4.7 Article

Extreme Compressed Sensing of Poisson Rates From Multiple Measurements

Journal

IEEE TRANSACTIONS ON SIGNAL PROCESSING
Volume 70, Issue -, Pages 2388-2401

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSP.2022.3172028

Keywords

Microfluidics; Maximum likelihood estimation; Signal processing algorithms; Sensors; Matching pursuit algorithms; Biosensors; Noise measurement; Compressed sensing; sparse recovery; Poisson; maximum likelihood; Monte Carlo methods; microfluidics

Funding

  1. NLM Training Program in Biomedical Informatics and Data Science [T15LM007093]
  2. NSF [CBET 2017712, CCF-1911094, IIS-1838177, IIS-1730574]
  3. ONR [N00014-18-12571, N00014-20-1-2787, N0001420-1-2534, N00014-18-1-2047]
  4. AFOSR [FA955018-1-0478]
  5. Vannevar Bush Faculty Fellowship
  6. Rice University Institute of Biosciences and Bioengineering

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Compressed sensing is a signal processing technique that efficiently recovers sparse high-dimensional signals from low-dimensional measurements. This study explores the multiple measurement vector problem where signals are independently drawn from a sparse multivariate Poisson distribution. Through maximum likelihood estimation and a novel Sparse Poisson Recovery algorithm, the sparse parameter vector of Poisson rates is successfully recovered.
Compressed sensing (CS) is a signal processing technique that enables the efficient recovery of a sparse high-dimensional signal from low-dimensional measurements. In the multiple measurement vector (MMV) framework, a set of signals with the same support must be recovered from their corresponding measurements. Here, we present the first exploration of the MMV problem where signals are independently drawn from a sparse, multivariate Poisson distribution. We are primarily motivated by a suite of biosensing applications of microfluidics where analytes (such as whole cells or biomarkers) are captured in small volume partitions according to a Poisson distribution. We recover the sparse parameter vector of Poisson rates through maximum likelihood estimation with our novel Sparse Poisson Recovery (SPoRe) algorithm. SPoRe uses batch stochastic gradient ascent enabled by Monte Carlo approximations of otherwise intractable gradients. By uniquely leveraging the Poisson structure, SPoRe substantially outperforms a comprehensive set of existing and custom baseline CS algorithms. Notably, SPoRe can exhibit high performance even with one-dimensional measurements and high noise levels. This resource efficiency is not only unprecedented in the field of CS but is also particularly potent for applications in microfluidics in which the number of resolvable measurements per partition is often severely limited. We prove the identifiability property of the Poisson model under such lax conditions, analytically develop insights into system performance, and confirm these insights in simulated experiments. Our findings encourage a new approach to biosensing and are generalizable to other applications featuring spatial and temporal Poisson signals.

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