English

Loss-function learning for digital tissue deconvolution

Quantitative Methods 2018-06-13 v1

Abstract

The gene expression profile of a tissue averages the expression profiles of all cells in this tissue. Digital tissue deconvolution (DTD) addresses the following inverse problem: Given the expression profile yy of a tissue, what is the cellular composition cc of that tissue? If XX is a matrix whose columns are reference profiles of individual cell types, the composition cc can be computed by minimizing L(yXc)\mathcal L(y-Xc) for a given loss function L\mathcal L. Current methods use predefined all-purpose loss functions. They successfully quantify the dominating cells of a tissue, while often falling short in detecting small cell populations. Here we learn the loss function L\mathcal L along with the composition cc. This allows us to adapt to application-specific requirements such as focusing on small cell populations or distinguishing phenotypically similar cell populations. Our method quantifies large cell fractions as accurately as existing methods and significantly improves the detection of small cell populations and the distinction of similar cell types.

Keywords

Cite

@article{arxiv.1801.08447,
  title  = {Loss-function learning for digital tissue deconvolution},
  author = {Franziska Görtler and Stefan Solbrig and Tilo Wettig and Peter J. Oefner and Rainer Spang and Michael Altenbuchinger},
  journal= {arXiv preprint arXiv:1801.08447},
  year   = {2018}
}

Comments

13 pages, 7 figures

R2 v1 2026-06-22T23:56:15.639Z