Tailoring Graph Neural Network-based Flow-guided Localization to Individual Bloodstreams and Activities
Flow-guided localization using in-body nanodevices in the bloodstream is expected to be beneficial for early disease detection, continuous monitoring of biological conditions, and targeted treatment. The nanodevices face size and power constraints that produce erroneous raw data for localization pur...
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Zusammenfassung: | Flow-guided localization using in-body nanodevices in the bloodstream is
expected to be beneficial for early disease detection, continuous monitoring of
biological conditions, and targeted treatment. The nanodevices face size and
power constraints that produce erroneous raw data for localization purposes.
On-body anchors receive this data, and use it to derive the locations of
diagnostic events of interest. Different Machine Learning (ML) approaches have
been recently proposed for this task, yet they are currently restricted to a
reference bloodstream of a resting patient. As such, they are unable to deal
with the physical diversity of patients' bloodstreams and cannot provide
continuous monitoring due to changes in individual patient's activities. Toward
addressing these issues for the current State-of-the-Art (SotA) flow-guided
localization approach based on Graph Neural Networks (GNNs), we propose a
pipeline for GNN adaptation based on individual physiological indicators
including height, weight, and heart rate. Our results indicate that the
proposed adaptions are beneficial in reconciling the individual differences
between bloodstreams and activities. |
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DOI: | 10.48550/arxiv.2408.01239 |