Optimization-Based Decoding of Imaging Spatial Transcriptomics Data

Bryan, John P., Loïc Binan, Cai McCann, Yonina C. Eldar, Samouil L. Farhi, and Brian Cleary. 2022. “Optimization-Based Decoding of Imaging Spatial Transcriptomics Data”. BioRxiv.

Abstract

Motivation: Imaging Spatial Transcriptomics (iST) techniques characterize gene expression in cells in their native context by imaging barcoded probes for mRNA with single molecule resolution. However, the need to acquire many rounds of high-magnification imaging data limits the throughput and impact of existing methods. Results: We describe the Joint Sparse method for Imaging Transcriptomics (JSIT), an algorithm for decoding lower magnification IT data than that used in standard experimental workflows. JSIT incorporates codebook knowledge and sparsity assumptions into an optimization problem which is less reliant on well separated optical signals than current pipelines. Using experimental data obtained by performing Multiplexed Error-Robust Fluorescence in situ Hybridization (MERFISH) on tissue from mouse motor cortex, we demonstrate that JSIT enables improved throughput and recovery performance over standard decoding methods.Competing Interest StatementThe authors have declared no competing interest.
Last updated on 12/13/2022