Frontiers in Molecular Neuroscience (Feb 2022)

DNA Methylation Markers and Prediction Model for Depression and Their Contribution for Breast Cancer Risk

  • Ning Wang,
  • Jing Sun,
  • Tao Pang,
  • Haohao Zheng,
  • Fengji Liang,
  • Xiayue He,
  • Danian Tang,
  • Tao Yu,
  • Jianghui Xiong,
  • Jianghui Xiong,
  • Jianghui Xiong,
  • Suhua Chang

DOI
https://doi.org/10.3389/fnmol.2022.845212
Journal volume & issue
Vol. 15

Abstract

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BackgroundMajor depressive disorder (MDD) has become a leading cause of disability worldwide. However, the diagnosis of the disorder is dependent on clinical experience and inventory. At present, there are no reliable biomarkers to help with diagnosis and treatment. DNA methylation patterns may be a promising approach for elucidating the etiology of MDD and predicting patient susceptibility. Our overarching aim was to identify biomarkers based on DNA methylation, and then use it to propose a methylation prediction score for MDD, which we hope will help us evaluate the risk of breast cancer.MethodsMethylation data from 533 samples were extracted from the Gene Expression Omnibus (GEO) database, of which, 324 individuals were diagnosed with MDD. Statistical difference of DNA Methylation between Promoter and Other body region (SIMPO) score for each gene was calculated based on the DNA methylation data. Based on SIMPO scores, we selected the top genes that showed a correlation with MDD in random resampling, then proposed a methylation-derived Depression Index (mDI) by combining the SIMPO of the selected genes to predict MDD. A validation analysis was then performed using additional DNA methylation data from 194 samples extracted from the GEO database. Furthermore, we applied the mDI to construct a prediction model for the risk of breast cancer using stepwise regression and random forest methods.ResultsThe optimal mDI was derived from 426 genes, which included 245 positive and 181 negative correlations. It was constructed to predict MDD with high predictive power (AUC of 0.88) in the discovery dataset. In addition, we observed moderate power for mDI in the validation dataset with an OR of 1.79. Biological function assessment of the 426 genes showed that they were functionally enriched in Eph Ephrin signaling and beta-catenin Wnt signaling pathways. The mDI was then used to construct a predictive model for breast cancer that had an AUC ranging from 0.70 to 0.67.ConclusionOur results indicated that DNA methylation could help to explain the pathogenesis of MDD and assist with its diagnosis.

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