Extracellular Vesicle Protein Expression in Doped Bioactive Glasses: Further Insights Applying Anomaly Detection.
Mauro NascimbenHugo AbreuMarcello ManfrediAnnalisa ChiocchettiAnnalisa ChiocchettiLia RimondiniPublished in: International journal of molecular sciences (2024)
Proteomic analysis of extracellular vesicles presents several challenges due to the unique nature of these small membrane-bound structures. Alternative analyses could reveal outcomes hidden from standard statistics to explore and develop potential new biological hypotheses that may have been overlooked during the initial evaluation of the data. An analysis sequence focusing on deviating protein expressions from donors' primary cells was performed, leveraging machine-learning techniques to analyze small datasets, and it has been applied to evaluate extracellular vesicles' protein content gathered from mesenchymal stem cells cultured on bioactive glass discs doped or not with metal ions. The goal was to provide additional opportunities for detecting details between experimental conditions that are not entirely revealed with classic statistical inference, offering further insights regarding the experimental design and assisting the researchers in interpreting the outcomes. The methodology extracted a set of EV-related proteins whose differences between conditions could be partially explainable with statistics, suggesting the presence of other factors involved in the bioactive glasses' interactions with tissues. Outlier identification of extracellular vesicles' protein expression levels related to biomaterial preparation was instrumental in improving the interpretation of the experimental outcomes.
Keyphrases
- quantum dots
- mesenchymal stem cells
- machine learning
- single cell
- induced apoptosis
- gene expression
- endothelial cells
- high resolution
- bone marrow
- binding protein
- rna seq
- genome wide
- tissue engineering
- dna methylation
- oxidative stress
- adipose tissue
- cell therapy
- label free
- skeletal muscle
- sensitive detection
- data analysis