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Proteomics and Metabolomics Approaches Towards a Functional Insight Onto AUTISM Spectrum Disorders: Phenotype Stratification and Biomarker Discovery

Abstract

Autism spectrum disorders (ASDs) are neurodevelopmental disorders characterized by behavioral alterations and currently affect about 1% of children. Significant genetic factors and mechanisms underline the causation of ASD. Indeed, many affected individuals are diagnosed with chromosomal abnormalities, submicroscopic deletions or duplications, single-gene disorders or variants. However, a range of metabolic abnormalities has been highlighted in many patients, by identifying biofluid metabolome and proteome profiles potentially usable as ASD biomarkers. Indeed, next-generation sequencing and other omics platforms, including proteomics and metabolomics, have uncovered early age disease biomarkers which may lead to novel diagnostic tools and treatment targets that may vary from patient to patient depending on the specific genomic and other omics findings. The progressive identification of new proteins and metabolites acting as biomarker candidates, combined with patient genetic and clinical data and environmental factors, including microbiota, would bring us towards advanced clinical decision support systems (CDSSs) assisted by machine learning models for advanced ASD-personalized medicine. Herein, we will discuss novel computational solutions to evaluate new proteome and metabolome ASD biomarker candidates, in terms of their recurrence in the reviewed literature and laboratory medicine feasibility. Moreover, the way to exploit CDSS, performed by artificial intelligence, is presented as an effective tool to integrate omics data to electronic health/medical records (EHR/EMR), hopefully acting as added value in the near future for the clinical management of ASD.

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References
1.
Hu V, Frank B, Heine S, Lee N, Quackenbush J . Gene expression profiling of lymphoblastoid cell lines from monozygotic twins discordant in severity of autism reveals differential regulation of neurologically relevant genes. BMC Genomics. 2006; 7:118. PMC: 1525191. DOI: 10.1186/1471-2164-7-118. View

2.
Shuford C, Walters J, Holland P, Sreenivasan U, Askari N, Ray K . Absolute Protein Quantification by Mass Spectrometry: Not as Simple as Advertised. Anal Chem. 2017; 89(14):7406-7415. DOI: 10.1021/acs.analchem.7b00858. View

3.
Pichitpunpong C, Thongkorn S, Kanlayaprasit S, Yuwattana W, Plaingam W, Sangsuthum S . Phenotypic subgrouping and multi-omics analyses reveal reduced diazepam-binding inhibitor (DBI) protein levels in autism spectrum disorder with severe language impairment. PLoS One. 2019; 14(3):e0214198. PMC: 6438570. DOI: 10.1371/journal.pone.0214198. View

4.
Risch N, Hoffmann T, Anderson M, Croen L, Grether J, Windham G . Familial recurrence of autism spectrum disorder: evaluating genetic and environmental contributions. Am J Psychiatry. 2014; 171(11):1206-13. DOI: 10.1176/appi.ajp.2014.13101359. View

5.
Wang M, Jarmusch A, Vargas F, Aksenov A, Gauglitz J, Weldon K . Mass spectrometry searches using MASST. Nat Biotechnol. 2020; 38(1):23-26. PMC: 7236533. DOI: 10.1038/s41587-019-0375-9. View