Zhang En, Huang Zhongfei, Zang Zongjun, Qiao Xin, Yan Jiaxin, Shao Xuefei
Department of Psychiatry, The Fourth People's Hospital of Wuhu City, Wuhu, China.
College of Humanities and Management, Wannan Medical College, Wuhu, China.
Front Psychiatry. 2023 Aug 4;14:1230246. doi: 10.3389/fpsyt.2023.1230246. eCollection 2023.
To date, the current diagnosis of major depressive disorder (MDD) still depends on clinical symptomatologic criteria, misdiagnosis and ineffective treatment are common. The study aimed to explore circulating biomarkers for MDD diagnosis.
A high-throughput antibody array technology was utilized to detect 440 circulating cytokines in eight MDD patients and eight age-and gender-matched healthy controls. LASSO regression was conducted for MDD-related characteristic proteins selection. Enzyme-linked immunosorbent assay (ELISA) was used to validate the characteristic proteins in 40 MDD patients and 40 healthy controls. Receiver operating characteristic (ROC) curve was employed to evaluate the diagnostic values of characteristic proteins for discriminating MDD patients from healthy controls. Correlations between the levels of characteristic proteins and depression severity (HAMD-17 scores) were evaluated using linear regression.
The levels of 59 proteins were found aberrant in MDD patients compared with healthy controls. LASSO regression found six MDD-related characteristic proteins including insulin, CD40L, CD155, Lipocalin-2, HGF and LIGHT. ROC curve analysis showed that the area under curve (AUC) values of six characteristic proteins were more than 0.85 in discriminating patients with MDD from healthy controls. Furthermore, significant relationship was found between the levels of insulin, CD155, Lipocalin-2, HGF, LIGHT and HAMD-17 scores in MDD group.
These results suggested that six characteristic proteins screened from 59 proteins differential in MDD may hold promise as diagnostic biomarkers in discriminating patients with MDD. Among six characteristic proteins, insulin, CD155, Lipocalin-2, HGF and LIGHT might be useful to estimate the severity of depressive symptoms.
迄今为止,重度抑郁症(MDD)的当前诊断仍依赖于临床症状学标准,误诊和治疗无效的情况很常见。本研究旨在探索用于MDD诊断的循环生物标志物。
利用高通量抗体芯片技术检测8例MDD患者和8例年龄及性别匹配的健康对照者的440种循环细胞因子。采用套索回归进行MDD相关特征蛋白的筛选。采用酶联免疫吸附测定(ELISA)在40例MDD患者和40例健康对照者中验证特征蛋白。采用受试者工作特征(ROC)曲线评估特征蛋白区分MDD患者与健康对照者的诊断价值。采用线性回归评估特征蛋白水平与抑郁严重程度(HAMD-17评分)之间的相关性。
与健康对照者相比,发现MDD患者中有59种蛋白水平异常。套索回归发现6种与MDD相关的特征蛋白,包括胰岛素、CD40L、CD155、脂质运载蛋白-2、肝细胞生长因子(HGF)和LIGHT。ROC曲线分析表明,6种特征蛋白在区分MDD患者与健康对照者时曲线下面积(AUC)值均大于0.85。此外,在MDD组中发现胰岛素、CD155、脂质运载蛋白-2、HGF、LIGHT的水平与HAMD-17评分之间存在显著相关性。
这些结果表明,从MDD中差异表达的59种蛋白中筛选出的6种特征蛋白有望作为区分MDD患者的诊断生物标志物。在6种特征蛋白中,胰岛素、CD155、脂质运载蛋白-2、HGF和LIGHT可能有助于评估抑郁症状的严重程度。