The primary goal is to explore the usage of machine learning (ML) techniques to analyze large-scale MRI datasets for the extraction of quantitative imaging biomarkers that can predict disease outcomes and improve cardiovascular risk stratification. For example, by using whole-body MRI (wbMRI) to assess organ-specific biological aging, we aim to create standardized and explainable ML models that support early detection of cardiovascular risk. Developing models that perform comparably to state-of-the-art deep learning architectures while improving interpretability and clinical applicability remains a key objective of this analysis. In the next phase, this work will evolve from single-organ analysis to a comprehensive, system-wide understanding of biological aging using the entire 80,000-participant UK Biobank dataset. By developing individualized organ-age models, quantifying systemic aging differences, and standardizing segmentation pipelines, the project will establish a scalable framework for integrating imaging, clinical, and genomic data. These advancements will not only enable high-precision cardiovascular risk prediction but also contribute to a broader understanding of how aging manifests across organ systems. Ultimately, the insights gained will form the foundation for a publishable journal manuscript, support thesis preparation, and advance the long-term goal of translating AI-driven imaging biomarkers into real-world clinical decision-making.
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Job Type
Full-time
Career Level
Entry Level
Education Level
No Education Listed