Department of Metabolism, Digestion and Reproduction, Imperial College London, London, UK.
Department of Psychiatry, McGill University, Montreal, QC, Canada.
Commun Biol. 2021 Jul 22;4(1):903. doi: 10.1038/s42003-021-02421-6.
One of the biggest challenges in treating depression is the heterogeneous and qualitative nature of its clinical presentations. This highlights the need to find quantitative molecular markers to tailor existing treatment strategies to the individual's biological system. In this study, high-resolution metabolic phenotyping of urine and plasma samples from the CAN-BIND study collected before treatment with two common pharmacological strategies, escitalopram and aripiprazole, was performed. Here we show that a panel of LDL and HDL subfractions were negatively correlated with depression in males. For treatment response, lower baseline concentrations of apolipoprotein A1 and HDL were predictive of escitalopram response in males, while higher baseline concentrations of apolipoprotein A2, HDL and VLDL subfractions were predictive of aripiprazole response in females. These findings support the potential of metabolomics in precision medicine and the possibility of identifying personalized interventions for depression.
治疗抑郁症的最大挑战之一是其临床表现的异质性和定性性质。这凸显了寻找定量分子标志物的必要性,以便根据个体的生物系统调整现有的治疗策略。在这项研究中,对 CAN-BIND 研究中收集的尿液和血浆样本进行了高分辨率代谢表型分析,这些样本在使用两种常见的药理学策略(依地普仑和阿立哌唑)治疗之前进行了分析。在这里,我们发现一组 LDL 和 HDL 亚组分与男性的抑郁呈负相关。对于治疗反应,载脂蛋白 A1 和 HDL 的基线浓度较低可预测男性对依地普仑的反应,而载脂蛋白 A2、HDL 和 VLDL 亚组分的基线浓度较高可预测女性对阿立哌唑的反应。这些发现支持代谢组学在精准医学中的潜力,以及确定针对抑郁症的个性化干预措施的可能性。