Lu Andrew Ke-Ming, Hsieh Shulan, Yang Cheng-Ta, Wang Xin-Yu, Lin Sheng-Hsiang
Institute of Clinical Medicine, College of Medicine, National Cheng Kung University, Tainan, Taiwan.
Department of Psychology, College of Social Sciences, National Cheng Kung University, Tainan, Taiwan.
Front Genet. 2023 Jan 12;13:1046700. doi: 10.3389/fgene.2022.1046700. eCollection 2022.
Resilience is a process associated with the ability to recover from stress and adversity. We aimed to explore the resilience-associated DNA methylation signatures and evaluate the abilities of methylation risk scores to discriminate low resilience (LR) individuals. The study recruited 78 young adults and used Connor-Davidson Resilience Scale (CD-RISC) to divide them into low and high resilience groups. We randomly allocated all participants of two groups to the discovery and validation sets. We used the blood DNA of the subjects to conduct a genome-wide methylation scan and identify the significant methylation differences of CpG Sites in the discovery set. Moreover, the classification accuracy of the DNA methylation probes was confirmed in the validation set by real-time quantitative methylation-specific polymerase chain reaction. In the genome-wide methylation profiling between LR and HR individuals, seventeen significantly differentially methylated probes were detected. In the validation set, nine DNA methylation signatures within gene coding regions were selected for verification. Finally, three methylation probes [cg18565204 (AARS), cg17682313 (FBXW7), and cg07167608 (LINC01107)] were included in the final model of the methylation risk score for LR versus HR. These methylation risk score models of low resilience demonstrated satisfactory discrimination by logistic regression and support vector machine, with an AUC of 0.81 and 0.93, accuracy of 72.3% and 87.1%, sensitivity of 75%, and 87.5%, and specificity of 70% and 80%. Our findings suggest that methylation signatures can be utilized to identify individuals with LR and establish risk score models that may contribute to the field of psychology.
心理韧性是一个与从压力和逆境中恢复的能力相关的过程。我们旨在探索与心理韧性相关的DNA甲基化特征,并评估甲基化风险评分区分低心理韧性(LR)个体的能力。该研究招募了78名年轻成年人,并使用康纳-戴维森心理韧性量表(CD-RISC)将他们分为低心理韧性组和高心理韧性组。我们将两组的所有参与者随机分配到发现集和验证集。我们使用受试者的血液DNA进行全基因组甲基化扫描,并在发现集中识别CpG位点的显著甲基化差异。此外,通过实时定量甲基化特异性聚合酶链反应在验证集中确认了DNA甲基化探针的分类准确性。在LR和HR个体之间的全基因组甲基化谱分析中,检测到17个显著差异甲基化的探针。在验证集中,选择了基因编码区域内的9个DNA甲基化特征进行验证。最后,三个甲基化探针[cg18565204(AARS)、cg17682313(FBXW7)和cg07167608(LINC01107)]被纳入LR与HR甲基化风险评分的最终模型。这些低心理韧性的甲基化风险评分模型通过逻辑回归和支持向量机显示出令人满意的区分能力,曲线下面积(AUC)分别为0.81和0.93,准确率分别为72.3%和87.1%,灵敏度分别为75%和87.5%,特异性分别为70%和80%。我们的研究结果表明,甲基化特征可用于识别LR个体并建立风险评分模型,这可能有助于心理学领域。