Correction of Pooling Matrix Mis-specifications in Compressed Sensing Based Group Testing
Shuvayan Banerjee, Radhendushka Srivastava, James Saunderson, Ajit Rajwade

TL;DR
This paper introduces an algorithm to correct pooling matrix errors in compressed sensing-based group testing, enabling accurate health status reconstruction despite model mismatches, with theoretical guarantees and numerical validation.
Contribution
It presents a novel method for correcting pooling matrix errors directly from test results, improving reliability in resource-constrained health testing scenarios.
Findings
Algorithm effectively corrects pooling matrix errors.
Theoretical guarantees ensure accurate signal reconstruction.
Numerical results validate the approach's robustness.
Abstract
Compressed sensing, which involves the reconstruction of sparse signals from an under-determined linear system, has been recently used to solve problems in group testing. In a public health context, group testing aims to determine the health status values of p subjects from n<<p pooled tests, where a pool is defined as a mixture of small, equal-volume portions of the samples of a subset of subjects. This approach saves on the number of tests administered in pandemics or other resource-constrained scenarios. In practical group testing in time-constrained situations, a technician can inadvertently make a small number of errors during pool preparation, which leads to errors in the pooling matrix, which we term `model mismatch errors' (MMEs). This poses difficulties while determining health status values of the participating subjects from the results on n<<p pooled tests. In this paper, we…
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Taxonomy
TopicsSARS-CoV-2 detection and testing · Advanced Biosensing Techniques and Applications · Biosensors and Analytical Detection
