I develop tools to understand and interpret high-dimensional data, with a focus on single-cell omics.
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I developed TopOMetry, a comprehensive framework for high-dimensional data analysis. TopOMetry learns similarity graphs, estimates the dimensionality of the data, obtains latent dimensions using topological operators, clusters samples and layouts topological graphs into two-dimensional visualizations. TopOMetry learns and evaluates dozens of possible visualizations so that users do not have to stick with any pre-determined model (e.g. t-SNE or UMAP). It was designed to be compatible with a scikit-learn centered workflow, as most classes and functions can be pipelined. TopOMetry manuscript is freely available at BioRxiv.
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I'm currently a postdoc at Ana Domingos' lab at the University of Oxford. We are working on generating and analyzing single-cell datasets from a variety of tissues relevant to obesity and metabolism to build updated comprehensive neuroanatomical maps with cellular resolution. These will serve as a foundation for new studies investigating cellular-specific therapeutic targets for obesity and its comorbidities.
I'm always open to interesting conversations and enjoy getting involved in many projects. Feel free to reach me by email.
I tweet about medicine, neuroscience, computational biology, machine learning, and sometimes about my personal life.