View Item 
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        JavaScript is disabled for your browser. Some features of this site may not work without it.

        Browse

        All of UU Student Theses RepositoryBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

        Identification of protein properties associated with prostate cancer EVs using machine learning

        Thumbnail
        View/Open
        General research final report-Zhiwen Liu-1771523-publication.pdf (1.396Mb)
        Publication date
        2025
        Author
        Liu, Zhiwen
        Metadata
        Show full item record
        Summary
        In this study, we focus on proteins released by prostate cancer cells that form small particles called extracellular vesicles (EVs). EVs play a crucial role in how cancer spreads in the body by carrying a variety of biomolecules. Proteins are one of these molecules that hold promise as potential biomarkers to help us understand and utilize EVs. We used a computational technique called machine learning to predict the types of proteins come from prostate cancer cells by incorporating 95 features of the proteins. The results showed that the machine learning program could predict the proteins in these EVs with moderate accuracy. When we paid special attention to the most common proteins found in these EVs, the predictions became even better. This study also revealed that certain characteristics of these proteins, such as palmitoylation, played an important role in the predictions. Overall, this study demonstrates that using machine learning to understand the proteins in these cancer-related EVs can provide valuable insights for finding new ways to diagnose and treat cancer.
        URI
        https://studenttheses.uu.nl/handle/20.500.12932/50635
        Collections
        • Theses
        Utrecht university logo