| Literature DB >> 35676267 |
Xiangfei Meng1,2, Yue Li3, Michelle Wang4, Kieran J O'Donnell5,4,6,7, Jean Caron5,4, Michael J Meaney5,4.
Abstract
Major depressive disorder (MDD) is the most prevalent mental disorder that constitutes a major public health problem. A tool for predicting the risk of MDD could assist with the early identification of MDD patients and targeted interventions to reduce the risk. We aimed to derive a risk prediction tool that can categorize the risk of MDD as well as discover biologically meaningful genetic variants. Data analyzed were from the fourth and fifth data collections of a longitudinal community-based cohort from Southwest Montreal, Canada, between 2015 and 2018. To account for high dimensional features, we adopted a latent topic model approach to infer a set of topical distributions over those studied predictors that characterize the underlying meta-phenotypes of the MDD cohort. MDD probability derived from 30 MDD meta-phenotypes demonstrated superior prediction accuracy to differentiate MDD cases and controls. Six latent MDD meta-phenotypes we inferred via a latent topic model were highly interpretable. We then explored potential genetic variants that were statistically associated with these MDD meta-phenotypes. The genetic heritability of MDD meta-phenotypes was 0.126 (SE = 0.316), compared to 0.000001 (SE = 0.297) for MDD diagnosis defined by the structured interviews. We discovered a list of significant MDD - related genes and pathways that were missed by MDD diagnosis. Our risk prediction model confers not only accurate MDD risk categorization but also meaningful associations with genetic predispositions that are linked to MDD subtypes. Our findings shed light on future research focusing on these identified genes and pathways for MDD subtypes.Entities:
Mesh:
Year: 2022 PMID: 35676267 PMCID: PMC9177831 DOI: 10.1038/s41398-022-02015-8
Source DB: PubMed Journal: Transl Psychiatry ISSN: 2158-3188 Impact factor: 7.989
Fig. 1Schematic pipeline of the preprocessing and statistical analysis performed in this study.
Fig. 2Inferring meaningful MDD meta-phenotypes.
A Inferring 30-topic mixture of the study cohort; (B) Linear correlation coefficients of the 30 meta-phenotypes; (C) Top MDD meta-phenotype features.
Fig. 3Classification accuracy of five-fold cross-validations in AUC curves and AUPRC (MixEHR meta-phenotypes vs. raw psychosocial attributes). AUC area under the receiver operating characteristic, AUPRC area under the precision-recall curve.
Fig. 4SNP-heritability for 30 meta-phenotypes and top three predictors for each meta-phenotype.
Fig. 5Pascal gene scores and MDD significant pathways associated with Top six meta-phenotypes, MDD probability, and MDD diagnosis.
A Pascal gene scores for Top six meta-phenotypes, MDD probability, and MDD diagnosis, respectively; B MDD significant pathways associated with top six meta-phenotypes, MDD probability, and MDD diagnosis.