STARK denoises spatial transcriptomics images via adaptive regularization
Sharvaj Kubal, Naomi Graham, Matthieu Heitz, Andrew Warren, Michael P. Friedlander, Yaniv Plan, Geoffrey Schiebinger

TL;DR
STARK is a novel denoising method for spatial transcriptomics images that adaptively updates a graph regularizer to improve cell identification and gene expression interpolation, especially at ultra-low sequencing depths.
Contribution
The paper introduces STARK, a new adaptive regularization approach combining kernel ridge regression and graph updates for denoising spatial transcriptomics images.
Findings
Improves denoising performance over existing methods.
Effectively uncovers cell identities at low sequencing depths.
Converges to a stationary point with proven statistical guarantees.
Abstract
We present an approach to denoising spatial transcriptomics images that is particularly effective for uncovering cell identities in the regime of ultra-low sequencing depths, and also allows for interpolation of gene expression. The method -- Spatial Transcriptomics via Adaptive Regularization and Kernels (STARK) -- augments kernel ridge regression with an incrementally adaptive graph Laplacian regularizer. In each iteration, we (1) perform kernel ridge regression with a fixed graph to update the image, and (2) update the graph based on the new image. The kernel ridge regression step involves reducing the infinite dimensional problem on a space of images to finite dimensions via a modified representer theorem. Starting with a purely spatial graph, and updating it as we improve our image makes the graph more robust to noise in low sequencing depth regimes. We show that the aforementioned…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Cell Image Analysis Techniques · Gene expression and cancer classification
