Imaging + Machine Learning
Multimodal imaging (MRI/CT), radiomics, and machine learning to connect imaging signatures with tissue-level phenotypes and clinical outcomes.
Key methods:
Glossary: Radiomics · Interpretable ML · Multi-omics
Key outputs
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Dataset/tool: Selected code + tools live on my GitHub (
https://github.com/madavid128) and on the Projects page under Software & tools. -
Paper: Search the Publications page for imaging/ML/radiomics work:
- Figure: Representative images appear in Images.
What I work on
- Imaging-derived biomarkers and radiomics features
- Interpretable models that link imaging to biology
- Reproducible pipelines for translational deployment
Key questions
- What imaging signatures track tissue-level phenotypes and outcomes?
- How can models stay interpretable enough for translational decision-making?
- Which workflows generalize across datasets and sites?