Dynamic Sensor Selection for Biomarker Discovery
Joshua Pickard, Cooper Stansbury, Amit Surana, Lindsey Muir, Anthony, Bloch, and Indika Rajapakse

TL;DR
This paper introduces a novel dynamic sensor selection method based on observability theory to identify key biomarkers in biological systems, improving monitoring across diverse datasets and changing system dynamics.
Contribution
It develops a flexible observability-based framework for biomarker selection that adapts over time and applies to various biological data types and systems.
Findings
Effective identification of meaningful biomarkers in transcriptomics data
Demonstrated applicability to neural activity monitoring
Framework adaptable to different biological systems
Abstract
Advances in methods of biological data collection are driving the rapid growth of comprehensive datasets across clinical and research settings. These datasets provide the opportunity to monitor biological systems in greater depth and at finer time steps than was achievable in the past. Classically, biomarkers are used to represent and track key aspects of a biological system. Biomarkers retain utility even with the availability of large datasets, since monitoring and interpreting changes in a vast number of molecules remains impractical. However, given the large number of molecules in these datasets, a major challenge is identifying the best biomarkers for a particular setting Here, we apply principles of observability theory to establish a general methodology for biomarker selection. We demonstrate that observability measures effectively identify biologically meaningful sensors in a…
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