Tensor clustering with algebraic constraints gives interpretable groups of crosstalk mechanisms in breast cancer

Anna Seigal

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

We introduce a tensor-based clustering method to extract sparse, low-dimensional structure from high-dimensional, multi-indexed datasets. This framework is designed to enable detection of clusters of data in the presence of structural requirements which we encode as algebraic constraints in a linear program. Our clustering method is general and can be tailored to a variety of applications in science and industry. We illustrate our method on a collection of experiments measuring the response of genetically diverse breast cancer cell lines to an array of ligands. Each experiment consists of a cell line-ligand combination, and contains time-course measurements of the early signalling kinases MAPK and AKT at two different ligand dose levels. By imposing appropriate structural constraints and respecting the multi-indexed structure of the data, the analysis of clusters can be optimized for biological interpretation and therapeutic understanding. We then perform a systematic, large-scale exploration of mechanistic models of MAPK-AKT crosstalk for each cluster. This analysis allows us to quantify the heterogeneity of breast cancer cell subtypes, and leads to hypotheses about the signalling mechanisms that mediate the response of the cell lines to ligands.

Original languageAmerican English
Article number20180661
JournalJournal of the Royal Society Interface
Volume16
Issue number151
DOIs
StatePublished - 2019
Externally publishedYes

Keywords

  • Algebra
  • Data clustering
  • Model selection
  • Parameter inference
  • Signalling networks
  • Systems biology
  • Tensors

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