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AuthorMesleh, Areej
AuthorEhtewish, Hanan
Authorde la Fuente, Alberto
AuthorAl-shamari, Hawra
AuthorGhazal, Iman
AuthorAl-Faraj, Fatema
AuthorAl-Shaban, Fouad
AuthorAbdesselem, Houari B.
AuthorEmara, Mohamed
AuthorAlajez, Nehad M.
AuthorArredouani, Abdelilah
AuthorDecock, Julie
AuthorAlbagha, Omar
AuthorStanton, Lawrence W.
AuthorAbdulla, Sara A.
AuthorEl-Agnaf, Omar M.A.
Available date2023-06-19T11:08:30Z
Publication Date2023-04-18
Publication NameInternational Journal of Molecular Sciences
Identifierhttp://dx.doi.org/10.3390/ijms24087443
CitationMesleh, A., Ehtewish, H., de la Fuente, A., Al-Shamari, H., Ghazal, I., Al-Faraj, F., ... & El-Agnaf, O. M. (2023). Blood Proteomics Analysis Reveals Potential Biomarkers and Convergent Dysregulated Pathways in Autism Spectrum Disorder: A Pilot Study. International Journal of Molecular Sciences, 24(8), 7443.
ISSN1661-6596
URIhttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85157999736&origin=inward
URIhttp://hdl.handle.net/10576/44582
AbstractAutism spectrum disorder (ASD) is an umbrella term that encompasses several disabling neurodevelopmental conditions. These conditions are characterized by impaired manifestation in social and communication skills with repetitive and restrictive behaviors or interests. Thus far, there are no approved biomarkers for ASD screening and diagnosis; also, the current diagnosis depends heavily on a physician’s assessment and family’s awareness of ASD symptoms. Identifying blood proteomic biomarkers and performing deep blood proteome profiling could highlight common underlying dysfunctions between cases of ASD, given its heterogeneous nature, thus laying the foundation for large-scale blood-based biomarker discovery studies. This study measured the expression of 1196 serum proteins using proximity extension assay (PEA) technology. The screened serum samples included ASD cases (n = 91) and healthy controls (n = 30) between 6 and 15 years of age. Our findings revealed 251 differentially expressed proteins between ASD and healthy controls, of which 237 proteins were significantly upregulated and 14 proteins were significantly downregulated. Machine learning analysis identified 15 proteins that could be biomarkers for ASD with an area under the curve (AUC) = 0.876 using support vector machine (SVM). Gene Ontology (GO) analysis of the top differentially expressed proteins (TopDE) and weighted gene co-expression analysis (WGCNA) revealed dysregulation of SNARE vesicular transport and ErbB pathways in ASD cases. Furthermore, correlation analysis showed that proteins from those pathways correlate with ASD severity. Further validation and verification of the identified biomarkers and pathways are warranted.
SponsorThis project is funded by QBRI’s internal fund and GSRA-QNRF (GSRA6-1-0616-19097).
Languageen
PublisherMultidisciplinary Digital Publishing Institute (MDPI)
SubjectASD
autism
biomarkers
blood profiling
early diagnosis
machine learning
patient stratification
PEA
proteomics
TitleBlood Proteomics Analysis Reveals Potential Biomarkers and Convergent Dysregulated Pathways in Autism Spectrum Disorder: A Pilot Study
TypeArticle
Issue Number8
Volume Number24
ESSN1422-0067
dc.accessType Open Access


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