Hu Xiaonan, Pang Huaxin, Liu Jia, Wang Yu, Lou Yifang, Zhao Yufeng
Data Center of Traditional Chinese Medicine, Chinese Academy of Traditional Chinese Medicine, Beijing, China.
School of Computer and Information Technology, Beijing Jiaotong University, Beijing, China.
Front Psychiatry. 2023 Jul 10;14:1184188. doi: 10.3389/fpsyt.2023.1184188. eCollection 2023.
Depression is widespread global problem that not only severely impacts individuals' physical and mental health but also imposes a heavy disease burden on nations and societies. The role of inflammation in the pathogenesis and pathophysiology of depression has received much attention, but the precise relationship between the two remains unclear. This study aims to investigate the correlation between depression and inflammation using a network medicine approach.
We utilized a degree-preserving approach to identify the large connected component (LCC) of all depression-related proteins in the human interactome. The LCC was deemed as the disease module for depression. To measure the association between depression and other diseases, we calculated the overlap between these disease protein modules using the Sab algorithm. A smaller Sab value indicates a stronger association between diseases. Building on the results of this analysis, we further explored the correlation between inflammation and depression by conducting enrichment and pathway analyses of critical targets. Finally, we used a network proximity approach to calculate drug-disease proximity to predict the efficacy of drugs for the treatment of depression. We calculated and ranked the distances between depression disease modules and 6,100 drugs. The top-ranked drugs were selected to explore their potential for treating depression based on the hypothesis that their antidepressant effects are related to reducing inflammation.
In the human interactome, all depression-related proteins are clustered into a large connected component (LCC) consisting of 202 proteins and multiple small subgraphs. This indicates that depression-related proteins tend to form clusters within the same network. We used the 202 LCC proteins as the key disease module for depression. Next, we investigated the potential relationships between depression and 299 other diseases. Our analysis identified over 18 diseases that exhibited significant overlap with the depression module. Where S = -0.075 for the vascular disease and depressive disorders module, S = -0.070 for the gastrointestinal disease and depressive disorders module, and S = -0.062 for the endocrine system disease and depressive disorders module. The distance between them S < 0 implies that the pathogenesis of depression is likely to be related to the pathogenesis of its co-morbidities of depression and that potential therapeutic approaches may be derived from the disease treatment libraries of these co-morbidities. Further, considering that the inflammation is ubiquitous in some disease, we calculate the overlap between the collected inflammation module (236 proteins) and the depression module (202 proteins), finding that they are closely related (S = -0.358) in the human protein interaction network. After enrichment and pathway analysis of key genes, we identified the HIF-1 signaling pathway, PI3K-Akt signaling pathway, Th17 cell differentiation, hepatitis B, and inflammatory bowel disease as key to the inflammatory response in depression. Finally, we calculated the -score to determine the proximity of 6,100 drugs to the depression disease module. Among the top three drugs identified by drug-disease proximity analysis were Perphenazine, Clomipramine, and Amitriptyline, all of which had a greater number of targets in the network associated with the depression disease module. Notably, these drugs have been shown to exert both anti-inflammatory and antidepressant effects, suggesting that they may modulate depression through an anti-inflammatory mechanism. These findings demonstrate a correlation between depression and inflammation at the network medicine level, which has important implications for future elucidation of the etiology of depression and improved treatment outcomes.
Neuroimmune signaling pathways play an important role in the pathogenesis of depression, and many classes of antidepressants exhibiting anti-inflammatory properties. The pathogenesis of depression is closely related to inflammation.
抑郁症是一个全球性的普遍问题,不仅严重影响个人身心健康,还给国家和社会带来沉重的疾病负担。炎症在抑郁症发病机制和病理生理学中的作用已受到广泛关注,但两者的确切关系仍不明确。本研究旨在采用网络医学方法探讨抑郁症与炎症之间的相关性。
我们利用一种保持度的方法,在人类相互作用组中识别所有与抑郁症相关蛋白质的大连通分量(LCC)。该LCC被视为抑郁症的疾病模块。为了衡量抑郁症与其他疾病之间的关联,我们使用Sab算法计算这些疾病蛋白质模块之间的重叠情况。Sab值越小,表明疾病之间的关联越强。基于这一分析结果,我们通过对关键靶点进行富集和通路分析,进一步探究炎症与抑郁症之间的相关性。最后,我们使用网络接近度方法计算药物与疾病的接近度,以预测治疗抑郁症药物的疗效。我们计算并对抑郁症疾病模块与6100种药物之间的距离进行了排序。根据抗抑郁作用与减轻炎症相关的假设,选择排名靠前的药物来探索其治疗抑郁症的潜力。
在人类相互作用组中,所有与抑郁症相关的蛋白质聚集形成一个由202种蛋白质和多个小子图组成的大连通分量。这表明与抑郁症相关的蛋白质倾向于在同一网络内形成簇。我们将这202种LCC蛋白质用作抑郁症的关键疾病模块。接下来,我们研究了抑郁症与其他299种疾病之间的潜在关系。我们的分析确定了18种以上与抑郁症模块有显著重叠的疾病。其中,血管疾病与抑郁症模块的S值为-0.075,胃肠道疾病与抑郁症模块的S值为-0.070,内分泌系统疾病与抑郁症模块的S值为-0.062。它们之间的距离S<0意味着抑郁症的发病机制可能与其共病的发病机制相关,并且潜在的治疗方法可能来自这些共病的疾病治疗库。此外,考虑到炎症在某些疾病中普遍存在,我们计算了收集到的炎症模块(236种蛋白质)与抑郁症模块(202种蛋白质)之间的重叠情况,发现在人类蛋白质相互作用网络中它们密切相关(S=-0.358)。对关键基因进行富集和通路分析后,我们确定缺氧诱导因子-1信号通路、磷脂酰肌醇-3激酶-蛋白激酶B信号通路、辅助性T细胞17分化、乙型肝炎和炎症性肠病是抑郁症炎症反应的关键。最后,我们计算了z分数,以确定6100种药物与抑郁症疾病模块的接近度。药物-疾病接近度分析确定的前三种药物是奋乃静、氯米帕明和阿米替林,它们在与抑郁症疾病模块相关的网络中都有更多的靶点。值得注意的是,这些药物已被证明具有抗炎和抗抑郁作用,表明它们可能通过抗炎机制调节抑郁症。这些发现表明在网络医学层面抑郁症与炎症之间存在相关性,这对未来阐明抑郁症病因和改善治疗结果具有重要意义。
神经免疫信号通路在抑郁症发病机制中起重要作用,许多类抗抑郁药具有抗炎特性。抑郁症的发病机制与炎症密切相关。