Sorjonen Kimmo, Melin Bo, Nilsonne Gustav
Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, Sweden.
Department of Psychology, Stockholm University, Stockholm, Sweden.
PLoS One. 2025 Sep 2;20(9):e0331609. doi: 10.1371/journal.pone.0331609. eCollection 2025.
Analysis of longitudinal data often relies on models which can be prone to statistical artifacts. We have previously shown that several published prospective associations can be explained by a combination of a general association between constructs, imperfect measurement reliability, and regression to the mean. Here, we formalize our analysis of this type of statistical artifact and introduce the Spurious Prospective Associations Model (SPAM). We show that the SPAM performs better than adjusted cross-lagged effects models to explain several observed prospective associations, including new examples involving loneliness and social anxiety and resilience and depressive symptoms, without assuming any true increasing or decreasing effects between constructs over time. Moreover, unlike the models we challenge, the SPAM is consistent with seemingly paradoxical findings indicating simultaneous increasing and decreasing effects between constructs. We conclude that the SPAM agrees well with observed data and is better supported than competing adjusted cross-lagged effects models in the cases investigated here.
纵向数据分析通常依赖于可能容易产生统计假象的模型。我们之前已经表明,一些已发表的前瞻性关联可以通过构念之间的一般关联、不完美的测量可靠性以及均值回归的组合来解释。在此,我们将对这类统计假象的分析形式化,并引入虚假前瞻性关联模型(SPAM)。我们表明,在不假设构念之间随时间有任何真正的增加或减少效应的情况下,SPAM在解释几个观察到的前瞻性关联方面比调整后的交叉滞后效应模型表现更好,包括涉及孤独与社交焦虑以及复原力与抑郁症状的新例子。此外,与我们所质疑的模型不同,SPAM与表明构念之间同时存在增加和减少效应的看似矛盾的发现相一致。我们得出结论,SPAM与观察到的数据非常吻合,并且在此处研究的案例中比竞争的调整后的交叉滞后效应模型得到了更好的支持。