Clinical Research Center & Division of Mood Disorders, Shanghai Mental Health Center, Shanghai Jiao Tong University School of Medicine, Shanghai 200030, China.
Department of Psychiatry and Psychology, Shanghai Deji Hospital affiliated to Qingdao University, Shanghai 200331, China.
J Affect Disord. 2023 Jan 1;320:682-690. doi: 10.1016/j.jad.2022.09.096. Epub 2022 Sep 29.
The age of onset (AOO) is a key factor for heterogeneity in major depressive disorder (MDD). Looking at the effect of AOO on symptomatology may improve clinical outcomes. This study aims to examine whether and how AOO affects symptomatology using a machine learning approach and latent profile analysis (LPA).
The study enrolled 915 participants diagnosed with MDD from eight hospitals across China. Depressive symptoms were assessed using the 17-item Hamilton Depression Rating Scale. The relationship between symptom profiles and AOO was explored using Random Forest. The effect of AOO on symptom clusters and subtypes was investigated using multiple linear regression and LPA. A continuous AOO indicator was used to conduct the analyses.
Based on the Random Forest, symptom profiles were closely associated with AOO. The regression model showed that the severity of neurovegetative symptoms was positively associated with AOO (β = 0.18, p < 0.001), and the severity of cognitive-behavioral symptoms was negatively associated with AOO (β = -0.12, p < 0.001). LPA demonstrated that the subgroups characterized by suicide and guilt had earlier onset of depression. The subgroup with the lowest global severity of depression had the latest onset.
AOO was recalled retrospectively. The relative scarcity of participants with childhood and adolescence onset depression.
AOO has an important impact on symptomatology. The findings may enhance clinical evaluations for MDD and assist clinicians in promoting earlier detection and individualized care in vulnerable individuals.
发病年龄(AOO)是重性抑郁障碍(MDD)异质性的一个关键因素。关注 AOO 对症状学的影响可能会改善临床结局。本研究旨在使用机器学习方法和潜在剖面分析(LPA)来检验 AOO 是否以及如何影响症状学。
本研究纳入了来自中国 8 家医院的 915 名 MDD 患者。使用 17 项汉密尔顿抑郁评定量表评估抑郁症状。使用随机森林探讨症状模式与 AOO 之间的关系。使用多元线性回归和 LPA 研究 AOO 对症状群和亚型的影响。使用连续 AOO 指标进行分析。
基于随机森林,症状模式与 AOO 密切相关。回归模型显示,神经植物性症状的严重程度与 AOO 呈正相关(β=0.18,p<0.001),认知行为症状的严重程度与 AOO 呈负相关(β=-0.12,p<0.001)。LPA 显示,以自杀和内疚为特征的亚组抑郁发病较早。全球抑郁严重程度最低的亚组发病较晚。
AOO 是回顾性回忆的。具有儿童和青少年发病的抑郁患者相对较少。
AOO 对症状学有重要影响。这些发现可能会增强对 MDD 的临床评估,并帮助临床医生在高危人群中促进早期发现和个体化护理。