New York University School of Medicine, Psychiatry, 145 E 32nd Street, PH, New York, NY 10016, USA.
Soc Sci Med. 2012 Jun;74(12):1987-94. doi: 10.1016/j.socscimed.2012.02.022. Epub 2012 Mar 20.
Studies of individual differences in bereavement have revealed prototypical patterns of outcome. However, many of these studies were conducted prior to the advent of sophisticated contemporary data analytic techniques. For example, Bonanno et al. (2002) used rudimentary categorization procedures to identify unique trajectories of depression symptomatology from approximately 3 years prior to 4 years following conjugal loss in a representative sample of older American adults. In the current study, we revisited these same data using Latent Class Growth Analysis (LCGA) to derive trajectories and test predictors. LCGA is a technique well-suited for modeling empirically- and conceptually-derived heterogeneous longitudinal patterns while simultaneously modeling predictors of those longitudinal patterns. We uncovered four discrete trajectories similar in shape and proportion to the previous analyses: Resilience (characterized by little or no depression; 66.3%), Chronic Grief (characterized by depression following loss, alleviated by 4 years post-loss; 9.1%), _Pre-existing Chronic Depression (ongoing high pre- through post-loss depression; 14.5%), and Depressed-Improved (characterized by high pre-loss depression that decreases following loss; 10.1%). Using this analytic strategy, we were able to examine multiple hypotheses about bereavement simultaneously. Health, financial stress, and emotional stability emerged as strong predictors of variability in depression only for some trajectories, indicating that depression levels do not have a common etiology across all the bereaved. As such, we find that identifying distinct patterns informs both the course and etiology of depression in response to bereavement.
对丧亲之痛个体差异的研究揭示了典型的结果模式。然而,其中许多研究是在复杂的当代数据分析技术出现之前进行的。例如,Bonanno 等人(2002 年)使用基本的分类程序,从大约 3 年前到 4 年后,在一个具有代表性的美国老年人样本中,识别出抑郁症状的独特轨迹。在当前的研究中,我们使用潜在类别增长分析(LCGA)重新分析了相同的数据,以得出轨迹并检验预测因素。LCGA 是一种非常适合建模经验和概念上衍生的异质纵向模式的技术,同时还可以建模这些纵向模式的预测因素。我们发现了四个相似形状和比例的离散轨迹:韧性(表现为几乎没有或没有抑郁;66.3%)、慢性悲伤(表现为失去后抑郁,4 年后缓解;9.1%)、“预先存在的慢性抑郁”(持续的高预先通过失去后抑郁;14.5%)和抑郁改善(表现为高预先失去后抑郁,失去后下降;10.1%)。使用这种分析策略,我们能够同时检验关于丧亲之痛的多个假设。健康、经济压力和情绪稳定性仅对某些轨迹的抑郁变异性具有较强的预测作用,这表明抑郁水平在所有丧亲者中并非具有共同的病因。因此,我们发现识别不同的模式可以为丧亲之痛后抑郁的过程和病因提供信息。