such as early‐stage exploratory studies using small sample sizes. The partial least squares approach to SEM (PLS‐SEM) has risen in many scientific fields as an alternative method that is especially useful when sample size restricts the use of CB‐SEM. In this article, we aim to provide a comprehensive introduction to PLS‐SEM intended to CB‐SEM users in psychiatric and psychological fields, with an illustration using data on suicidality among prisoners. Researchers in these fields could benefit from PLS‐SEM, a promising exploratory technique well adapted to studies on infrequent diseases or specific population subsets. Copyright © 2015 John Wiley & Sons, Ltd.
ISSN:1049-8931
1557-0657
DOI:10.1002/mpr.1497