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Devin Schoen

Institute: University of California San Francisco

Date: December 5, 2024

Title: Advancing predictive models for deep brain stimulation outcomes with multi-contrast MRI and hypergraph techniques

Abstract: Deep brain stimulation (DBS) is a well-established therapy for treating Parkinson’s disease motor symptoms, but patient outcomes remain highly variable. To better account for this variance, there is a critical need for improved prognostic tools that integrate clinical metrics and imaging data already collected in routine care. This talk highlights the use of MRI biomarkers, fractal dimension from T1-weighted imaging, combined with clinical data through hypergraph neural networks. These techniques enhance our ability to predict DBS outcomes and demonstrate adaptability to varying data availability. Future directions include incorporating additional MRI contrasts and refining hypergraph-based methods to better support clinical decision-making and optimize personalized treatment planning.

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The DMIC Lab has been awarded a Computational Oncology Grant to develop models to forecast the lung's functional response to cancer radiotherapy.

The DMIC Lab and 4D Medical are collaborating on a sponsored research project to further develop image processing methods for quantifying lung health.

Dynamic Lung Compliance Imaging Method published in PMB

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