Open Access
Open access
volume 26 pages 100555

Integrative bioinformatics and artificial intelligence analyses of transcriptomics data identified genes associated with major depressive disorders including NRG1

Amal Bouzid 1
Abdulrahman Almidani 1
Maria Zubrikhina 2
Altyngul Kamzanova 3
Burcu Yener Ilce 1
M Zholdassova 3
Ayesha M Yusuf 1
Poorna Manasa Bhamidimarri 1
Hamid Alhaj 1, 4
Almira M Kustubayeva 3
Alexander Bernstein 2
Evgeny Burnaev 2
Maxim Sharaev 2
Rifat Hamoudi 1, 4, 5, 6
Publication typeJournal Article
Publication date2023-09-01
scimago Q1
wos Q2
SJR1.602
CiteScore8.6
Impact factor3.6
ISSN23522895
Biochemistry
Molecular Biology
Endocrinology
Cellular and Molecular Neuroscience
Physiology
Endocrine and Autonomic Systems
Abstract
Major depressive disorder (MDD) is a common mental disorder and is amongst the most prevalent psychiatric disorders. MDD remains challenging to diagnose and predict its onset due to its heterogeneous phenotype and complex etiology. Hence, early detection using diagnostic biomarkers is critical for rapid intervention. In this study, a mixture of AI and bioinformatics were used to mine transcriptomic data from publicly available datasets including 170 MDD patients and 121 healthy controls. Bioinformatics analysis using gene set enrichment analysis (GSEA) and machine learning (ML) algorithms were applied. The GSEA revealed that differentially expressed genes in MDD patients are mainly enriched in pathways related to immune response, inflammatory response, neurodegeneration pathways and cerebellar atrophy pathways. Feature selection methods and ML provided predicted models based on MDD-altered genes with ≥75% of accuracy. The integrative analysis between the bioinformatics and ML approaches identified ten key MDD-related biomarkers including NRG1, CEACAM8, CLEC12B, DEFA4, HP, LCN2, OLFM4, SERPING1, TCN1 and THBS1. Among them, NRG1, active in synaptic plasticity and neurotransmission, was the most robust and reliable to distinguish between MDD patients and healthy controls amongst independent external datasets consisting of a mixture of populations. Further evaluation using saliva samples from an independent cohort of MDD and healthy individuals confirmed the upregulation of NRG1 in patients with MDD compared to healthy controls. Functional mapping to the human brain regions showed NRG1 to have high expression in the main subcortical limbic brain regions implicated in depression. In conclusion, integrative bioinformatics and ML approaches identified putative non-invasive diagnostic MDD-related biomarkers panel for the onset of depression.
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GOST Copy
Bouzid A. et al. Integrative bioinformatics and artificial intelligence analyses of transcriptomics data identified genes associated with major depressive disorders including NRG1 // Neurobiology of Stress. 2023. Vol. 26. p. 100555.
GOST all authors (up to 50) Copy
Bouzid A., Almidani A., Zubrikhina M., Kamzanova A., Ilce B. Y., Zholdassova M., Yusuf A. M., Bhamidimarri P. M., Alhaj H., Kustubayeva A. M., Bernstein A., Burnaev E., Sharaev M., Hamoudi R. Integrative bioinformatics and artificial intelligence analyses of transcriptomics data identified genes associated with major depressive disorders including NRG1 // Neurobiology of Stress. 2023. Vol. 26. p. 100555.
RIS |
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RIS Copy
TY - JOUR
DO - 10.1016/j.ynstr.2023.100555
UR - https://doi.org/10.1016/j.ynstr.2023.100555
TI - Integrative bioinformatics and artificial intelligence analyses of transcriptomics data identified genes associated with major depressive disorders including NRG1
T2 - Neurobiology of Stress
AU - Bouzid, Amal
AU - Almidani, Abdulrahman
AU - Zubrikhina, Maria
AU - Kamzanova, Altyngul
AU - Ilce, Burcu Yener
AU - Zholdassova, M
AU - Yusuf, Ayesha M
AU - Bhamidimarri, Poorna Manasa
AU - Alhaj, Hamid
AU - Kustubayeva, Almira M
AU - Bernstein, Alexander
AU - Burnaev, Evgeny
AU - Sharaev, Maxim
AU - Hamoudi, Rifat
PY - 2023
DA - 2023/09/01
PB - Elsevier
SP - 100555
VL - 26
PMID - 37583471
SN - 2352-2895
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2023_Bouzid,
author = {Amal Bouzid and Abdulrahman Almidani and Maria Zubrikhina and Altyngul Kamzanova and Burcu Yener Ilce and M Zholdassova and Ayesha M Yusuf and Poorna Manasa Bhamidimarri and Hamid Alhaj and Almira M Kustubayeva and Alexander Bernstein and Evgeny Burnaev and Maxim Sharaev and Rifat Hamoudi},
title = {Integrative bioinformatics and artificial intelligence analyses of transcriptomics data identified genes associated with major depressive disorders including NRG1},
journal = {Neurobiology of Stress},
year = {2023},
volume = {26},
publisher = {Elsevier},
month = {sep},
url = {https://doi.org/10.1016/j.ynstr.2023.100555},
pages = {100555},
doi = {10.1016/j.ynstr.2023.100555}
}